Drivers of Driving: A Review
Abstract
:1. Introduction
1.1. Global Trends in Car Ownership and Usage
1.2. Negative Impacts of Excessive Car Use
1.3. Research Aims and Scope
2. Review Methodology
2.1. Identification of Relevant Sources
2.2. Development of Search Strategies
2.3. Inclusion and Exclusion 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.
2.4. Screening and Study Selection
3. Analysis of Driving Determinants
3.1. Built Environment Attributes
3.2. Economic Factors
3.2.1. Socioeconomic Characteristics
3.2.2. Cost of Cars
3.2.3. Government Policies
3.3. Psychological Factors
3.3.1. The Prevalent Theories
3.3.2. Attitudes toward Car Ownership/Usage
4. Summary and Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A. Description of Reviewed Articles
Paper | Location | Temporality | Objectives | Methods | Main Findings |
---|---|---|---|---|---|
Nielsen et al. [31] | Denmark | 2009–2011 | Examine cycling’s environmental correlates | Danish travel survey, urban data analysis, and statistical modeling | Density, connectivity, and access to services boost cycling. |
Sun et al. [32] | Shanghai, China | 2009 | Investigate built environment’s impact on commuting | Copula-based model and survey in parks | Residential characteristics impact commuting more than job sites; more jobs in residential areas increase driving likelihood. |
Yin and Sun [33] | China | 2012 | Investigate built environment’s impact on car ownership | Multilevel logistic regression on CLDS data | City and neighborhood environment influences car ownership; higher density and metro availability reduce it, while land-use diversity might increase it. |
Yang et al. [34] | China | 2010 | Examine built environment’s influence on commuting mode choice among car owners | Household travel survey and multilevel discrete choice model | Built environment factors significantly influence commuting choices, with notable spatial variation. |
Cervero and Kockelman [35] | San Francisco, USA | 1990–1991 | Study impact of density, diversity, and design on travel demand | Factor analysis and regression modeling of travel diary data | Compact, mixed-use, pedestrian-friendly neighborhoods reduce driving and encourage walking, cycling, and transit use, though the impacts are modest. |
Ewing and Cervero [36] | USA | 1990 | Synthesize findings on how density, diversity, and design influence travel | Literature review, meta-analysis, and elasticity calculations | Density, land-use diversity, and pedestrian-oriented design reduce car trips and distances; impacts are modest but cumulatively significant. |
Ewing and Cervero [37] | Mainly USA | Up to 2009 | Meta-analysis of built environment effects on travel | Literature review, meta-analysis, and weighted average elasticities | Destination accessibility most strongly related to VMT, walking, and transit use. Density has weakest association with travel behavior. |
Li and Zhao [38] | Beijing, China | 2015 | Explore car ownership and use near metro stations | Travel survey, GIS analysis, and regression modeling | Land-use mix, mall proximity, and attitudes impact car ownership and VKT; metro proximity has limited effect. |
Ding and Cao [39] | Washington, USA | 2007–2008 | Examine how built environment at residential and work locations affects car ownership | Bayesian cross-classified multilevel ordered probit model | Density, 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, USA | 1997–1998 | Assess density’s role in mode choice for home-based work tours, controlling for confounding factors | Household travel survey and simultaneous equations modeling of car ownership and propensity for auto use | Employment 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, China | 2010–2011 | Examine car ownership and commuting mode choice in rail-transit-supported suburbs | Household travel surveys in 4 neighborhoods, binary logit model of car ownership, and nested logit model of commute mode choice | Rail 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, USA | 2001 | Investigate the influence of built environment on travel mode choice considering the mediating effects of car ownership and travel distance | Integrated structural equation modeling (SEM) and discrete choice modeling (DCM) using 2001 National Household Travel Survey (NHTS) data | Higher 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, USA | 2000 | Model residential sorting effects in assessing built environment impacts on car ownership | Joint model of residential location choice and car ownership using a mixed multinomial logit-ordered response structure | Built environment attributes affect residential choice and car ownership; self-selection effects are important to consider. |
Brownstone and Golob [44] | California, USA | 2001 | Measure the relationship between residential density, household vehicle use and fuel consumption | Joint model of residential density, vehicle use, and fuel consumption, accounting for self-selection and missing data | A 40% lower density implies 4.8% more annual mileage and 5.5% more fuel consumption per household. |
Bartholomew and Ewing [45] | USA | Various | Evaluate effectiveness of scenario planning for compact growth | Meta-analysis of 85 scenarios from 23 studies in 18 metro areas | Compact growth scenarios reduce VMT in 2050 by 17% vs. trend scenarios on average. |
Leck [46] | USA | 1990–2005 | Assess the impact of density, land-use mix, and street configuration on travel while resolving contradictory findings | Meta-analysis of 17 empirical studies | Density and land-use mix have significant effects on travel behavior; street configuration does not. |
Boussauw et al. [47] | Flanders, Belgium | 2010 | Examine compact city impacts on commuting distance | Analysis of spatial proximity measures and reported commuting distances | High density, diversity, and job access reduce resident commutes; jobs–housing balance near 1 reduces commutes overall. |
Potoglou and Kanaroglou [48] | Hamilton, Canada | 2005 | Explore the influence of urban form and sociodemographics on household car ownership levels | Multinomial logit model of household survey data with GIS-derived urban form measures | Higher density, land-use mix, and transit access are associated with lower car ownership, after controlling for sociodemographics. |
Zegras [49] | Santiago de Chile, Chile | N/A | Analyze built environment’s influence on motor vehicle ownership and use | Econometric models using 2001 household survey and land-use data | Income majorly influences vehicle ownership and use; built environment characteristics moderately impact vehicle kilometers traveled and ownership likelihood. |
Jiang et al. [50] | Jinan, China | 2014 | Examine land-use and street effects on car ownership and use | Household travel survey, GIS data, factor analysis, and two-step modeling | Job–housing balance, land-use mix, neighborhood permeability, parking, and BRT access impact car ownership and use. |
Frank et al. [51] | USA | N/A | Develop a walkability index and test its validity | GIS analysis, census data, and travel surveys | The 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, Australia | 1999 | Explore built environment impacts on vehicle ownership | Logistic regression modeling using household travel survey and land-use data | Higher density and land-use mix are associated with lower levels of vehicle ownership. |
Vuchic [53] | N/A | N/A | Classify and describe urban transit modes | Explanatory review | Transit 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, China | 2012 | Investigate built environment and parking availability impacts on car ownership and use | Household travel survey, GIS data, and binary logistic regression | Built 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] | USA | 1990 | Investigate how residential density affects household vehicle ownership and use | 1990 Nationwide Personal Transportation Survey data analysis and multivariate regression modeling | A 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] | USA | 1990 | Examine how urban spatial structure affects household travel demand | NPTS household survey data analysis and vehicle ownership and use modeling | Population 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, China | 2005–2006 | Explore urban form’s influence on car ownership across Chinese megacities | Household surveys, OLS regression, and binary logit models | