Next Article in Journal
Revolutionizing the Textile and Clothing Industry: Pioneering Sustainability and Resilience in a Post-COVID Era
Previous Article in Journal
Decoupling Economic Growth from Carbon Emissions in the Yangtze River Economic Belt of China: From the Coordinated Regional Development Perspective
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Review

Drivers of Driving: A Review

by
Maryam Feyzollahi
1,
Pierre-Olivier Pineau
2 and
Nima Rafizadeh
1,*
1
Department of Resource Economics, University of Massachusetts Amherst, Amherst, MA 01003, USA
2
Department of Decision Sciences, HEC Montréal, Montréal, QB H3T 2A7, Canada
*
Author to whom correspondence should be addressed.
Sustainability 2024, 16(6), 2479; https://doi.org/10.3390/su16062479
Submission received: 15 February 2024 / Revised: 11 March 2024 / Accepted: 13 March 2024 / Published: 16 March 2024

Abstract

:
As car ownership and usage expand globally, understanding the factors that influence the propensity to drive is crucial for promoting sustainable transportation. This literature review examined the factors influencing driving decisions through a systematic search of databases, rigorous screening of over 1000 articles, and analysis of 142 studies. The findings reveal that attributes of the built environment (e.g., density, diversity, accessibility), economic factors (e.g., income, costs of car ownership, policies), and psychological aspects (e.g., attitudes, social norms, perceptions) have significant impacts on driving behaviors. By employing an integrative methodology involving targeted searches, keyword analysis, and detailed evaluation, this review offers insights into the multifactorial nature of driving decisions. The synthesis of studies across multiple domains emphasized the need for a holistic approach to understanding and addressing the factors influencing the propensity to drive, laying a foundation for informed transportation policy and practice.

1. Introduction

1.1. Global Trends in Car Ownership and Usage

The global number of registered cars has experienced a significant increase over recent decades, progressing from 246 million in 1970 to 1.446 billion in 2022 [1,2]. In 2020, approximately 78 million new vehicles were produced, adding to the existing global car fleet; this number rose to about 80 million in 2021 [3]. The surge in car ownership is not limited to developed countries alone. Consistent economic growth in developing countries and the Global South has led to a notable increase in car ownership and usage [1,4,5,6]. A study by Li et al. [7] showed that private car ownership in China grew significantly from 2000 to 2018, increasing from 6.25 million to 207 million, with an annual growth rate of 21.4%. Furthermore, the study projected that by 2030, private car ownership in China is expected to reach 475 million, marking a 76-fold increase from the levels in 2000. Dargay et al. [8] also predicted that by 2030, non-OECD nations will own 56% of the world’s cars, up from 24% in 2002.
The rise in car ownership is significant, as it enables various applications, such as long-distance travel, the transportation of large items, and new leisure activities dependent on personal vehicles [9,10,11]. Consequently, the increase in car ownership is likely accompanied by a rise in car usage [12,13]. Empirical studies on car usage patterns support this, revealing that in German, Swiss, and Austrian cities, around half of all trips are made by private cars, and in American cities, this figure is 86% [14]. In the United Kingdom, private cars account for two-thirds of all weekly trips, covering three-quarters of the distance traveled by an average citizen [15].

1.2. Negative Impacts of Excessive Car Use

The trend toward increased car usage partly stems from the user’s perception of cars as the most convenient and preferred transportation mode, which is associated with enhanced mobility, quality of life, and flexibility [16]. However, this excessive reliance on cars can lead to numerous societal externalities, as extensively discussed in the literature [17]. The primary externalities linked to car usage include climate change and air pollution, traffic congestion, noise pollution, road safety concerns, and health risks (it is noteworthy that other less-studied externalities, like emergency services, natural resource depletion, water pollution, and urbanization effects, also play a significant role in the overall costs of road transport externalities and are estimated to be around 10% [18]).
Climate change and air pollution: Wee [19] identified three main environmental problems stemming from the transport sector: (1) climate change caused by CO2 emissions; (2) acidification of the environment, including agricultural land; and (3) large-scale local air pollution as a result of emissions from the transport sector and chemical reactions in the atmosphere. Private cars, which are a significant source of greenhouse gas emissions, emit pollutants, such as carbon monoxide (CO), nitrogen oxide (NOx), and hydrocarbons (HCs) [20]. These emissions are central to the discussion on sustainable transportation, as Bickel et al. [21] estimated the annual environmental costs of road transportation in Europe to exceed EUR 86 billion, which encompasses climate change and air pollution.
Traffic congestion: Cravioto et al. [22] defined congestion as a waste of time resulting from the excessive use of limited road infrastructure. Urban road congestion in the USA causes substantial travel delays, where Schrank et al. [23] recorded 6.9 billion hours of delay in 2014, leading to an economic loss of USD 160 billion. This is exacerbated by the growth of private vehicles disproportionate to the available space and infrastructure, which is a common issue in metropolitan areas [18].
Noise pollution: The relationship between noise and health is well-established, where Suter [24] found that noise can lead to stress-related illnesses, high blood pressure, speech interference, hearing loss, sleep disruption, and reduced productivity. Road traffic is a major source of noise, accounting for 90% of the health impact caused by noise [25]. Evans et al. [26] estimated the average cost of urban traffic noise per 1000 passenger-kilometers for cars, buses, and trains, indicating the significant role of transportation in noise pollution, which, in turn, affects public health and quality of life.
Road safety: Road traffic accidents are a major global concern, with approximately 1.3 million fatalities annually and 20 to 50 million non-fatal injuries, with many resulting in disability [27]. The economic impact of these accidents varies by country income level, with a notable effect on national economies. Traffic-related trauma, as Paniker et al. [28] highlighted, is a leading cause of death and disability globally, emphasizing the importance of addressing safety in transportation policies and driving behavior analysis.
Health risk: Sugiyama et al. [29] conducted a systematic review on the relationship between car use and health risk; they found that prolonged periods in cars are associated with increased cardiovascular disease risk. Moreover, driving in congested areas or other stressful conditions can affect mental health issues, such as anxiety and depression.

1.3. Research Aims and Scope

The existing research on car dependence initially emerged from concerns about the depletion of fossil fuel resources and subsequent energy crises. The motivation behind this study, however, was rooted in the broader externalities of car dependence. While the current literature provides insights into the consequences of car usage, it often overlooks a comprehensive analysis of the underlying factors that encourage driving. This gap is significant, given that understanding these drivers is essential for mitigating the negative impacts of car usage and for promoting sustainable transportation options. Our study aimed to fill this gap by providing a detailed examination of the reasons behind individuals’ driving behaviors. We investigated factors that influence not only the decision to drive rather than use alternative modes of transportation but also those that impact the overall driving distance. Although the choice of mode and the distance driven are separate elements of driving behavior, they are interrelated and both contribute to the societal impacts and challenges mentioned previously. This study sought to enhance urban mobility and accessibility by offering a clearer insight into the complex motivations for driving.
We acknowledge certain inherent limitations. The scope, while broad, may not encompass every relevant study, partly due to the constraints in the search terms and databases used. Furthermore, the majority of the studies reviewed focused on urban settings in developed countries, which might limit the applicability of our findings in different socioeconomic and infrastructural contexts, such as rural areas or developing nations. The rapid evolution of transportation technologies, like electric vehicles and intelligent mobility solutions, may also date some of the referenced literature, necessitating continuous updates to this review. Additionally, our emphasis on quantitative research might overlook qualitative insights that could offer a deeper understanding of personal motivations and context-specific factors influencing driving behavior. These limitations notwithstanding, our review aimed to provide a comprehensive and current perspective on the factors influencing driving decisions.
The subsequent sections of the paper are structured as follows: Section 2 outlines the review methodology. Section 3 presents an analysis of the various factors influencing driving behavior. Finally, Section 4 provides a summary and conclusion of the paper.

2. Review Methodology

This section details the comprehensive and methodical approach employed for conducting the review, i.e., following the PRISMA guidelines [30] to ensure a transparent, systematic, and replicable process.

2.1. Identification of Relevant Sources

At the initiation of our research process, we embarked on an extensive search to identify the most suitable sources, aiming to ensure access to a broad range of high-quality scholarly materials relevant to our study. This critical phase involved a careful evaluation of various databases, each of which are recognized for their rich collection of scholarly literature in the domains of transportation studies and decision-making related to driving behaviors.
The databases searched included Google Scholar, which was selected for its extensive coverage across multiple academic disciplines; PubMed, which was chosen for its specific focus on health-related aspects; Scopus and Web of Science, which were utilized for their thorough indexing of peer-reviewed articles in transportation and environmental research; and JSTOR, IEEE Xplore, and the Transportation Research Board (TRB) database, which were included to capture historical perspectives, technological advancements, and policy-related studies on transportation.
To add depth to our research, we also searched a range of academic journals focused on transportation, including Transport Reviews; Transportation Research Parts A, B, C, and D; Transportation; Transportation Science; Journal of Transport and Land Use; Journal of Urban Planning and Development; Cities; Journal of Transport Geography; Transport Policy; and Accident Analysis and Prevention. These journals were selected for their contributions to urban planning, geographical aspects of transportation, policy discourse, and safety research.
Furthermore, we delved into specialized databases and digital repositories, like the National Transportation Library and the EU Transport Research and Innovation Portal (TRIP) to gain access to technical reports, government publications, and policy documents, incorporating practical insights and regional studies into our comprehensive review.

2.2. Development of Search Strategies

To comprehensively capture the breadth and depth of research on driving propensity and car dependency, our literature search strategy employed a multidimensional approach. We meticulously curated a set of keywords and subject headings, as detailed in Table 1, to reflect the intricate nuances of car ownership and usage. Boolean operators (AND, OR, NOT) were instrumental in effectively combining search terms to create a cohesive and robust search string.
In addition to database searches, we adopted the technique of reference list checking, examining the reference lists of key papers to uncover additional relevant studies that may have been overlooked in the initial search. Our strategy also extended to include grey literature, such as conference proceedings and technical reports, to ensure a holistic view of the topic.

2.3. Inclusion and Exclusion Criteria

To determine the eligibility of studies for inclusion in our review, we established the following inclusion criteria:
  • Peer-reviewed journal articles, conference papers, technical reports, or government publications.
  • Published in the English language.
  • Focused on factors influencing car ownership, car usage, or driving propensity.
  • Contained empirical data or rigorous conceptual analysis.
Studies were excluded if they did not focus on factors influencing driving behaviors, were not in English, did not contain original research (e.g., commentaries, editorials), or had severe methodological limitations.

2.4. Screening and Study Selection

The process of selecting studies, as depicted in the PRISMA flow diagram (Figure 1), commenced with initial searches in databases, which produced 1243 records. These records were screened by title and abstract, leading to the elimination of 640 records that failed to meet the inclusion criteria. The full texts of the remaining 603 articles were evaluated for eligibility, which resulted in the exclusion of 352 articles for various reasons, such as a lack of focus on factors affecting driving behaviors (n = 209), absence of original research (n = 98), or significant methodological flaws (n = 45).
Given the potential for redundancy in the literature, we prioritized including the most relevant and recent studies when multiple articles offered overlapping content. This approach allowed us to strike a balance between being thorough and succinct. The remaining 251 articles were then thoroughly evaluated based on their study design, sample size, methodological rigor, and the strength of the statistical analysis to ensure the highest quality and relevance for our review. Ultimately, 109 articles were excluded due to insufficient quality and relevance, while 142 articles were selected for the final qualitative synthesis. These articles collectively provided a comprehensive understanding of the drivers of driving behavior, representing a wide array of perspectives and methodologies.
This curated collection of literature formed the backbone of our review, offering valuable insights into the various factors influencing driving decisions. By adhering to the PRISMA guidelines and employing a rigorous, transparent methodology, we ensured that our review was systematic, comprehensive, and replicable.

3. Analysis of Driving Determinants

This section offers a detailed review of the various factors that influence driving decisions and their implications for transportation policy and practice. Through our extensive search, we identified three primary categories of driving determinants: built environment attributes, economic factors, and psychological factors. Each of these categories was examined in depth to assess how they impact an individual’s choice to drive (Appendix A provides a summary table of the reviewed articles, including key details, such as author(s), publication year, study location, temporality, objectives, methods, and main findings for quick reference).

3.1. Built Environment Attributes

The built environment, encompassing the physical characteristics and features of a place, such as the layout, design, and infrastructure of a city or region, has been extensively researched [31,32,33,34]. Factors such as the availability of public transportation, the density of housing and businesses, and the connectivity of streets and sidewalks are critical built environment attributes that significantly influence travel choices. These attributes of the built environment, commonly known as the “six Ds” [35,36,37,38], are density, diversity, design, destination accessibility, distance to transit, and demand management.
Density: This term refers to the concentration of individuals and buildings within a specific area. It not only directly influences driving propensity but also acts as an indicator of other land-use factors related to density, such as parking availability [39]. The effect of density on driving propensity and car dependency was thoroughly analyzed in previous studies using various density measures, including residential density [40,41,42] and job density [40,43]. These studies consistently show that higher densities are associated with lower driving propensity rates. The logic behind this is straightforward: as the mix of employment and residential areas increases in a location, so does its accessibility, leading to a reduced reliance on individual cars [40]. This relationship between density and driving propensity is supported by various empirical studies. For example, the 2001 Household Travel Survey for California [44] found that areas with densities below 1000 housing units per square mile experienced a 4.8% increase in vehicle kilometers traveled. A meta-analysis of 23 planning studies from 18 metropolitan areas in the USA [45] estimated that increasing the density could reduce vehicle kilometers traveled by 17% by 2050 compared with a “business as usual” scenario. Leck [46] also identified residential density as the most significant factor in mode choice within the built environment, followed by mixed land use and the street configuration. Ding and Cao [39] found that residential and employment densities were the most influential factors in the relationship between the built environment and car usage after evaluating several studies on this topic. Furthermore, research in Flanders, Belgium [47], demonstrated that higher densities promoted the use of alternative modes of transportation, such as walking, cycling, and public transit.
Diversity: This term describes the variety of different land-use forms. Extensive literature discusses the link between land-use diversity and driving propensity, with numerous studies showing a positive relationship between increased land-use diversity and reduced driving propensity [48,49]. This effect is attributed to the fact that land-use diversity enhances access to proximal destinations, thereby reducing the need for individual car usage [38]. Empirical evidence from a travel survey in Jinan, China [50], indicated that improvements in the balance between employment and housing were associated with a decrease in car ownership and usage. Beyond the direct relationship between land-use diversity and driving propensity, it is vital to consider mediating factors that may influence this relationship. For example, the availability and quality of public transportation, as well as the accessibility of non-motorized modes of transportation, such as walking and cycling, may affect the relationship between land-use diversity and driving propensity. The presence of these alternative modes of transportation can enable individuals to access nearby destinations without relying on cars, leading to a decrease in driving propensity [51].
Design: This term refers to the characteristics of the street network in a particular area, including factors like intersection design and average block size. Research examining the relationship between street design and driving propensity has produced mixed results. Some studies identified a relationship between pedestrian-friendly design elements, such as walkways and overhead street lighting, and lower driving propensity rates [49,50]. However, other studies have found no significant link between pedestrian-friendly design and driving propensity [52]. These inconsistent findings suggest that the impact of design on driving behavior may depend on contextual factors, such as land-use density and diversity. Additionally, the availability and reliability of alternative transportation modes, as well as individual attitudes and preferences toward transportation, can influence this relationship. Despite mixed evidence, it is widely recognized that design plays a crucial role in shaping transportation behavior. For example, street and intersection designs that prioritize the safety and convenience of active transportation modes, like walking and cycling, can promote their use and potentially decrease car ownership or usage. Similarly, designs that facilitate public transit use can make it a more attractive and convenient option, leading to reduced car ownership or usage [53].
Destination accessibility: This term describes the ease and availability of transportation options that enable individuals to reach desired locations efficiently and conveniently. It is a critical component of community livability and sustainability, potentially affecting mobility, economic opportunities, and social interactions. The likelihood of using alternative transportation modes, such as walking, biking, or public transit, instead of driving increases when destinations are easily accessible, potentially reducing driving propensity [54]. However, the influence of destination accessibility on driving propensity can vary based on the location and cultural context. For instance, studies in the USA [55,56] have shown that households closer to metropolitan centers typically have fewer cars. In contrast, research in Beijing and Chengdu, China [57], indicates the opposite trend, with households further from metropolitan centers having fewer cars. This variation could be attributed to differences in social structures and transportation systems between developed and developing countries, or it may be specific to developing countries based on historical growth trends and the extent to which affluent residents centralize or relocate to urban outskirts. A study in Jinan, China [50], for example, found that proximity to the city’s major and secondary centers had no significant effect on car dependency, underscoring the complex nature of destination accessibility and the need for a thorough understanding of its determinants.
Distance to transit: This term pertains to how close a location is to public transportation stations and services. Research has consistently shown that there is an inverse relationship between the proximity to transit infrastructure and car ownership and usage rates. For instance, Li and Zhao [38] discovered that the closeness to public transportation stations significantly affects car ownership and usage. Similarly, Potoglou and Kanaroglou [48] observed that residents living within 500 m of bus stops tended to have lower car ownership rates. Zegras [49] found that households in areas with limited bus access compared with those with better access to cars had more vehicles. Moreover, Chatman [58] indicated that improved bus services in neighborhoods could deter the acquisition and use of personal vehicles. Correspondingly, living near rail transit systems, such as subways or light rails, has been associated with reduced car ownership and usage. Studies by Kim and Kim [59] and Chatman [60] noted a negative impact of rail proximity on car ownership and usage. Gossen [61] revealed that only 19.9% of total trips by residents living within 0.25 miles of a metro station were made by car, in contrast with 45% by those living a mile away from transit stations. However, the relationship between transit proximity and driving propensity can be complex. For instance, Cao and Cao [62] found that in Minneapolis, light rail proximity did not affect car ownership when controlling for other factors, and Cervero and Murakami [63] reported a weak connection between metro station proximity and vehicle miles traveled. Furthermore, Combs and Rodríguez [64] analyzed Bogota’s TransMilenio BRT and found no significant impact on car ownership related to access to the TransMilenio route, except in transit and pedestrian-friendly areas. A study in the Indian cities of Hubli and Dharwad by Doddamani and Manoj [65] highlighted the nuanced nature of this relationship, showing significant effects of the road network density and proximity to key amenities, like hospitals and bus stops, on motorcycle ownership, even after considering travel attitudes.
Demand management: This concept involves strategies designed to control the demand for parking and other transportation services, including the regulation of parking capacity, and the implementation of parking fees and congestion pricing. The availability of parking has a significant impact on car ownership and usage. For example, Weinberger et al. [66] and Weinberger et al. [67] found that homes with ample off-street parking options were more likely to be occupied by households with higher rates of car ownership and usage compared with similar neighborhoods with restricted parking availability. This suggests that parking availability can influence both the decision to own a car and how frequently it is used. Guo [68,69] also noted a strong impact of home parking availability on car ownership, implying that home parking availability is a crucial factor in the decision to own a car, especially in urban areas where on-street parking is limited. The relationship between parking availability and driving propensity has been explored in both developed and developing countries. In a study conducted in Norway, Christiansen et al. [70] found that access to private or reserved home parking significantly increased the likelihood of car ownership. Conversely, Sobhani et al. [71] investigated the influence of residential parking space on car ownership in developing countries and suggested that the relationship might be less pronounced in these settings. This implies that within a city, variations in car ownership are more likely attributable to differences in parking demand and regulations, rather than merely the availability of residential parking.

3.2. Economic Factors

As discussed by Van Eenoo et al. [72], simply altering the built environment may not be enough to significantly reduce car dependency. Various studies [48,73,74,75] have demonstrated that a range of economic factors critically influence the decision to own and use a car. These factors include an individual’s income; education; occupation; and the costs associated with car ownership, such as fuel and maintenance expenses. Additionally, government policies, such as subsidies and tax incentives for alternative modes of transportation, play a significant role. Therefore, it is essential to consider the impact of economic factors on driving behavior. We categorized these factors into three main groups: socioeconomic characteristics, the costs of owning and maintaining a car, and government policies, all of which significantly affect an individual’s propensity to drive.

3.2.1. Socioeconomic Characteristics

Extensive research has established the significant influence of socioeconomic characteristics on travel behavior and driving propensity. Numerous studies have consistently shown that factors such as income, household structure, education, and age are closely associated with car ownership and travel habits [76,77,78,79,80,81,82,83,84,85]. These sociodemographic characteristics play a crucial role in shaping an individual’s travel behavior and reliance on a car.
Household income, in particular, is a key factor affecting driving propensity. Households with higher incomes, regardless of their location, generally own more cars and use them more frequently for transportation compared with those with middle or lower incomes [86,87,88]. This trend is attributed to the ability of higher-income households to afford multiple vehicles, as well as the associated costs of fuel, insurance, and maintenance. On the other hand, households with lower incomes may find it challenging to bear the expenses related to car ownership, and thus, may rely more on alternative transportation modes, like public transit, biking, or walking. Research from various developing countries, such as India [89], South Africa [90], China [57], Kenya [91], Iran [88], and Nigeria [92], supports the view that higher income is a significant determinant of household car ownership and usage. It is crucial to recognize that household income influences driving propensity not only through financial capability but also by affecting the availability of alternative transportation options. For example, households in low-income neighborhoods often have limited access to public transit, making car ownership essential for commuting and other transportation needs. Similarly, in rural areas where public transit access is scarce, households are more likely to depend on cars for transportation due to the absence of viable alternatives [93,94].
Additionally, the structure of a household significantly influences driving propensity due to its effect on the mobility needs of the household members. Research indicates that having more children often leads to the need for a car to meet increased mobility demands, such as transporting children to school and other activities [95,96]. This is especially relevant in single-parent households, where a car becomes essential for managing children’s schedules. Contrarily, other studies suggest that having more children may reduce the likelihood of car ownership due to the allocation of household resources to other expenses [97]. The number of adults in a household, along with their work and transportation habits, can also influence car use. Households with multiple adults who work from home or have flexible schedules might be less dependent on a car and more inclined to use alternative transportation, such as public transit, biking, or walking. Conversely, households with several children might require multiple vehicles to cater to the transportation needs of the entire family. Households without children, or with adult children who have moved out, are typically less reliant on cars and may prefer other modes of transport [98].
Expanding on the theme of household structure, other factors like the characteristics of the household head and the number of employed individuals within the household also play a role in driving propensity. Studies have shown that male-headed households tend to own and use cars more than female-headed households, possibly reflecting societal gender roles and expectations [99]. Furthermore, households with more working members are likely to own and use more vehicles to meet their commuting and transportation needs, as they generally have higher mobility requirements [43,48,87]. However, this trend may vary according to regional and cultural contexts. For instance, a study in Chennai, India, found that households with female employees and school-aged children were more likely to own cars [100], highlighting the influence of different societal norms. Conversely, households with fewer employed individuals or those working remotely might be less dependent on cars and more inclined to use alternative transportation modes, like public transit, biking, or walking.
Other socioeconomic factors also impact an individual’s reliance on a car for transportation. These factors include the level of education [84,101,102] and age [103,104]. People with higher education levels may have more awareness of the environmental and economic implications of car use and the availability of alternative transportation modes. For instance, more-educated individuals might be more knowledgeable about the effects of car emissions on air quality and climate change, hence more inclined to use alternatives, like public transit, biking, or carpooling. They are also more likely to live in urban areas with efficient public transportation systems, offering alternatives to car use [105]. Their occupations might allow for flexible work schedules or remote work options, reducing the need for car commuting [106]. On the other hand, older individuals may depend more on cars due to reduced mobility or challenges using alternative transportation modes [107]. Conversely, younger individuals are often more open to using alternative modes of transport, like public transit, biking, or carpooling, which is driven by their willingness to try different options and a desire to lessen their environmental impact. They are also more likely to live in urban areas with robust public transportation systems, reducing their need for cars [108].

3.2.2. Cost of Cars

Decisions about car ownership are often influenced by the cost of owning a car, encompassing both the initial purchase price and ongoing expenses, like fuel, maintenance, insurance, and taxes [109]. Research, however, has shown that car owners frequently underestimate the full costs of car ownership, which include both private costs (such as fuel and maintenance) and social costs (like environmental and health impacts) [110,111]. In an empirical study involving 6233 German car users, Andor et al. [110] found that while 88% of the participants claimed to understand their monthly car ownership and usage costs, about 50% substantially underestimated these costs, with an average underestimation of EUR 221 per month, or 52% of the actual cost. Based on these findings, Andor et al. [110] suggested that a more accurate understanding of the true cost of driving could lead to a significant reduction, approximately 37%, in car ownership rates.
Moreover, the costs associated with parking significantly affect car ownership rates [112]. Parking subsidies, such as employer-provided parking, can encourage individuals to drive alone since they are more likely to use their cars when parking is free or offered at a low cost [113,114,115,116]. For instance, in the USA, around 95% of commuters benefit from free parking [116]. While this arrangement is beneficial for employers, as it allows them to offer lower wages and save on payroll taxes while retaining employees, it also contributes to the expansion of urban areas by making car commuting more cost-effective [117].

3.2.3. Government Policies

From an economic perspective, government policies play a significant role in influencing car dependence by affecting the costs and benefits of various transportation options. These policies are instrumental in shaping the decision-making of individuals and households, thereby impacting the driving propensity within communities [118,119].
Policies that modify the costs associated with car ownership or usage, such as fuel taxes or incentives for electric or hybrid vehicles, can lead to substantial changes in the relative costs of different modes of transportation. Such measures often promote the use of more fuel-efficient vehicles or public transit, which can reduce the overall dependence on cars [120]. In addition, investment in public transit systems has significant economic implications for car reliance. Adequately funded and reliable public transit can present a more affordable transportation alternative, especially for individuals in lower-income brackets who may struggle with the costs related to car ownership [121]. Land-use policies are also crucial; those that encourage compact, pedestrian-friendly urban designs can diminish the need for cars, leading to reductions in transportation expenses [122]. Conversely, policies that promote urban sprawl tend to increase the reliance on personal vehicles, resulting in higher long-term transportation costs [123,124]. Moreover, regulations that target vehicle emissions can increase the costs of manufacturing and owning traditional gasoline-powered vehicles, encouraging a shift toward electric or hybrid vehicles, which are generally more economical to operate [125].
Additionally, government responses to recent global events have had a profound impact on driving behaviors. Specifically, the COVID-19 pandemic introduced unique challenges and policy measures that significantly altered transportation dynamics. A study that focused on the pandemic’s impact in European urban areas by Vega-Gonzalo et al. [126] noted an increased dependence on cars. This increase was particularly evident among demographics that traditionally relied less on private vehicles. The surge in car usage emerged as a direct response to government-imposed restrictions, changes in public transportation services, and heightened public concerns about health and safety. These changes took place against a backdrop of evolving socioeconomic conditions, highlighting the dynamic relationship between government policies and the factors that influence car usage and ownership.

3.3. Psychological Factors

In the existing literature on driving decisions, the focus has predominantly been on physical and economic factors, with less attention given to the roles of attitudes, perceptions, and preferences. As Handy [127] highlighted, the exploration of attitudinal theories in understanding travel behavior has not been as extensive as the examination of economic factors. Nonetheless, Anable [128] emphasized the importance of including a wider range of explanatory variables to comprehensively understand what influences an individual’s choice of transportation mode. This section begins with an overview of the primary theories in this area, followed by a detailed analysis of empirical studies that explore the psychological determinants shaping individual behaviors in the realm of transportation.

3.3.1. The Prevalent Theories

Understanding choice behavior, particularly in the context of how individuals select their mode of transportation, is crucial for analyzing driving propensity. Travel behavior analysis often employs behavioral theories derived from microeconomics, with rational choice theory being a notable approach. This theory asserts that individuals are capable of evaluating their options thoroughly and making optimal decisions based on comprehensive information [129,130]. As outlined by Lucas and Jones [131], rational choice theory fundamentally suggests that decision-making is driven by cost–benefit analyses of available alternatives, focusing on self-interest and informed deliberation. It presumes a stable context with fixed preferences, allowing individuals to process all relevant information to make the best decisions.
Rational choice theory’s widespread use in travel behavior research is largely due to its ability to be mathematically operationalized through discrete choice theory [132]. This framework supports policies that provide individuals with sufficient information to make well-informed transportation choices. Lucas and Jones [131] proposed that driving can be seen as a rational consumer choice, where vehicles contribute to well-being by facilitating access to various goods and services. However, the application of rational choice theory in analyzing driving behaviors has been criticized for overlooking human preference inconsistencies and not fully considering the utility concept, the maximization of decision-makers’ utility, or the processes leading to observed choices [133]. Therefore, to thoroughly understand driving behaviors, it is essential to consider not only sociodemographic and physical factors but also attitudes and behaviors [134]. Wu et al. [86] advocated for a broader definition of rationality that includes intangible factors related to car ownership and usage.
The emergence of alternative theories, mainly from social psychology—including self-perception theory [135], social learning theory [136], the theory of planned behavior [137], social cognitive theory [138], and social exchange theory [139]—has renewed interest in the complexities of travel behavior, including driving. A significant development in this area is the concept of automotive psychosocial satisfaction, addressing both functional and psychosocial needs, such as belongingness, self-esteem, and autonomy [131]. Jackson [132] noted two key insights from this research: first, cars are valued not only for their practical utility but also for their symbolic significance in people’s lives, and second, individuals often remain entrenched in their consumption patterns due to various factors, including habits, routines, social norms, expectations, cultural values, access inequalities, and limited choices.

3.3.2. Attitudes toward Car Ownership/Usage

Considerable research has been conducted on attitudes toward private car ownership and usage [140,141]. These studies, which utilized a variety of methodologies, focused on different demographic segments, including students [142,143,144,145], younger individuals [146,147], and various generational cohorts [104]. Additionally, some research compared attitudes toward car ownership and usage across different countries or cities [148,149], and others examined these attitudes in relation to alternative modes of transportation [108,148,150].
In the field of automotive psychology, Wu et al. [86] introduced the concept of “symbolic utility” to represent the psychological satisfaction derived from car ownership and usage. This influential study underscored the impact of attitudinal factors on car ownership and usage preferences, indicating that integrating symbolic utility into models could enhance their predictive accuracy. Building on this concept, Wright and Egan [151] applied Maslow’s hierarchy of needs [152] to argue that cars fulfill various psychological needs, such as shelter, security, warmth, and self-expression. Sheller [153] further expanded this discussion, suggesting that “automotive emotions” often surpass rational considerations for public welfare, moving beyond a simple economic cost–benefit analysis. More recently, Li et al. [154] investigated the effects of car ownership and usage on travel and life satisfaction. They found that owning multiple vehicles is associated with increased life satisfaction, which is a trend that is not observed in single-car ownership. The study also revealed that neither acquiring a more expensive vehicle nor increasing usage rates enhanced life satisfaction. Conversely, infrequent car usage was associated with higher levels of both travel and life satisfaction. Additionally, the study identified a positive relationship between attitudes toward the instrumental and affective roles of cars and the levels of satisfaction in travel and life among car owners.
Material possession theory [155] formed the basis of the research by Steg [108,140,156] on car ownership and usage. In their study, Steg et al. [156] aimed to identify the primary motivational dimensions that make car usage appealing and discovered that the instrumental and symbolic–affective functions of cars significantly contribute to their attractiveness. Building upon this, Steg [140] sought to empirically categorize various car usage motives and evaluate the extent to which Dittmar’s model is supported by empirical evidence. Their survey, which involved participants from the Dutch cities of Groningen and Rotterdam, showed that the respondents distinguished between the instrumental, symbolic, and affective motives fulfilled by cars. The study further found that even functional commuting is more influenced by symbolic and affective motives than instrumental ones. It also revealed a tendency among male participants, younger individuals, and those in lower-income groups to value the symbolic and affective functions of cars more highly.
In addition to the instrumental, affective, and symbolic aspects already recognized as crucial in understanding car ownership and usage, further motivators have been identified in various studies. For instance, Steg [140] highlighted “independence” as a separate motivator in her qualitative analysis. Likewise, Gatersleben [157] identified a relationship between feelings of independence and positive experiences associated with car usage. Contrasting with traditional car ownership, innovative models, like mobility as a service (MaaS), introduce new perspectives. Some research also integrated different psychological motivators into unified concepts. For example, Bergstad et al. [158] conducted a comprehensive analysis of statements related to car usage motivators and identified two interrelated motivational categories: “affective–symbolic” and “instrumental–independence”.
Additionally, the relationship between car ownership or usage and sociodemographic factors, such as age, income, and education level, was examined, with these factors being influenced by psychological motivators, including affective, symbolic, instrumental, and independence motivators. The study by Bergstad et al. [158] suggested that these psychological motivators could partially account for variations in car usage across different sociodemographic groups. For example, the affective–symbolic motivator was found to play a role in mediating the relationship between the frequency of car trips and gender, while the instrumental–independence motivator influenced the relationship between weekly car use and the overall extent of driving. These findings indicate that psychological factors significantly influence car usage preferences, though the direct impact of sociodemographic variables on car usage remains notable.
Van and Fujii [148] investigated attitudes toward cars and public transport in six Asian countries—Japan, Thailand, Vietnam, Indonesia, China, and the Philippines—with each one characterized by distinct cultural, developmental, and social norms. This research concentrated on three factors—symbolic, affective, and instrumental—which were previously identified as key in shaping attitudes toward cars and public transport. The study also introduced a new factor called “social orderliness”, which includes considerations of environmental friendliness, safety, quietness, and altruism associated with cars or public transport. The results show diverse perceptions of the symbolic and affective aspects of cars and public transport in these countries. For instance, individuals in lower-income societies tend to view cars as a more significant status symbol. Notably, the concept of social orderliness was particularly salient in the responses from Japan, indicating a possible perception of cars as less valuable due to societal concerns, like air pollution and congestion.
Complementing the existing research on attitudes toward car ownership and usage, several studies have underscored the significant role of social influence in decision-making processes. As described by Cialdini et al. [159] in the theory of normative action, car ownership decisions are influenced by two main types of social norms: descriptive norms, which reflect the prevalent behaviors among others, and injunctive norms, based on perceived expectations from others. The impact of social peers and neighbors on individual decisions regarding car ownership is further evidenced by the studies of Weinberger and Goetzke [160] and Weinberger and Goetzke [161] in the USA.
In contemporary research, it is increasingly recognized that cultural and psychological values associated with cars frequently overshadow the practical advantages of alternative modes of transportation, such as public transit [108,150,162,163]. For example, a survey by Linda [108] among Dutch respondents shows a strong preference for cars over public transportation, influenced by both their instrumental utility and symbolic importance. In a similar vein, research by Cullinane and Cullinane [164] in Hong Kong highlighted that practical aspects, such as convenience and comfort, are primary motivators for car ownership and usage, often taking precedence over considerations for public transport. These findings emphasize the predominance of car-centric values in shaping transportation preferences.
Beyond these discussed factors, several less-explored psychological elements play a crucial role in shaping driving decisions. For example, cars significantly contribute to the organization of daily life, providing solutions for individuals balancing demands from work, family, or childcare [165,166,167]. Stress and anxiety can also amplify reliance on personal transport, offering a sense of familiarity and control [168]. In certain situations, psychological conditions, such as anxiety disorders or phobias, may limit the feasibility of alternative modes of transportation, leading to increased dependency on cars [169]. Car usage often becomes habitual, with individuals preferring to drive for convenience, ease, or due to a lack of familiarity with other options [170]. Additionally, concerns about using public transit or cycling can further reinforce this dependency [171,172]. On the other hand, negative driving experiences could heighten future apprehensions about driving, potentially reducing reliance on cars [173].

4. Summary and Conclusions

Over recent decades, the global landscape of transportation has significantly evolved, marked by a substantial increase in car ownership and usage. This trend, which is predominantly attributed to the perceived convenience and preference for cars, is linked to their role in enhancing mobility, quality of life, and flexibility. However, this growing reliance on personal vehicles brings with it a spectrum of societal challenges, including environmental concerns, like climate change and air pollution; urban issues, such as traffic congestion and noise pollution; and health risks encompassing road safety and lifestyle-related diseases.
The imperative to understand the driving forces behind this shift toward increased car usage lies at the heart of both mitigating these negative externalities and fostering sustainable transportation systems. This comprehensive study delved into the diverse factors influencing individuals’ decisions to drive, categorizing them into three primary domains: built environment attributes, economic factors, and psychological influences. By conducting a thorough review of the literature, this research unravelled the intricate web of elements that shape driving behaviors, offering a nuanced understanding that is crucial for shaping transportation policies aimed at enhancing urban mobility and accessibility.
The built environment attributes, which are crucial in shaping driving propensity, encompass six key categories: density, diversity, design, destination accessibility, distance to transit, and demand management. Despite some discrepancies in the research findings, the consensus indicates that higher levels of these attributes generally correspond with reduced car ownership and usage. Specifically, denser urban environments, diverse land use, well-designed infrastructure, accessible destinations, and proximity to transit are associated with lower reliance on personal vehicles. Conversely, demand management strategies, particularly those addressing parking availability and cost, often lead to increased car ownership and usage, highlighting the significant influence of these built environment factors on transportation choices.
Regarding economic factors, three primary categories emerge as influential in driving propensity: socioeconomic characteristics, car ownership costs, and governmental policies. Among these, household income stands out as a pivotal determinant, with higher-income households typically exhibiting greater levels of car ownership and usage. Household composition also plays a critical role, with the presence of children, male-headed households, and the number of employed individuals in a household often linked to increased car ownership. Education level, which is inversely related to driving propensity, and age, with older individuals more inclined toward car usage, further influence the economic factors shaping driving behavior. Direct costs of car ownership, including acquisition and maintenance expenses, and indirect costs, like parking fees, significantly impact the decision to own and use a car. Government policies, such as fuel taxation, incentives for eco-friendly vehicles, public transit funding, and urban planning regulations, profoundly influence the degree of car dependence, demonstrating the interplay between economic considerations and transportation choices.
Psychological factors, although less explored compared with built environment attributes and economic factors, significantly influence car ownership and usage. These include life satisfaction; instrumental, affective, and symbolic values associated with vehicles; the sense of independence; social orderliness; and the impact of daily life structure, stress, and anxiety related to public transportation usage. Additionally, the pursuit of convenience and ease through car usage is a notable psychological driver. In contrast, negative driving experiences leading to increased fear of driving can reduce driving propensity. These psychological dimensions, which encompass both positive and negative aspects, underline the complex and multifaceted nature of factors influencing driving behavior, extending beyond mere physical and economic determinants.
In Figure 2, the hierarchical tree diagram graphically illustrates the findings from our literature review. Factors positively associated with driving propensity are marked in red, while those negatively associated are in blue (this color coding is indicative rather than absolute, as factors’ impacts can vary based on cultural and locational contexts). This review highlights the multifaceted nature of driving propensity, emphasizing the need for a holistic approach to understand and address its drivers. A comprehensive understanding of these factors’ interplay is crucial for developing effective interventions to mitigate car use’s negative externalities, promote sustainable transportation, and enhance urban mobility and accessibility.
This study provides a structured framework for policymakers, outlining various factors influencing driving propensity and illustrating potential trade-offs. To this end, it emphasizes the necessity of balancing sustainable transportation advancement with community and individual quality of life enhancements. A multifaceted approach is essential to mitigate excessive driving’s harmful effects. This approach could encompass designing compact, well-connected communities with efficient public transportation systems, promoting electric and hybrid vehicles through regulations and incentives, and investing in public transit infrastructure. Additionally, increasing public awareness of driving’s negative impacts and promoting alternative transportation methods, such as carpooling, cycling, and public transit, can reduce personal vehicle dependency. Addressing psychological drivers of behavior is crucial, necessitating an examination of psychosocial constructs and negative driving experiences. Enhancing life satisfaction, alleviating stress and anxiety linked to public transportation, and improving alternative transportation modes’ accessibility and convenience are vital.
While this review aimed to provide a comprehensive analysis, its scope was inevitably limited by potential omissions due to search term and database constraints, which possibly affected the included perspectives’ diversity. The primary focus on urban settings in developed countries might limit the applicability to rural or developing areas with distinct socioeconomic and infrastructural dynamics. Moreover, rapid advancements in transportation technologies, like electric vehicles, may quickly date some findings. The review’s quantitative emphasis might overlook qualitative insights, revealing deeper individual motivations and context-specific driving behaviors. Future research should bridge these gaps by investigating diverse geographical contexts and assessing emerging technologies’ impacts on driving patterns. Delving into psychological and sociocultural dimensions of driving, examining transportation’s intersection with critical issues like climate change and public health, and conducting longitudinal studies are imperative for understanding driving behaviors’ evolution in response to policy changes and urban development.

Author Contributions

Conceptualization, P.-O.P. and N.R.; methodology, M.F.; formal analysis, M.F. and N.R.; investigation, M.F.; resources, M.F.; writing–original draft preparation, M.F. and N.R.; writing–review and editing, M.F., P.-O.P. and N.R.; supervision, P.-O.P.; project administration, P.-O.P.; funding acquisition, P.-O.P. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by the Chair in Energy Sector Management at HEC Montréal, Canada.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflicts of interest.

Appendix A. Description of Reviewed Articles

Table A1 provides a concise overview of the reviewed articles. It summarizes key information about each study, including the authors, publication year, study location, time period covered, research objectives, methodologies employed, and the main findings.
Table A1. Key details of the reviewed articles.
Table A1. Key details of the reviewed articles.
PaperLocationTemporalityObjectivesMethodsMain Findings
Nielsen et al. [31]Denmark2009–2011Examine cycling’s environmental correlatesDanish travel survey, urban data analysis, and statistical modelingDensity, connectivity, and access to services boost cycling.
Sun et al. [32]Shanghai, China2009Investigate built environment’s impact on commutingCopula-based model and survey in parksResidential characteristics impact commuting more than job sites; more jobs in residential areas increase driving likelihood.
Yin and Sun [33]China2012Investigate built environment’s impact on car ownershipMultilevel logistic regression on CLDS dataCity and neighborhood environment influences car ownership; higher density and metro availability reduce it, while land-use diversity might increase it.
Yang et al. [34]China2010Examine built environment’s influence on commuting mode choice among car ownersHousehold travel survey and multilevel discrete choice modelBuilt environment factors significantly influence commuting choices, with notable spatial variation.
Cervero and Kockelman [35]San Francisco, USA1990–1991Study impact of density, diversity, and design on travel demandFactor analysis and regression modeling of travel diary dataCompact, mixed-use, pedestrian-friendly neighborhoods reduce driving and encourage walking, cycling, and transit use, though the impacts are modest.
Ewing and Cervero [36]USA1990Synthesize findings on how density, diversity, and design influence travelLiterature review, meta-analysis, and elasticity calculationsDensity, land-use diversity, and pedestrian-oriented design reduce car trips and distances; impacts are modest but cumulatively significant.
Ewing and Cervero [37]Mainly USAUp to 2009Meta-analysis of built environment effects on travelLiterature review, meta-analysis, and weighted average elasticitiesDestination accessibility most strongly related to VMT, walking, and transit use. Density has weakest association with travel behavior.
Li and Zhao [38]Beijing, China2015Explore car ownership and use near metro stationsTravel survey, GIS analysis, and regression modelingLand-use mix, mall proximity, and attitudes impact car ownership and VKT; metro proximity has limited effect.
Ding and Cao [39]Washington, USA2007–2008Examine how built environment at residential and work locations affects car ownershipBayesian cross-classified multilevel ordered probit modelDensity, diversity, design, and transit access around residences and distance to CBD affect car ownership. Employment density and bus stop density at workplaces also influence car ownership.
Chen et al. [40]New York, USA1997–1998Assess density’s role in mode choice for home-based work tours, controlling for confounding factorsHousehold travel survey and simultaneous equations modeling of car ownership and propensity for auto useEmployment density at work influences auto use more than residential density, after controlling for travel cost, job access, and transit access.
Shen et al. [41]Shanghai, China2010–2011Examine car ownership and commuting mode choice in rail-transit-supported suburbsHousehold travel surveys in 4 neighborhoods, binary logit model of car ownership, and nested logit model of commute mode choiceRail proximity relates to higher rail use for commuting but not car ownership; income, job type, and attitudes also influence car ownership and rail commuting.
Ding et al. [42]Baltimore, USA2001Investigate the influence of built environment on travel mode choice considering the mediating effects of car ownership and travel distanceIntegrated structural equation modeling (SEM) and discrete choice modeling (DCM) using 2001 National Household Travel Survey (NHTS) dataHigher density, connectivity, and accessibility reduce driving, while distance to transit increases it. Car ownership and travel distance mediate the effects of the built environment on mode choice.
Bhat and Guo [43]San Francisco, USA2000Model residential sorting effects in assessing built environment impacts on car ownershipJoint model of residential location choice and car ownership using a mixed multinomial logit-ordered response structureBuilt environment attributes affect residential choice and car ownership; self-selection effects are important to consider.
Brownstone and Golob [44]California, USA2001Measure the relationship between residential density, household vehicle use and fuel consumptionJoint model of residential density, vehicle use, and fuel consumption, accounting for self-selection and missing dataA 40% lower density implies 4.8% more annual mileage and 5.5% more fuel consumption per household.
Bartholomew and Ewing [45]USAVariousEvaluate effectiveness of scenario planning for compact growthMeta-analysis of 85 scenarios from 23 studies in 18 metro areasCompact growth scenarios reduce VMT in 2050 by 17% vs. trend scenarios on average.
Leck [46]USA1990–2005Assess the impact of density, land-use mix, and street configuration on travel while resolving contradictory findingsMeta-analysis of 17 empirical studiesDensity and land-use mix have significant effects on travel behavior; street configuration does not.
Boussauw et al. [47]Flanders, Belgium2010Examine compact city impacts on commuting distanceAnalysis of spatial proximity measures and reported commuting distancesHigh density, diversity, and job access reduce resident commutes; jobs–housing balance near 1 reduces commutes overall.
Potoglou and Kanaroglou [48]Hamilton, Canada2005Explore the influence of urban form and sociodemographics on household car ownership levelsMultinomial logit model of household survey data with GIS-derived urban form measuresHigher density, land-use mix, and transit access are associated with lower car ownership, after controlling for sociodemographics.
Zegras [49]Santiago de Chile, ChileN/AAnalyze built environment’s influence on motor vehicle ownership and useEconometric models using 2001 household survey and land-use dataIncome majorly influences vehicle ownership and use; built environment characteristics moderately impact vehicle kilometers traveled and ownership likelihood.
Jiang et al. [50]Jinan, China2014Examine land-use and street effects on car ownership and useHousehold travel survey, GIS data, factor analysis, and two-step modelingJob–housing balance, land-use mix, neighborhood permeability, parking, and BRT access impact car ownership and use.
Frank et al. [51]USAN/ADevelop a walkability index and test its validityGIS analysis, census data, and travel surveysThe walkability index, which is composed of land-use mix, residential density, retail floor area ratio, and street connectivity, is related to walking and vehicle miles traveled.
Soltani [52]Adelaide, Australia1999Explore built environment impacts on vehicle ownershipLogistic regression modeling using household travel survey and land-use dataHigher density and land-use mix are associated with lower levels of vehicle ownership.
Vuchic [53]N/AN/AClassify and describe urban transit modesExplanatory reviewTransit modes are defined by ROW, technology, and operations. Street, semi-rapid, and rapid transit have increasing performance, investment costs, and ability to influence urban form.
Yin et al. [54]Changchun, China2012Investigate built environment and parking availability impacts on car ownership and useHousehold travel survey, GIS data, and binary logistic regressionBuilt environment factors, like land-use mix, transit access, and parking supply, significantly influence car ownership and commuting mode, with parking availability having key effects.
Schimek [55]USA1990Investigate how residential density affects household vehicle ownership and use1990 Nationwide Personal Transportation Survey data analysis and multivariate regression modelingA 10% density increase is associated with only a 0.7% reduction in household vehicle travel, much less than the effect of income. Even large urban density increases would have little impact on total vehicle travel.
Bento et al. [56]USA1990Examine how urban spatial structure affects household travel demandNPTS household survey data analysis and vehicle ownership and use modelingPopulation centrality, jobs–housing balance, rail transit supply, and other urban form factors have significant but modest individual effects on driving. Moving sample households from an Atlanta-like city to a Boston-like city reduces the annual VMT by 25%.
Li et al. [57]Beijing, China2005–2006Explore urban form’s influence on car ownership across Chinese megacitiesHousehold surveys, OLS regression, and binary logit modelsUrban affluence, scale, and road supply positively affect car ownership; high population density suppresses it.
Chatman [58]New Jersey, USA2013Assess factors beyond rail access affecting auto use near TODsSurvey of households near rail stations and analysis of parkingHousing type, tenure, density, and bus service and parking availability impact auto use more than rail access.
Kim and Kim [59]USA2003Predict effects of transit access on auto ownership and useOrdered logit model for auto ownership and regression for VMTLicensed drivers are the main factor in auto ownership; transit access reduces VMT more for multi-vehicle households.
Chatman [60]California, USA2003–2004Examine how different aspects of development density influence household travelOriginal travel survey data analysis and count and Tobit regression modelingNetwork load density slows auto speeds and reduces auto trips and VMT. The combination of high network load density, high activity density, and high built form density encourages walking and biking.
Cao and Cao [62]Minneapolis, USA2011Investigate LRT, neighborhood design, and self-selection’s impact on auto ownershipSurvey, statistical control, and quasi-longitudinal designNeighborhood design significantly affects auto ownership; LRT impact is indirect through neighborhood characteristics and resident self-selection.
Cervero and Murakami [63]USA2003Examine built environments’ impact on vehicle miles traveled (VMT)Structural equation modeling using data from 370 urbanized areasHigh population densities are associated with reduced VMT; however, dense road infrastructure and retail access moderate these effects.
Combs and Rodríguez [64]Bogotá, Colombia1995–2005Analyze BRT’s impact on vehicle ownershipQuasi-longitudinal analysis using difference-in-differencesBRT access reduces car ownership for wealthy households; effect depends on built environment for poor households.
Doddamani and Manoj [65]Hubli-Dharwad, India2018–2019Investigate built environment influences on car and motorcycle ownershipCross-sectional analysis using ordered logistic regressionBuilt environment effects vary by vehicle type and city; subjective measures, like cleanliness and women-/child-friendliness, impact ownership.
Weinberger et al. [66]New York, USA2012Examine impacts of residential parking requirements on auto ownership and useAnalysis of parking requirements and vehicle ownership/use dataParking requirements encourage car ownership and use, undermining sustainability and congestion reduction goals.
Weinberger et al. [67]New York, USA2009Examine the impact of residential off-street parking on car ownership, vehicle miles traveled, and carbon emissionsAnalysis of demographics, highway and transit access, and off-street parking in two NYC neighborhoods; plausible development scenario testingOff-street residential parking significantly influences commuting behavior, with accessory parking linked to higher auto commutes than commercial centralized parking, challenging the city’s sustainable future vision.
Guo [68]New York, USA1998–2010Examine residential parking’s effect on household car ownershipNested logit modeling of car ownership with parking supply variables from online imagesParking supply strongly influences car ownership, even outperforming income and demographics; garage, driveway, and street parking have differential effects.
Guo [69]New York, USA2012Examine impact of street parking on car ownership for households with off-street parkingMeasure on-/off-street parking via Google Street View/Bing Maps and multivariate modelingFree street parking increases car ownership by 9% for households with off-street parking.
Christiansen et al. [70]Norway2013–2014Analyze impacts of home parking on car ownership and useNorwegian travel survey with in-depth parking questions and statistical analysisAccess to private parking triples car ownership odds. Longer home–parking distance reduces the car share.
Sobhani et al. [71]Bangladesh2017Analyze impacts of socioeconomic factors on parking demand in developing citiesField surveys of parking in Dhaka and multiple linear regression modelingFloor space, household rent, population density, literacy rate, etc., significantly affect parking demand for various land uses.
Van Eenoo et al. [72]Belgium2019–2020Test if urban residents are multimodal and feel car dependentCluster analysis of survey on car use, bike use, VKT, and perceived car dependence in FlandersFour multimodal clusters found. Car ownership does not always mean perceived dependence for those who cycle. High VKT and car use do not always mean feeling car dependent.
Stead [73]Britain1978–1993Analyze relationships between land use, socioeconomic factors, and travel patternsRegression analysis of national and local travel survey dataSocioeconomics explain more travel variation than land use. Car ownership, employment, and density are key factors. Land use still plays a role.
Zhou et al. [74]Nanjing, China2015Cluster human activity patterns using a Markov-chain-based mixture modelNanjing household travel survey, Markov-chain-based mixture model, and logistic regressionIdentified three main human activity patterns: working and education oriented, recreation and shopping oriented, and schooling drop-off/pick-up oriented, which are correlating with specific sociodemographics.
Shao et al. [75]Zhongshan, China2019Analyze nonlinear effects of land use and motorcycles/E-bikes on car ownershipGradient boosting decision trees model with travel survey dataIncome dominates car ownership; built environment has threshold effects; motorcycles/E-bikes moderate effects of income and distance on car ownership.
Hanson and Hanson [76]Uppsala, Sweden1971 (5 weeks)Analyze relationships between sociodemographics and multidimensional travel patternsPrincipal components analysis and regression on individual travel diariesBoth socioeconomic status and household roles significantly explain travel dimensions, but differently for each. Role variables are particularly important.
Pas [77]N/A1983Examine influence of sociodemographics on daily travel behaviorClassification of travel patterns and parametric models of contingency tablesRole, life-cycle, and lifestyle attributes significantly influence daily travel; segments have different likelihoods of travel patterns.
Bhat and Koppelman [78]ConceptualN/ADevelop a conceptual framework of individual activity program generationSynthesis of theories from multiple disciplinesFramework with four interrelated modules: household needs, auto ownership, activity allocation, and individual activity programming. Subsistence work hours and leisure are endogenous.
Sarmiento [79]N/A1987Discuss household circumstances and gender differences in travel constraintsLiterature review and synthesisTravel demand management overlooks household composition, gender roles, and complex constraints, limiting behavior change effectiveness.
McGuckin and Murakami [80]USA1995Compare trip-chaining behavior between men and womenDescriptive analysis of 1995 Nationwide Personal Transportation Survey dataWomen, especially those with children, make more stops and chain more trips to and from work compared with men. Life stage influences trip-chaining behavior.
Mokhtarian and Chen [81]VariousVariousReview and analyze empirical literature on travel time and money budgetsLiterature review and synthesisTravel time expenditures are not constant, except perhaps at the most aggregate level. They are related to socioeconomics, activities, and built environment. Mechanisms underlying aggregate stability are not well understood.
Manaugh et al. [82]Montreal, Canada2003Analyze effects of neighborhood characteristics, accessibility, home–work distance, and demographics on commuting distancesFactor cluster analysis of neighborhood types and simultaneous equation modeling of trip distanceHome–work distance has major effect on commuting distance; urban form and job accessibility are important; deciding whether to live and work in same sub-region is influenced by unobserved factors.
Yang and Timmermans [83]The Netherlands2004–2009Analyze impact of fuel price on activity travel time expenditureDutch travel survey data and seemingly unrelated regression analysisFuel price negatively correlated with car travel time, which differs between weekdays and weekends.
Kotval-K and Vojnovic [84]Detroit, USA2007–2008Explore socioeconomic impacts on travel and environmental burdensDetroit region travel survey and ordinary least squares regressionHigher incomes associated with more car travel and emissions across neighborhood types.
Li et al. [85]Shenyang, China2015Examine socioeconomic factors affecting low-carbon and non-low-carbon travel modes for shoppingQuestionnaire surveys and binary logistic regression modelingCar ownership, gender, and income significantly impact travel mode choice for shopping trips.
Wu et al. [86]Xi’an, China1997Explore psychological and sociological factors in household vehicle ownershipSurvey, LISREL model, and multinomial logit modelAttitudes toward vehicle ownership, which are influenced by personality traits and perceptions, significantly impact ownership preferences; symbolic utility is a key determinant.
Karlaftis and Golias [87]Athens, Greece1996Investigate the relationship between traffic parameters and automobile ownership/autolessnessDetailed local travel survey, Poisson regression for ownership, and binary logit model for autolessnessTraffic and efficiency parameters significantly influence automobile ownership but not autolessness; ownership is more affected by socioeconomic factors and less by urban traffic conditions.
Soltani [88]Shiraz, Iran2016Investigate impact of urban form and socioeconomic factors on vehicle ownership using discrete choice modelingHousehold travel survey, GIS analysis of urban form measures, and nested logit modelLand-use mix, distance to work, housing type, household size, and income influence car ownership levels.
Kumar and Krishna Rao [89]Mumbai, IndiaN/AModel car ownership using stated preference dataStated preference experiment and multinomial logit models of car ownershipModels show good fit; stated preference approach is effective for modeling car ownership in developing countries.
Mokonyama and Venter [90]South Africa2002Forecast household car ownership using alternative modelsHousehold travel survey data and category analysis model based on income and dwelling typeCar ownership increases with income and varies by housing type; large growth potential in disadvantaged areas.
Salon and Aligula [91]Nairobi, Kenya2004Analyze urban travel behaviors, focusing on the implications for transport policyHousehold travel survey analysis and multinomial logit modelsLack of suitable transport infrastructure significantly impacts residents across income levels. Major reliance on walking and informal public transport. Suggests enhancing non-motorized transport safety and public transport service to prevent increased car usage with rising incomes.
Joseph et al. [92]Akure, Nigeria2016Investigate factors influencing car ownershipHousehold survey and multinomial logit modelIncreased income and smaller households lead to higher car ownership, with sensitivity to income changes.
Rosier and McDonald [93]Australia2011Examine transport disadvantages in AustraliaLiterature reviewTransport disadvantages more common in low-income, outer-urban, rural/remote areas, and for young families, Indigenous people, and people with disabilities.
Mattioli [94]Great Britain2002–2010Examine car dependence and carless householdsAnalysis of National Travel Survey dataIn car-dependent areas, carless households are more concentrated among disadvantaged groups and have lower mobility levels compared with car-owning households.
Kermanshah [95]Mashhad, Iran1994Model household car ownership using disaggregated approachTwo-level nested logit model based on household socioeconomic and demographic dataHousehold demographics, socioeconomics, and life stage significantly impact car ownership. Nested logit model is appropriate when IIA violated. Rich datasets needed.
Yamamoto et al. [96]California, USA1993–1996Analyze household vehicle transaction behaviorPanel survey and competing risks duration modelTransaction type affects future transactions; household changes influence vehicle decisions.
Bhat and Koppelman [97]The Netherlands1984–1988Jointly model employment, income, and car ownershipSimultaneous equation system of endogenous switchingWife’s employment and income depend on husband’s income and life cycle variables; car ownership depends on income and wife’s employment.
Mackett [98]Great Britain1985–2000Examine children’s increasing car travel and dependencyAnalysis of National Travel Survey dataChildren’s car travel has increased dramatically, while walking and cycling have declined due to car availability, time pressures, and safety concerns. This reduces independence and physical activity, and may lead to future car dependence.
Matas et al. [99]Barcelona and Madrid, Spain2001Analyze effect of job accessibility on car ownershipOrdered probit model with job access by public transportHigher job access significantly reduces the probability of owning cars; elasticities of 0.25 and 0.19 for Barcelona and Madrid.
Srinivasan et al. [100]Chennai, India1999–2004Examine mobility and travel pattern changesRetrospective household survey combined with ordinal response and multinomial logit modelsIncreases in vehicle ownership, workers, and female drivers drive travel demand growth; significant mode choice shifts influenced by vehicle availability and socioeconomic changes.
Scheiner and Holz-Rau [101]Germany1994–2008Examine gendered travel mode choice in car-deficient householdsRegression modeling of German Mobility Panel dataIn car-deficient households, men drive more than women. Social roles, economic power, and gender norms impact intra-household car allocation.
Van der Waerden et al. [102]The Netherlands2011Examine effect of car drivers’ characteristics on maximum acceptable walking distance to destinationsSurvey of University Parking Panel and multinomial regressionFrequency of car use and duration of stay most influence acceptable walking distances, which are shortest for work and weekly shopping trips.
Cui et al. [103]Various2016Explore travel behavior impacts of aging populationsLiterature review on older adult travel patterns, influencing factors, and alternatives to drivingAging poses transport challenges; need accessible, safe mobility options via infrastructure, services, and land use, considering new older cohort behaviors.
Zhou and Wang [104]Beijing, China2016Examine generational differences in car attitudes and attitude–behavior linksTravel survey and multiple-group structural equation modelingYoung adults have less favorable attitudes toward cars and weaker attitude–behavior associations compared with older generations.
Acheampong and Siiba [105]Ghana2019Model factors influencing car-sharing adoption intentionsSurvey of young adults and structural equation modelingPerceived benefits, previous Uber experience, and pro-environmental attitudes positively influence car-sharing intentions, while dissatisfaction with transit also underpins them.
Wheatley [106]Nottingham, England2006Explore conflicts between work–life balance, flexible working, and travel-to-work policiesCase study with interviews and surveysProfessional work cultures and travel-to-work arrangements, like parking, create barriers to effective work–life balance policies, especially for working mothers.
Jansuwan et al. [107]Cache County, Utah2010Assess transportation needs of low-mobility individuals (elderly, disabled, low-income)In-person interviews and mail surveys on travel patterns, social networks, and transit accessPrivate vehicle reliance is high for those who are elderly and on a low income; transit and paratransit reliance high for those who are disabled. Social networks and walking access to transit are key factors.
Linda [108]The Netherlands2001Compare the attractiveness and importance of car vs. public transportSurvey of Dutch residentsThe car is seen as more attractive and important than public transport, especially among frequent car users, due to instrumental and psychological factors.
Whelan [109]Great Britain2001–2031Model and forecast car ownership at disaggregated household levelDiscrete choice models of car ownership level as function of household and area attributes and costs; application via prototypical samplingModels match 2001 ownership well; forecast 42% increase in cars to 36.4 M and 1.24 cars/household by 2031.
Andor et al. [110]Germany2018Assess consumer understanding of total car ownership costsSurvey of 6000+ citizens, comparison with actual costs, and analysis of public transport preference changesConsumers underestimate car ownership costs by ∼50%, impacting public transport preferences and potential car ownership reduction.
Gössling et al. [111]Germany2020Evaluate the full private and social costs of car ownershipAssessment of private and social cost items for three car modelsTotal lifetime cost of car ownership ranges from EUR 599,082 for an Opel Corsa to EUR 956,798 for a Mercedes GLC, with society bearing 29–41% of the costs.
Ostermeijer et al. [112]The Netherlands2000–2016Explore the impact of residential parking costs on car ownershipTransaction data on houses, household survey, and MNL modelResidential parking costs significantly reduce car ownership; the elasticity of car demand is about 0.7 .
Wilson [113]Los Angeles, USA1986Assess the impact of employer-paid parking on commute mode choice and parking demandMultinomial logit model and downtown Los Angeles commuter surveyEmployer-paid parking significantly increases solo driving. Removing subsidies could reduce cars driven to work by 25–34%
Hess [114]Portland, USA1994Assess the effect of free parking on commuter mode choiceHousehold activity survey and multinomial logit modelFree parking increases solo driving. Charging for parking could reduce cars driven by 21% per 100 commuters, impacting VMT significantly.
Khordagui [115]California, USA2012Investigate the impact of parking prices on commute mode choiceCalifornia Household Travel Survey and discrete choice modelA 10% increase in parking prices leads to a 1–2 percentage point decline in driving to work, confirming parking pricing as an effective travel demand management tool.
Franco [117]Los Angeles, USA2020Examine the effects of parking prices and availability on mode choice and urban formLiterature review and policy analysisParking policies influence urban mobility and form; reforms like eliminating MPRs, implementing parking cash-out, and demand-based pricing for on-street parking can enhance sustainability.
Litman and Burwell [118]Global2006Identify sustainable transportation issuesLiterature review and policy analysisExplores definitions, goals, and methods for sustainable transportation, emphasizing the need for comprehensive planning, equity, and integrated solutions.
Fagnant and Kockelman [119]USA2015Evaluate autonomous vehicles’ impacts, barriers, and policy recommendationsLiterature review and benefit–cost analysisAVs may save lives, reduce congestion, and offer USD 196 billion in benefits annually at 90% penetration; barriers include costs, certification, liability, security, and privacy concerns.
Diamond [120]USA2001–2006Analyze the impacts of government incentives on hybrid vehicle adoptionCross-sectional analysis, hybrid registration data, and socioeconomic and policy variablesGasoline prices significantly influence hybrid adoption, while the relationship between incentives and adoption is weak.
Dong et al. [121]Global2021Optimize transport communication in megacities via environmental–economic approachesMulti-criteria optimization, Pareto efficiency, mathematical models, and statistical analysisIdentified critical factors for transport system efficiency in megacities; proposed logistic models for performance improvement, highlighting the importance of vehicle load optimization and scheduling.
Pojani and Stead [122]Developing countries2015Assess sustainable urban transport beyond megacitiesLiterature review and policy analysisSmaller cities have potential for sustainable transport. Priorities include street conditions for green modes, pedestrian zones, exclusive lanes for buses and bicycles, reasonable parking fees, and maintenance over new infrastructure. BRT is highlighted as being cost-effective for public transportation.
Dieleman and Wegener [123]Randstad, The Netherlands1966–2004Examine urban form and sprawl containmentNational spatial planning, policy analysis, and urban growth managementPolicies effectively directed growth to designated areas, promoting compact urban development and preserving open spaces.
Crane and Chatman [124]USA1985–1997Examine the impact of employment decentralization (sprawl) on commutingPanel regression of commute distance on metro employment deconcentration measures from American Housing Survey dataGreater employment suburbanization associated with shorter average commutes overall, but varies by industry; wage and cost endogeneity addressed.
Al-Buenain et al. [125]Qatar2021Assess EV adoption’s environmental benefitsWell-to-wheel LCA and surveyEVs have lower emissions than gasoline vehicles; strong government incentives required for widespread adoption.
Vega-Gonzalo et al. [126]European urban areas2021Analyze COVID-19’s impact on car useEU-wide Urban Mobility Survey and path analysisCOVID-19 increased car use among lower-car-dependency groups, with high-income teleworkers reducing car use the most.
Handy [127]USA2004Assess relationships among transportation, land use, and physical activityLiterature review and theory synthesisIdentifies gaps in understanding the causal links between built environment and physical activity, emphasizing the need for comprehensive models and refined measurement of variables.
Anable [128]NW UK2004Identify travel behavior segments using attitude theoryMail-back survey and factor and cluster analysesIdentified six psychographic groups varying in mode-switching potential, underscoring the need for targeted transport policies.
Lucas and Jones [131]UK1989–2009Investigate car ownership and use trends and understand car dependenceNational Travel Survey analysis and literature reviewCar use continued to grow until the late 1990s but has leveled off since; disparities in car ownership by income decreased, with significant growth among lower-income households.
Gärling [133]N/AUp to 1998Critique microeconomic theory’s basis of travel choice modelingLiterature review and synthesisTravel choice models should account for interdependencies, information biases, decision rules, social motives, and automaticity; current theory is overly simplistic.
Bem [135]N/AUp to 1972Propose self-perception theory as alternative to cognitive dissonance theoryConceptual analysis and review of empirical evidencePeople infer own attitudes and emotions from observations of own behavior and circumstances, like an outside observer, especially when internal cues are weak. Reinterpret dissonance phenomena.
Ajzen [137]MultipleUp to 1991Review and address unresolved issues of the theory of planned behaviorLiterature review and theoretical analysisEmpirical evidence supports the TPB. Intentions predict behavior accurately when perceived behavioral control is included. Past behavior remains an influential factor, suggesting not all determinants are captured by the TPB.
Bandura [138]N/AN/APresent an agentic perspective of social cognitive theoryConceptual analysis and synthesis of researchHuman agency involves intentionality, forethought, self-reactiveness, and self-reflectiveness. People are producers and products of social systems through personal, proxy, and collective modes of agency.
Cropanzano and Mitchell [139]VariousUp to 2004Review and clarify social exchange theory (SET) ambiguitiesLiterature review and theoretical analysisIdentified key components and conceptual ambiguities in SET, stressing the importance of distinguishing between types of exchanges and relationships, as well as highlighting future research directions in organizational behavior.
Steg [140]The Netherlands2004Explore instrumental, symbolic, and affective motives for car useQuestionnaire studiesCar use fulfills instrumental, symbolic, and affective functions. Symbolic and affective motives significantly relate to car use levels, suggesting policies should also target these aspects.
Gardner and Abraham [141]Various2008Synthesize research on psychological correlates of car useMeta-analysisSupports predictive utility of the theory of planned behavior variables for car use. Strong effects of intention, habit, and PBC on behavior; stronger effects for non-car use intentions.
Bamberg and Schmidt [142]Giessen, Germany1997Compare predictive power of the TPB, Triandis, and Schwartz models on car use for university commutesQuestionnaire and analysis of modelsTPB and Triandis models confirmed empirically; Schwartz model partly confirmed. Intentions and habits strongly predict car use, overshadowing moral norms.
Zhu et al. [143]Yangtze Delta, China2009Explore car ownership aspirations among university studentsSurvey and theory of planned behaviorHigh aspiration for car ownership, driven by psychosocial values over instrumental ones, indicating a strong emerging car culture among young adults.
Belgiawan et al. [144]Bandung, Indonesia2016Understand car ownership motivations among Indonesian studentsSurvey, principal component analysis, and SEMIndependence, arrogant prestige, and income significantly influence car purchase decisions, with symbolic/affective motives also playing a role.
Luke [145]South Africa2015Investigate car ownership intentions among studentsSurvey and exploratory factor analysisStudents intend to purchase cars as soon as financially able, which is driven by inadequate public transport and offers insights for policy directed at improving public transport services to mitigate rising car ownership.
Verma et al. [146]Bangalore, India2016Analyze attitudinal factors influencing car ownership decisions among young adultsSurvey and structural equation modeling (SEM)Comfort and status-seeker attitudes predict future car ownership; education level and family car ownership significantly influence ownership intentions.
Pojani et al. [147]Tirana, Albania2014Explore adolescents’ car ownership and use intentionsSurvey and structural equation modeling (SEM)Despite Tirana’s compactness, adolescents aspire to car ownership, viewing cars as status symbols. Attitudes, not environmental concerns, drive these aspirations.
Van and Fujii [148]Japan, Thailand, China, Vietnam, Indonesia, and the Philippines2005Explore attitudes toward cars and public transport across six Asian countriesSurvey and principal component analysisIdentified three attitude factors toward car and public transport: symbolic–affective, instrumental, and social orderliness. Differences across countries in attitudes, with symbolic–affective values for cars being generally higher than for public transport.
Belgiawan et al. [149]China, Indonesia, Japan, Lebanon, The Netherlands, Taiwan, and USA2013Explore car ownership intentions among studentsWeb survey on attitudes, social norms, and demographicsStudents in developed countries show less desire to own cars; social expectations significantly influence car-purchasing intentions.
Beirão and Cabral [150]Porto, Portugal2007Explore attitudes toward public transport and car useQualitative study with in-depth interviewsTo increase public transport usage, services must align with customer needs, focusing on travel time, cost, comfort, and information availability. Mode choice is influenced by lifestyle, perceived service performance, and individual characteristics, suggesting targeted policies for specific segments.
Wright and Egan [151]UK2000Explore potential for de-marketing car use to reduce trafficTheoretical analysis and review of de-marketing conceptsProposes de-marketing the car through public campaigns focusing on altering public attitudes and perceptions using negative marketing and demand restraint to make car use less desirable and promote public transport as an alternative.
Maslow [152]N/AN/AExplore the inherent nature of basic needsAnalysis of instinct theory errors, argumentation for basic needs’ hereditary nature, and proposal of new instinct hypothesisIdentifies past instinct theory flaws, argues for basic needs’ instinct-like nature, and suggests a new instinct hypothesis aiming for societal improvement. Education, law, and religion should promote recognition and fulfillment of these needs.
Sheller [153]Various2004Explore the emotional and cultural dimensions of car useTheoretical analysis and literature reviewHighlights the deep emotional and cultural ties to cars, emphasizing their role in personal identity, family life, and national cultures. Advocates for a nuanced understanding of automotive emotions in shaping transport policies.
Li et al. [154]Beijing, China2016Examine effects of constrained car ownership and use on travel and life satisfactionSurvey and structural equation modelingMultiple car ownership increases life satisfaction; car ownership not directly related to life satisfaction. Infrequent car use contributes to higher travel and life satisfaction. Attitudes toward cars significantly influence satisfaction levels.
Steg et al. [156]The Netherlands2001Clarify symbolic–affective vs. instrumental-reasoned motives for car useSimilarity sorting, Q-sorting, and semantic differential methodSymbolic–affective and instrumental-reasoned motives both significant. Car use valued for independence, availability, and utility; negative attitudes toward costs, environmental impact, and driving conditions.
Bergstad et al. [158]Sweden2007Investigate how affective–symbolic and instrumental–independence motives mediate sociodemographic effects on car useMail survey and principal component analysisAffective–symbolic motive partially mediates the relationship between weekly car trips and gender; instrumental–independence motive mediates effects of sociodemographic factors on car use.
Cialdini et al. [159]Various1990Refine and evaluate the influence of norms on behaviorField experiments and norm activation methodsDemonstrated the potent impact of activating descriptive and injunctive norms on behavior, such as littering, with implications for understanding and leveraging social norms for behavioral change.
Weinberger and Goetzke [160]USA2000Investigate how previous living environments affect auto ownership decisions2000 U.S. Census data and multinomial probit modelResidents moving from metropolitan areas, especially those with strong transit systems, are more likely to own fewer vehicles. Prior experience in environments where car ownership is optional influences current car ownership decisions.
Ibrahim [162]Singapore2003Examine attitudes toward transport modes for shoppingSurvey and perception analysisCar owners and non-car owners show distinct attitudes toward transport modes. Public transport and walking is viewed favorably for shopping, with differences in perceptions highlighting the need for tailored policy strategies.
He and Thøgersen [163]Guangzhou, China2013Understand attitudes and perceptions affecting travel mode choice and car ownership intentionsSurvey, factor analysis, SEM, and logistic regressionCar ownership is a key determinant of travel mode choice. Attitudes significantly influence intentions to buy a car, with preferences for car over public transport driven by affective well-being, functionality, and negative externalities.
Cullinane and Cullinane [164]Hong Kong2001Examine reasons for car ownership and car dependence in a city with extensive public transportSurvey of 401 car ownersDespite low car ownership, those with cars are dependent on them for all journey purposes. Carrying capacity, time savings, and comfort are key reasons for ownership. Policies targeting car ownership and enhancing public transport’s convenience are crucial for sustainability.
Jarvis [165]UK1999Investigate household strategies for coordinating home and workQualitative interviews and thematic analysisHouseholds employ diverse strategies influenced by social and kin networks, with implications for mobility, employment structure, and place attachment.
Jarvis [166]West Coast U.S. cities2003Examine whether compact, mixed-use design reduces “wasteful” journeysQualitative household research in Portland, Seattle, and San FranciscoHigh levels of dissonance between preference for compact living and actual non-localized practices; compromises on school choice and work significantly influence travel behavior.
Jarvis [167]London, UK2005Explore the impact of urban living on household time coordinationIn-depth biographies and thematic analysisLondon’s urban dynamics exacerbate the “time squeeze” for working families, with housing affordability, childcare shortage, transport failure, and school choice posing significant challenges.
Summala [168]Various2007Analyze motivational and emotional factors in driver behavior, focusing on “comfort through satisficing”Theoretical analysis and review of literature on driver behavior modelsIntroduces the concept of “comfort through satisficing” to explain driver behavior. Drivers aim to keep safety margins, vehicle/road system experience, rule adherence, and progress of trip within a “comfort zone”, balancing between safety, legal, and efficiency considerations.
Roth [169]Various2005Examine physiological markers for anxiety, focusing on panic disorder and phobiasAmbulatory study and physiological measurementsConcordance between self-reported anxiety and physiological markers, such as autonomic activation and respiratory abnormalities in driving phobics and patients with panic disorder. Demonstrates the potential of physiological measurements for understanding anxiety disorders.
Lucas [170]UK2005–2008Explore the nature and effects of car dependenceLiterature review, NTS data analysis, interviews, and focus groupsIdentified broad and nuanced definitions of car dependence; emphasis on lifestyle impacts and vulnerability to policy changes. Focus on a car’s role in providing access, independence, and the implications of potential enforced car use reduction measures.
Thomas [172]Wellington, New Zealand2009Investigate social environment and interpersonal discomfort in public transportNaturalistic observation, survey, and exploratory questionnairePublic transport forces intimate distances causing social discomfort. Interactive strategies, like talking, reduce discomfort more effectively than defensive strategies. Identifies the balance between privacy need and social interaction in public transport settings.
Corlătianu et al. [173]Romania2022Evaluate PTSD symptoms and stress’s influence on anxious driving among novice driversSurvey, scales for PTSD symptoms, driving stress, and anxious driving behaviorAggression, dislike of driving, thrill-seeking, and fatigue predict anxious driving behavior. Aggression increases hostile behavior, while dislike decreases it and increases performance deficits.

References

  1. Timilsina, G.R.; Dulal, H.B. Urban road transportation externalities: Costs and choice of policy instruments. World Bank Res. Obs. 2011, 26, 162–191. [Google Scholar] [CrossRef]
  2. AMR. How Many Cars Are There in the World in 2022? Available online: https://hedgescompany.com/blog/2021/06/how-many-cars-are-there-in-the-world/ (accessed on 5 February 2024).
  3. Statista. Statista Research Department. 2022. Available online: https://www.statista.com/statistics/262747/worldwide-automobile-production-since-2000/ (accessed on 5 February 2024).
  4. Shen, Q. Urban transportation in Shanghai, China: Problems and planning implications. Int. J. Urban Reg. Res. 1997, 21, 589–606. [Google Scholar] [CrossRef]
  5. Dargay, J.; Gately, D. Income’s effect on car and vehicle ownership, worldwide: 1960–2015. Transp. Res. Part A Policy Pract. 1999, 33, 101–138. [Google Scholar] [CrossRef]
  6. Dimitriou, H.T.; Gakenheimer, R. Urban Transport in the Developing World: A Handbook of Policy and Practice; Edward Elgar: Northampton, MA, USA, 2011. [Google Scholar]
  7. Li, Y.; Miao, L.; Chen, Y.; Hu, Y. Exploration of sustainable urban transportation development in China through the forecast of private vehicle ownership. Sustainability 2019, 11, 4259. [Google Scholar] [CrossRef]
  8. Dargay, J.; Gately, D.; Sommer, M. Vehicle ownership and income growth, worldwide: 1960–2030. Energy J. 2007, 28, 143–170. [Google Scholar] [CrossRef]
  9. Hui, A. Moving with practices: The discontinuous, rhythmic and material mobilities of leisure. Soc. Cult. Geogr. 2013, 14, 888–908. [Google Scholar] [CrossRef]
  10. Davies, N.J.; Weston, R. Reducing car-use for leisure: Can organised walking groups switch from car travel to bus and train walks? J. Transp. Geogr. 2015, 48, 23–29. [Google Scholar] [CrossRef]
  11. Mattioli, G.; Anable, J.; Vrotsou, K. Car dependent practices: Findings from a sequence pattern mining study of UK time use data. Transp. Res. Part A Policy Pract. 2016, 89, 56–72. [Google Scholar] [CrossRef]
  12. Simma, A.; Axhausen, K.W. Structures of commitment in mode use: A comparison of Switzerland, Germany and Great Britain. Transp. Policy 2001, 8, 279–288. [Google Scholar] [CrossRef]
  13. Van Acker, V.; Witlox, F. Car ownership as a mediating variable in car travel behaviour research using a structural equation modelling approach to identify its dual relationship. J. Transp. Geogr. 2010, 18, 65–74. [Google Scholar] [CrossRef]
  14. Buehler, R.; Pucher, J.; Gerike, R.; Götschi, T. Reducing car dependence in the heart of Europe: Lessons from Germany, Austria, and Switzerland. Transp. Rev. 2017, 37, 4–28. [Google Scholar] [CrossRef]
  15. Jones, P. Conceptualising car ‘dependence’. In Auto Motives; Emerald Group: Bradford, UK, 2011; pp. 39–61. [Google Scholar]
  16. Saeidizand, P.; Fransen, K.; Boussauw, K. Revisiting car dependency: A worldwide analysis of car travel in global metropolitan areas. Cities 2022, 120, 103467. [Google Scholar] [CrossRef]
  17. Okeke, F.O.; Okosun, A.E.; Udeh, C.A.; Okekeogbu, C.J. Cities for People: The dependency & Impact of Automobile in the Life of City dwellers. Eur. J. Sustain. Dev. 2020, 9, 157. [Google Scholar]
  18. Hensher, D.; Button, K. Integrated transport models for environmental assessment. In Handbook of Transport and the Environment; Emerald Group: Bradford, UK, 2003. [Google Scholar]
  19. Wee, B.V. The unsustainability of car use. In Handbook of Sustainable Travel; Springer: Berlin/Heidelberg, Germany, 2014; pp. 69–83. [Google Scholar]
  20. Parry, I.W.; Walls, M.; Harrington, W. Automobile externalities and policies. J. Econ. Lit. 2007, 45, 373–399. [Google Scholar] [CrossRef]
  21. Bickel, P.; Friedrich, R.; Link, H.; Stewart, L.; Nash, C. Introducing environmental externalities into transport pricing: Measurement and implications. Transp. Rev. 2006, 26, 389–415. [Google Scholar] [CrossRef]
  22. Cravioto, J.; Yamasue, E.; Okumura, H.; Ishihara, K.N. Road transport externalities in Mexico: Estimates and international comparisons. Transp. Policy 2013, 30, 63–76. [Google Scholar] [CrossRef]
  23. Schrank, D.; Eisele, B.; Lomax, T.; Bak, J. 2015 Urban Mobility Scorecard; Texas Transportation Institute: Bryan, TX, USA, 2015. [Google Scholar]
  24. Suter, A.H. Noise and its effects. In Proceedings of the Administrative Conference of the United States, Denver, CO, USA, 1 May 1991; pp. 1–47. [Google Scholar]
  25. Guerreiro, C.; González Ortiz, A.; de Leeuw, F.; Viana, M.; Colette, A. European Environment Agency. In Air Quality in Europe–2018 Report; European Environment Agency: Copenhagen, Denmark, 2014; pp. 3–16. [Google Scholar]
  26. Evans, C.; Naude, C.; Teh, J.; Makwasha, T.; Ai, U. Updating Environmental Externalities Unit Values; Number AP-T285/14; Australian Road Research Board: Melbourne, Australia, 2014. [Google Scholar]
  27. WHO. Global Status Report on Road Safety 2022; World Health Organization: Geneva, Switzerland, 2022. [Google Scholar]
  28. Paniker, J.; Graham, S.M.; Harrison, J.W. Global Trauma: The Great Divide. SICOT J. 2015, 1, 19. [Google Scholar] [CrossRef]
  29. Sugiyama, T.; Chandrabose, M.; Homer, A.R.; Sugiyama, M.; Dunstan, D.W.; Owen, N. Car use and cardiovascular disease risk: Systematic review and implications for transport research. J. Transp. Health 2020, 19, 100930. [Google Scholar] [CrossRef]
  30. Page, M.J.; McKenzie, J.E.; Bossuyt, P.M.; Boutron, I.; Hoffmann, T.C.; Mulrow, C.D.; Shamseer, L.; Tetzlaff, J.M.; Akl, E.A.; Brennan, S.E.; et al. The PRISMA 2020 Statement: An Updated Guideline for Reporting Systematic Reviews. Int. J. Surg. 2021, 88, 105906. [Google Scholar] [CrossRef]
  31. Nielsen, T.A.S.; Olafsson, A.S.; Carstensen, T.A.; Skov-Petersen, H. Environmental correlates of cycling: Evaluating urban form and location effects based on Danish micro-data. Transp. Res. Part D Transp. Environ. 2013, 22, 40–44. [Google Scholar] [CrossRef]
  32. Sun, B.; Ermagun, A.; Dan, B. Built environmental impacts on commuting mode choice and distance: Evidence from Shanghai. Transp. Res. Part D Transp. Environ. 2017, 52, 441–453. [Google Scholar] [CrossRef]
  33. Yin, C.; Sun, B. Disentangling the effects of the built environment on car ownership: A multi-level analysis of Chinese cities. Cities 2018, 74, 188–195. [Google Scholar] [CrossRef]
  34. Yang, L.; Ding, C.; Ju, Y.; Yu, B. Driving as a commuting travel mode choice of car owners in urban China: Roles of the built environment. Cities 2021, 112, 103114. [Google Scholar] [CrossRef]
  35. Cervero, R.; Kockelman, K. Travel demand and the 3Ds: Density, diversity, and design. Transp. Res. Part D Transp. Environ. 1997, 2, 199–219. [Google Scholar] [CrossRef]
  36. Ewing, R.; Cervero, R. Travel and the built environment: A synthesis. Transp. Res. Rec. 2001, 1780, 87–114. [Google Scholar] [CrossRef]
  37. Ewing, R.; Cervero, R. Travel and the Built Environment. J. Am. Plan. Assoc 2010, 76, 265–294. [Google Scholar] [CrossRef]
  38. Li, S.; Zhao, P. Exploring car ownership and car use in neighborhoods near metro stations in Beijing: Does the neighborhood built environment matter? Transp. Res. Part D Transp. Environ. 2017, 56, 1–17. [Google Scholar] [CrossRef]
  39. Ding, C.; Cao, X. How does the built environment at residential and work locations affect car ownership? An application of cross-classified multilevel model. J. Transp. Geogr. 2019, 75, 37–45. [Google Scholar] [CrossRef]
  40. Chen, C.; Gong, H.; Paaswell, R. Role of the built environment on mode choice decisions: Additional evidence on the impact of density. Transportation 2008, 35, 285–299. [Google Scholar] [CrossRef]
  41. Shen, Q.; Chen, P.; Pan, H. Factors affecting car ownership and mode choice in rail transit-supported suburbs of a large Chinese city. Transp. Res. Part A Policy Pract. 2016, 94, 31–44. [Google Scholar] [CrossRef]
  42. Ding, C.; Wang, D.; Liu, C.; Zhang, Y.; Yang, J. Exploring the influence of built environment on travel mode choice considering the mediating effects of car ownership and travel distance. Transp. Res. Part A Policy Pract. 2017, 100, 65–80. [Google Scholar] [CrossRef]
  43. Bhat, C.R.; Guo, J.Y. A comprehensive analysis of built environment characteristics on household residential choice and auto ownership levels. Transp. Res. Part B Methodol. 2007, 41, 506–526. [Google Scholar] [CrossRef]
  44. Brownstone, D.; Golob, T.F. The impact of residential density on vehicle usage and energy consumption. J. Urban Econ. 2009, 65, 91–98. [Google Scholar] [CrossRef]
  45. Bartholomew, K.; Ewing, R. Land use–transportation scenarios and future vehicle travel and land consumption: A meta-analysis. J. Am. Plan. Assoc. 2008, 75, 13–27. [Google Scholar] [CrossRef]
  46. Leck, E. The impact of urban form on travel behavior: A meta-analysis. Berkeley Plan. J. 2006, 19, 37–58. [Google Scholar] [CrossRef]
  47. Boussauw, K.; Neutens, T.; Witlox, F. Relationship between spatial proximity and travel-to-work distance: The effect of the compact city. Reg. Stud. 2012, 46, 687–706. [Google Scholar] [CrossRef]
  48. Potoglou, D.; Kanaroglou, P.S. Modelling car ownership in urban areas: A case study of Hamilton, Canada. J. Transp. Geogr. 2008, 16, 42–54. [Google Scholar] [CrossRef]
  49. Zegras, C. The built environment and motor vehicle ownership and use: Evidence from Santiago de Chile. Urban Stud. 2010, 47, 1793–1817. [Google Scholar] [CrossRef]
  50. Jiang, Y.; Gu, P.; Chen, Y.; He, D.; Mao, Q. Influence of land use and street characteristics on car ownership and use: Evidence from Jinan, China. Transp. Res. Part D Transp. Environ. 2017, 52, 518–534. [Google Scholar] [CrossRef]
  51. Frank, L.D.; Sallis, J.F.; Saelens, B.E.; Leary, L.; Cain, K.; Conway, T.L.; Hess, P.M. The development of a walkability index: Application to the Neighborhood Quality of Life Study. Br. J. Sport. Med. 2010, 44, 924–933. [Google Scholar] [CrossRef]
  52. Soltani, A. Exploring the impacts of built environments on vehicle ownership. In Proceedings of the Eastern Asia Society for Transportation Studies, Taipei, Taiwan, 9–12 September 2005; Volume 5, pp. 2151–2163. [Google Scholar]
  53. Vuchic, V.R. Urban Public Transportation Systems; University of Pennsylvania: Philadelphia, PA, USA, 2002; Volume 5, pp. 2532–2558. [Google Scholar]
  54. Yin, C.; Shao, C.; Wang, X. Built environment and parking availability: Impacts on car ownership and use. Sustainability 2018, 10, 2285. [Google Scholar] [CrossRef]
  55. Schimek, P. Household motor vehicle ownership and use: How much does residential density matter? Transp. Res. Rec. 1996, 1552, 120–125. [Google Scholar] [CrossRef]
  56. Bento, A.M.; Cropper, M.L.; Mobarak, A.M.; Vinha, K. The effects of urban spatial structure on travel demand in the United States. Rev. Econ. Stat. 2005, 87, 466–478. [Google Scholar] [CrossRef]
  57. Li, J.; Walker, J.L.; Srinivasan, S.; Anderson, W.P. Modeling private car ownership in China: Investigation of urban form impact across megacities. Transp. Res. Rec. 2010, 2193, 76–84. [Google Scholar] [CrossRef]
  58. Chatman, D.G. Does TOD need the T? On the importance of factors other than rail access. J. Am. Plan. Assoc. 2013, 79, 17–31. [Google Scholar] [CrossRef]
  59. Kim, H.S.; Kim, E. Effects of public transit on automobile ownership and use in households of the USA. Rev. Urban Reg. Dev. Stud. 2004, 16, 245–262. [Google Scholar] [CrossRef]
  60. Chatman, D.G. Deconstructing development density: Quality, quantity and price effects on household non-work travel. Transp. Res. Part A Policy Pract. 2008, 42, 1008–1030. [Google Scholar] [CrossRef]
  61. Gossen, R. Travel characteristics of TOD and non-TOD residents in the San Francisco Bay Area: Evidence from the 2000 Bay Area travel survey. In Report for the Metropolitan Transpiration Commission, Oakland California; Metropolitan Transportation Commission: San Francisco, CA, USA, 2005. [Google Scholar]
  62. Cao, J.; Cao, X. The impacts of LRT, neighbourhood characteristics, and self-selection on auto ownership: Evidence from Minneapolis-St. Paul. Urban Stud. 2014, 51, 2068–2087. [Google Scholar] [CrossRef]
  63. Cervero, R.; Murakami, J. Effects of built environments on vehicle miles traveled: Evidence from 370 US urbanized areas. Environ. Plan. A 2010, 42, 400–418. [Google Scholar] [CrossRef]
  64. Combs, T.S.; Rodríguez, D.A. Joint impacts of Bus Rapid Transit and urban form on vehicle ownership: New evidence from a quasi-longitudinal analysis in Bogotá, Colombia. Transp. Res. Part A Policy Pract. 2014, 69, 272–285. [Google Scholar] [CrossRef]
  65. Doddamani, C.; Manoj, M. Analysis of the influences of built environment measures on household car and motorcycle ownership decisions in Hubli-Dharwad cities. Transportation 2023, 50, 205–243. [Google Scholar] [CrossRef]
  66. Weinberger, R.; Seaman, M.; Johnson, C. Suburbanizing the City: How New York City Parking Requirements Lead to More Driving; Australian Road Research Board: Melbourne, Australia, 2008. [Google Scholar]
  67. Weinberger, R.; Seaman, M.; Johnson, C. Residential off-street parking impacts on car ownership, vehicle miles traveled, and related carbon emissions: New York City case study. Transp. Res. Rec. 2009, 2118, 24–30. [Google Scholar] [CrossRef]
  68. Guo, Z. Does residential parking supply affect household car ownership? The case of New York City. J. Transp. Geogr. 2013, 26, 18–28. [Google Scholar] [CrossRef]
  69. Guo, Z. Residential street parking and car ownership: A study of households with off-street parking in the New York City region. J. Am. Plan. Assoc. 2013, 79, 32–48. [Google Scholar] [CrossRef]
  70. Christiansen, P.; Fearnley, N.; Hanssen, J.U.; Skollerud, K. Household parking facilities: Relationship to travel behaviour and car ownership. Transp. Res. Procedia 2017, 25, 4185–4195. [Google Scholar] [CrossRef]
  71. Sobhani, M.G.; Sadeek, S.N.; Rahman, M.N.; Islam, A.; Hossain, M. Impact of Socio-economic Factors on Parking Demand in Developing Cities. In Proceedings of the Eastern Asia Society for Transportation Studies, Chi Minh City, Vietnam, 18–21 September 2017; Volume 11. [Google Scholar]
  72. Van Eenoo, E.; Fransen, K.; Boussauw, K. Car dependency beyond land use: Can a standardized built environment indicator predict car use? J. Transp. Land Use 2022, 15, 117–136. [Google Scholar] [CrossRef]
  73. Stead, D. Relationships between land use, socioeconomic factors, and travel patterns in Britain. Environ. Plan. B Plan. Des. 2001, 28, 499–528. [Google Scholar] [CrossRef]
  74. Zhou, Y.; Yuan, Q.; Yang, C.; Wang, Y. Who you are determines how you travel: Clustering human activity patterns with a Markov-chain-based mixture model. Travel Behav. Soc. 2021, 24, 102–112. [Google Scholar] [CrossRef]
  75. Shao, Q.; Zhang, W.; Cao, X.J.; Yang, J. Nonlinear and interaction effects of land use and motorcycles/E-bikes on car ownership. Transp. Res. Part D Transp. Environ. 2022, 102, 103115. [Google Scholar] [CrossRef]
  76. Hanson, S.; Hanson, P. The travel-activity patterns of urban residents: Dimensions and relationships to sociodemographic characteristics. Econ. Geogr. 1981, 57, 332–347. [Google Scholar] [CrossRef]
  77. Pas, E.I. The effect of selected sociodemographic characteristics on daily travel-activity behavior. Environ. Plan. A 1984, 16, 571–581. [Google Scholar] [CrossRef]
  78. Bhat, C.R.; Koppelman, F.S. A conceptual framework of individual activity program generation. Transp. Res. Part A Policy Pract. 1993, 27, 433–446. [Google Scholar] [CrossRef]
  79. Sarmiento, S. Household, gender, and travel. In Proceedings of the 1998 Women’s Travel Issues Second National Conference, Baltimore, MD, USA, 7 July 1998. [Google Scholar]
  80. McGuckin, N.; Murakami, E. Examining trip-chaining behavior: Comparison of travel by men and women. Transp. Res. Rec. 1999, 1693, 79–85. [Google Scholar] [CrossRef]
  81. Mokhtarian, P.L.; Chen, C. TTB or not TTB, that is the question: A review and analysis of the empirical literature on travel time (and money) budgets. Transp. Res. Part A Policy Pract. 2004, 38, 643–675. [Google Scholar] [CrossRef]
  82. Manaugh, K.; Miranda-Moreno, L.F.; El-Geneidy, A.M. The effect of neighbourhood characteristics, accessibility, home–work location, and demographics on commuting distances. Transportation 2010, 37, 627–646. [Google Scholar] [CrossRef]
  83. Yang, D.; Timmermans, H. Analysis of influence of fuel price on individual activity-travel time expenditure. Transp. Policy 2013, 30, 40–55. [Google Scholar] [CrossRef]
  84. Kotval-K, Z.; Vojnovic, I. The socio-economics of travel behavior and environmental burdens: A Detroit, Michigan regional context. Transp. Res. Part D Transp. Environ. 2015, 41, 477–491. [Google Scholar] [CrossRef]
  85. Li, J.; Lo, K.; Guo, M. Do socio-economic characteristics affect travel behavior? A comparative study of low-carbon and non-low-carbon shopping travel in Shenyang City, China. Int. J. Environ. Res. Public Health 2018, 15, 1346. [Google Scholar] [CrossRef]
  86. Wu, G.; Yamamoto, T.; Kitamura, R. Vehicle ownership model that incorporates the causal structure underlying attitudes toward vehicle ownership. Transp. Res. Rec. 1999, 1676, 61–67. [Google Scholar] [CrossRef]
  87. Karlaftis, M.; Golias, J. Automobile ownership, households without automobiles, and urban traffic parameters: Are they related? Transp. Res. Rec. 2002, 1792, 29–35. [Google Scholar] [CrossRef]
  88. Soltani, A. Social and urban form determinants of vehicle ownership; evidence from a developing country. Transp. Res. Part A Policy Pract. 2017, 96, 90–100. [Google Scholar] [CrossRef]
  89. Kumar, M.; Krishna Rao, K. A stated preference study for a car ownership model in the context of developing countries. Transp. Plan. Technol. 2006, 29, 409–425. [Google Scholar] [CrossRef]
  90. Mokonyama, M.; Venter, C. Forecasting household car ownership in South Africa: Alternative models and future trends. J. South Afr. Inst. Civ. Eng. 2007, 49, 2–10. [Google Scholar]
  91. Salon, D.; Aligula, E.M. Urban travel in Nairobi, Kenya: Analysis, insights, and opportunities. J. Transp. Geogr. 2012, 22, 65–76. [Google Scholar] [CrossRef]
  92. Joseph, O.O.; Eromietse, E.J.; Emmanuel, D.S.; Olufunke, A. Multinomial logit model estimation of household characteristics influencing car ownership in Akure, South West, Nigeria. Int. J. Traffic Transp. Eng. 2017, 7, 203–215. [Google Scholar]
  93. Rosier, K.; McDonald, M. The Relationship between Transport and Disadvantage in Australia; Australian Institute of Family Studies Melbourne: Melbourne, Australia, 2011. [Google Scholar]
  94. Mattioli, G. Where sustainable transport and social exclusion meet: Households without cars and car dependence in Great Britain. J. Environ. Policy Plan. 2014, 16, 379–400. [Google Scholar] [CrossRef]
  95. Kermanshah, M. Modeling automobile ownership decisions: A disaggregate approach. Sci. Iran. 2001, 8, 29–37. [Google Scholar]
  96. Yamamoto, T.; Kitamura, R.; Kimura, S. Competing-risks-duration model of household vehicle transactions with indicators of changes in explanatory variables. Transp. Res. Rec. 1999, 1676, 116–123. [Google Scholar] [CrossRef]
  97. Bhat, C.R.; Koppelman, F.S. An endogenous switching simultaneous equation system of employment, income, and car ownership. Transp. Res. Part A Policy Pract. 1993, 27, 447–459. [Google Scholar] [CrossRef]
  98. Mackett, R.L. Increasing car dependency of children: Should we be worried? Proc. Inst. Civ. Eng. Munic. Eng. 2002, 151, 29–38. [Google Scholar] [CrossRef]
  99. Matas, A.; Raymond, J.L.; Roig, J.L. Car ownership and access to jobs in Spain. Transp. Res. Part A Policy Pract. 2009, 43, 607–617. [Google Scholar] [CrossRef]
  100. Srinivasan, K.K.; Bhargavi, P.L.; Ramadurai, G.; Muthuram, V.; Srinivasan, S. Determinants of changes in mobility and travel patterns in developing countries: Case study of Chennai, India. Transp. Res. Rec. 2007, 2038, 42–52. [Google Scholar] [CrossRef]
  101. Scheiner, J.; Holz-Rau, C. Gendered travel mode choice: A focus on car deficient households. J. Transp. Geogr. 2012, 24, 250–261. [Google Scholar] [CrossRef]
  102. Van der Waerden, P.; Timmermans, H.; de Bruin-Verhoeven, M. Car drivers’ characteristics and the maximum walking distance between parking facility and final destination. J. Transp. Land Use 2017, 10, 1–11. [Google Scholar]
  103. Cui, J.; Loo, B.P.; Lin, D. Travel behaviour and mobility needs of older adults in an ageing and car-dependent society. Int. J. Urban Sci. 2017, 21, 109–128. [Google Scholar] [CrossRef]
  104. Zhou, M.; Wang, D. Generational differences in attitudes towards car, car ownership and car use in Beijing. Transp. Res. Part D Transp. Environ. 2019, 72, 261–278. [Google Scholar] [CrossRef]
  105. Acheampong, R.A.; Siiba, A. Modelling the Determinants of Car-Sharing Adoption Intentions Among Young Adults: The Role of Attitude, Perceived Benefits, Travel Expectations and Socio-demographic Factors. Transportation 2020, 47, 2557–2580. [Google Scholar] [CrossRef]
  106. Wheatley, D. Work-life balance, travel-to-work, and the dual career household. Pers. Rev. 2012, 41, 813–831. [Google Scholar] [CrossRef]
  107. Jansuwan, S.; Christensen, K.M.; Chen, A. Assessing the transportation needs of low-mobility individuals: Case study of a small urban community in Utah. J. Urban Plan. Dev. 2013, 139, 104–114. [Google Scholar] [CrossRef]
  108. Steg, L. Can public transport compete with the private car? IATSS Res. 2003, 27, 27–35. [Google Scholar] [CrossRef]
  109. Whelan, G. Modelling car ownership in Great Britain. Transp. Res. Part A Policy Pract. 2007, 41, 205–219. [Google Scholar] [CrossRef]
  110. Andor, M.A.; Gerster, A.; Gillingham, K.T.; Horvath, M. Running a car costs much more than people think—stalling the uptake of green travel. Nature 2020, 580, 453–455. [Google Scholar] [CrossRef] [PubMed]
  111. Gössling, S.; Kees, J.; Litman, T. The lifetime cost of driving a car. Ecol. Econ. 2022, 194, 107335. [Google Scholar] [CrossRef]
  112. Ostermeijer, F.; Koster, H.R.; van Ommeren, J. Residential parking costs and car ownership: Implications for parking policy and automated vehicles. Reg. Sci. Urban Econ. 2019, 77, 276–288. [Google Scholar] [CrossRef]
  113. Wilson, R.W. Estimating the travel and parking demand effects of employer-paid parking. Reg. Sci. Urban Econ. 1992, 22, 133–145. [Google Scholar] [CrossRef]
  114. Hess, D.B. Effect of free parking on commuter mode choice: Evidence from travel diary data. Transp. Res. Rec. 2001, 1753, 35–42. [Google Scholar] [CrossRef]
  115. Khordagui, N. Parking prices and the decision to drive to work: Evidence from California. Transp. Res. Part A Policy Pract. 2019, 130, 479–495. [Google Scholar] [CrossRef]
  116. Shoup, D.C. The High Cost of Free Parking; Routledge: London, UK, 2021. [Google Scholar]
  117. Franco, S.F. Parking Prices and Availability, Mode Choice and Urban Form; Nova University of Lisbon: Lisbon, Portugal, 2020. [Google Scholar]
  118. Litman, T.; Burwell, D. Issues in sustainable transportation. Int. J. Glob. Environ. Issues 2006, 6, 331–347. [Google Scholar] [CrossRef]
  119. Fagnant, D.J.; Kockelman, K. Preparing a nation for autonomous vehicles: Opportunities, barriers and policy recommendations. Transp. Res. Part A Policy Pract. 2015, 77, 167–181. [Google Scholar] [CrossRef]
  120. Diamond, D. The impact of government incentives for hybrid-electric vehicles: Evidence from US states. Energy Policy 2009, 37, 972–983. [Google Scholar] [CrossRef]
  121. Dong, B.; Ikonnikova, I.; Rogulin, R.; Sakulyeva, T.; Mikhaylov, A. Environmental-economic approach to optimization of transport communication in megacities. J. Environ. Sci. Health Part A 2021, 56, 660–666. [Google Scholar] [CrossRef]
  122. Pojani, D.; Stead, D. Sustainable urban transport in the developing world: Beyond megacities. Sustainability 2015, 7, 7784–7805. [Google Scholar] [CrossRef]
  123. Dieleman, F.; Wegener, M. Compact city and urban sprawl. Built Environ. 2004, 30, 308–323. [Google Scholar] [CrossRef]
  124. Crane, R.; Chatman, D.G. Traffic and Sprawl: Evidence from US Commuting, 1985 to 1997; University of California: Los Angeles, CA, USA, 2017. [Google Scholar]
  125. Al-Buenain, A.; Al-Muhannadi, S.; Falamarzi, M.; Kutty, A.A.; Kucukvar, M.; Onat, N.C. The adoption of electric vehicles in qatar can contribute to net carbon emission reduction but requires strong government incentives. Vehicles 2021, 3, 618–635. [Google Scholar] [CrossRef]
  126. Vega-Gonzalo, M.; Gomez, J.; Christidis, P. How Has COVID-19 Changed Private Car Use in European Urban Areas? An Analysis of the Effect of Socio-economic Characteristics and Mobility Habits. Transp. Res. Part A Policy Pract. 2023, 172, 103679. [Google Scholar] [CrossRef]
  127. Handy, S. Critical Assessment of the Literature on the Relationships Among Transportation, Land Use, and Physical Activity; Transportation Research Board: Washington, DC, USA, 2005; Volume 282, pp. 1–81. [Google Scholar]
  128. Anable, J. ‘Complacent car addicts’ or ‘aspiring environmentalists’? Identifying travel behaviour segments using attitude theory. Transp. Policy 2005, 12, 65–78. [Google Scholar] [CrossRef]
  129. Ben-Akiva, M.E.; Lerman, S.R.; Lerman, S.R. Discrete Choice Analysis: Theory and Application to Travel Demand; MIT Press: Cambridge, MA, USA, 1985; Volume 9. [Google Scholar]
  130. Hensher, D.A.; Dalvi, Q. Determinants of Travel Choice; Saxon House: Farnborough, UK, 1978. [Google Scholar]
  131. Lucas, K.; Jones, P. The Car in British Society; RAC Foundation: London, UK, 2009. [Google Scholar]
  132. Jackson, T. Motivating sustainable consumption. Sustain. Dev. Res. Netw. 2005, 29, 30–40. [Google Scholar]
  133. Gärling, T. Behavioural assumptions overlooked in travel choice modelling. In Travel Behaviour Research: Updating the State of Play; Pergamon Press: Oxford, UK, 1998; pp. 3–18. [Google Scholar]
  134. Stradling, S.; Meadows, M.; Beatty, S. Who will reduce their car use–and who will not? In Proceedings of the International Conference on Traffic Psychology ICTTP 2000, Berne, Switzerland, 4–7 September 2000; Elsevier: Amsterdam, The Netherlands, 2004; pp. 459–467. [Google Scholar]
  135. Bem, D.J. Self-perception theory. In Advances in Experimental Social Psychology; Elsevier: Amsterdam, The Netherlands, 1972; Volume 6, pp. 1–62. [Google Scholar]
  136. Bandura, A.; Walters, R.H. Social Learning Theory; Routledge: London, UK, 1977; Volume 1. [Google Scholar]
  137. Ajzen, I. The Theory of Planned Behavior. Organ. Behav. Hum. Decis. Process. 1991, 50, 179–211. [Google Scholar] [CrossRef]
  138. Bandura, A. Social cognitive theory: An agentic perspective. Annu. Rev. Psychol. 2001, 52, 1–26. [Google Scholar] [CrossRef] [PubMed]
  139. Cropanzano, R.; Mitchell, M.S. Social exchange theory: An interdisciplinary review. J. Manag. 2005, 31, 874–900. [Google Scholar] [CrossRef]
  140. Steg, L. Car use: Lust and must. Instrumental, symbolic and affective motives for car use. Transp. Res. Part A Policy Pract. 2005, 39, 147–162. [Google Scholar] [CrossRef]
  141. Gardner, B.; Abraham, C. Psychological correlates of car use: A meta-analysis. Transp. Res. Part F Traffic Psychol. Behav. 2008, 11, 300–311. [Google Scholar] [CrossRef]
  142. Bamberg, S.; Schmidt, P. Incentives, morality, or habit? Predicting students’ car use for university routes with the models of Ajzen, Schwartz, and Triandis. Environ. Behav. 2003, 35, 264–285. [Google Scholar] [CrossRef]
  143. Zhu, C.; Zhu, Y.; Lu, R.; He, R.; Xia, Z. Perceptions and aspirations for car ownership among Chinese students attending two universities in the Yangtze Delta, China. J. Transp. Geogr. 2012, 24, 315–323. [Google Scholar] [CrossRef]
  144. Belgiawan, P.F.; Schmöcker, J.D.; Fujii, S. Understanding car ownership motivations among Indonesian students. Int. J. Sustain. Transp. 2016, 10, 295–307. [Google Scholar] [CrossRef]
  145. Luke, R. Car ownership perceptions and intentions amongst South African students. J. Transp. Geogr. 2018, 66, 135–143. [Google Scholar] [CrossRef]
  146. Verma, M.; Manoj, M.; Verma, A. Analysis of the influences of attitudinal factors on car ownership decisions among urban young adults in a developing country like India. Transp. Res. Part F Traffic Psychol. Behav. 2016, 42, 90–103. [Google Scholar] [CrossRef]
  147. Pojani, E.; Van Acker, V.; Pojani, D. Cars as a status symbol: Youth attitudes toward sustainable transport in a post-socialist city. Transp. Res. Part F Traffic Psychol. Behav. 2018, 58, 210–227. [Google Scholar] [CrossRef]
  148. Van, H.T.; Fujii, S. A cross Asian country analysis in attitudes toward car and public transport. In Proceedings of the 9th International Conference of Eastern Asia Society for Transportation Studies, Jeju, Republic of Korea, 20–23 June 2011; Volume 8, p. 87. [Google Scholar]
  149. Belgiawan, P.F.; Schmöcker, J.D.; Abou-Zeid, M.; Walker, J.; Lee, T.C.; Ettema, D.F.; Fujii, S. Car ownership motivations among undergraduate students in China, Indonesia, Japan, Lebanon, Netherlands, Taiwan, and USA. Transportation 2014, 41, 1227–1244. [Google Scholar] [CrossRef]
  150. Beirão, G.; Cabral, J.S. Understanding attitudes towards public transport and private car: A qualitative study. Transp. Policy 2007, 14, 478–489. [Google Scholar] [CrossRef]
  151. Wright, C.; Egan, J. De-marketing the car. Transp. Policy 2000, 7, 287–294. [Google Scholar] [CrossRef]
  152. Maslow, A.H. The instinctoid nature of basic needs. J. Personal. 1954, 22, 326–347. [Google Scholar] [CrossRef]
  153. Sheller, M. Automotive emotions: Feeling the car. Theory, Cult. Soc. 2004, 21, 221–242. [Google Scholar] [CrossRef]
  154. Li, S.A.; Guan, X.; Wang, D. How do constrained car ownership and car use influence travel and life satisfaction? Transp. Res. Part A Policy Pract. 2022, 155, 202–218. [Google Scholar] [CrossRef]
  155. Dittmar, H. The Social Psychology of Material Possessions: To Have Is to Be; Palgrave MacMillan: London, UK, 1992. [Google Scholar]
  156. Steg, L.; Vlek, C.; Slotegraaf, G. Instrumental-reasoned and symbolic-affective motives for using a motor car. Transp. Res. Part F Traffic Psychol. Behav. 2001, 4, 151–169. [Google Scholar] [CrossRef]
  157. Gatersleben, B. Affective and symbolic aspects of car use. In Threats From Car Traffic to the Quality of Urban Life; Emerald Group: Bradford, UK, 2007. [Google Scholar]
  158. Bergstad, C.J.; Gamble, A.; Hagman, O.; Polk, M.; Gärling, T.; Olsson, L.E. Affective–symbolic and instrumental–independence psychological motives mediating effects of socio-demographic variables on daily car use. J. Transp. Geogr. 2011, 19, 33–38. [Google Scholar] [CrossRef]
  159. Cialdini, R.B.; Kallgren, C.A.; Reno, R.R. A focus theory of normative conduct: A theoretical refinement and reevaluation of the role of norms in human behavior. In Advances in Experimental Social Psychology; Elsevier: Amsterdam, The Netherlands, 1991; Volume 24, pp. 201–234. [Google Scholar]
  160. Weinberger, R.; Goetzke, F. Unpacking preference: How previous experience affects auto ownership in the United States. Urban Stud. 2010, 47, 2111–2128. [Google Scholar] [CrossRef]
  161. Weinberger, R.; Goetzke, F. Drivers of auto ownership: The role of past experience and peer pressure. In Auto Motives; Emerald Group: Bradford, UK, 2011. [Google Scholar]
  162. Ibrahim, M.F. Car ownership and attitudes towards transport modes for shopping purposes in Singapore. Transportation 2003, 30, 435–457. [Google Scholar] [CrossRef]
  163. He, S.Y.; Thøgersen, J. The impact of attitudes and perceptions on travel mode choice and car ownership in a Chinese megacity: The case of Guangzhou. Res. Transp. Econ. 2017, 62, 57–67. [Google Scholar] [CrossRef]
  164. Cullinane, S.; Cullinane, K. Car dependence in a public transport dominated city: Evidence from Hong Kong. Transp. Res. Part D Transp. Environ. 2003, 8, 129–138. [Google Scholar] [CrossRef]
  165. Jarvis, H. The tangled webs we weave: Household strategies to co-ordinate home and work. Work. Employ. Soc. 1999, 13, 225–247. [Google Scholar] [CrossRef]
  166. Jarvis, H. Dispelling the myth that preference makes practice in residential location and transport behaviour. Hous. Stud. 2003, 18, 587–606. [Google Scholar] [CrossRef]
  167. Jarvis, H. Moving to London time: Household co-ordination and the infrastructure of everyday life. Time Soc. 2005, 14, 133–154. [Google Scholar] [CrossRef]
  168. Summala, H. Towards understanding motivational and emotional factors in driver behaviour: Comfort through satisficing. In Modelling Driver Behaviour in Automotive Environments; Springer: Berlin/Heidelberg, Germany, 2007; pp. 189–207. [Google Scholar]
  169. Roth, W.T. Physiological markers for anxiety: Panic disorder and phobias. Int. J. Psychophysiol. 2005, 58, 190–198. [Google Scholar] [CrossRef] [PubMed]
  170. Lucas, K. Actual and perceived car dependence: Likely implications of enforced reductions in car use for livelihoods, lifestyles, and well-being. Transp. Res. Rec. 2009, 2118, 8–15. [Google Scholar] [CrossRef]
  171. Feltes, T. Public safety and public spaces: The citizen’s fear of strangers. In Proceedings of the European Conference of Ministers of Transport, Washington, DC, USA, 29 September–1 October 2003; Volume 123. [Google Scholar]
  172. Thomas, J.A.P.K. The Social Environment of Public Transport. Ph.D. Thesis, Victoria University of Wellington, Wellington, New Zealand, 2009. [Google Scholar]
  173. Corlătianu, M.; Măirean, C.; Maftei, A. PTSD symptoms, driving stress, and anxious driving behavior among novice drivers. Psihologija 2023, 56, 415–430. [Google Scholar] [CrossRef]
Figure 1. PRISMA flow diagram of the study selection process.
Figure 1. PRISMA flow diagram of the study selection process.
Sustainability 16 02479 g001
Figure 2. Hierarchical tree diagram for drivers of driving. The factors that have a generally positive association with driving propensity are represented in red, and those that have a generally negative association are depicted in blue.
Figure 2. Hierarchical tree diagram for drivers of driving. The factors that have a generally positive association with driving propensity are represented in red, and those that have a generally negative association are depicted in blue.
Sustainability 16 02479 g002
Table 1. Keywords and subject headings for literature search on car ownership and usage patterns.
Table 1. Keywords and subject headings for literature search on car ownership and usage patterns.
CategoryKeywords and Subject Headings
General termsCar ownership, vehicle ownership, automobile dependence, driving propensity, car usage, vehicle-use patterns, motor vehicle trends, auto mobility
Economic factorsCost of car ownership, vehicle maintenance costs, fuel prices, car affordability, transportation economics, ownership cost analysis, vehicle insurance costs, vehicle financing, economic impact of car ownership
Environmental factorsEnvironmental impact of cars, CO2 emissions from vehicles, urban pollution and cars, sustainable transportation, eco-friendly vehicles, vehicle emissions, climate change and automobiles, green vehicles, electric car environmental impact
Demographic factorsAge and car usage, gender differences in driving, socioeconomic status and vehicle ownership, family structure and car needs, demographic trends in car ownership, youth and vehicles, elderly driving patterns, income level and car use
Built environment factorsUrban design and car use, walkability and driving patterns, neighborhood design and vehicle usage, transit-oriented development, land-use mix, street connectivity, built environment and sustainable mobility, urban density and car use, accessibility and car dependence
Psychological aspectsPsychological drivers of car use, car as a status symbol, emotional attachment to cars, convenience and independence, perception of car ownership, motivation for car use, car and identity, psychological effects of driving, vehicle choice psychology
Social and behavioralAttitudes toward car ownership, behavioral economics of driving, sociocultural influences on car usage, transportation behavior, travel behavior, social norms in driving, lifestyle and car usage, personal transportation choices, mobility behavior
Urban planningUrban sprawl and car use, public transport accessibility, city planning and vehicle use, traffic congestion, parking availability, urban transport planning, land use and transportation, public transit development, urbanization and car use
Policy and legislationTransportation policy, emission regulations, car taxation, urban mobility policies, public transportation funding, transport regulations, environmental policy for vehicles, infrastructure policy, urban transport governance
Technological advancesElectric vehicles, hybrid cars, autonomous vehicles, car sharing, ride-hailing services, vehicle technology innovation, smart cars, connectivity and automobiles, future of automotive technology
Health and safetyRoad safety, health risks of car usage, traffic accidents, active transportation, pedestrian-friendly planning, driver safety, vehicle-related injuries, health impacts of driving, traffic safety measures
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content.

Share and Cite

MDPI and ACS Style

Feyzollahi, M.; Pineau, P.-O.; Rafizadeh, N. Drivers of Driving: A Review. Sustainability 2024, 16, 2479. https://doi.org/10.3390/su16062479

AMA Style

Feyzollahi M, Pineau P-O, Rafizadeh N. Drivers of Driving: A Review. Sustainability. 2024; 16(6):2479. https://doi.org/10.3390/su16062479

Chicago/Turabian Style

Feyzollahi, Maryam, Pierre-Olivier Pineau, and Nima Rafizadeh. 2024. "Drivers of Driving: A Review" Sustainability 16, no. 6: 2479. https://doi.org/10.3390/su16062479

APA Style

Feyzollahi, M., Pineau, P. -O., & Rafizadeh, N. (2024). Drivers of Driving: A Review. Sustainability, 16(6), 2479. https://doi.org/10.3390/su16062479

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop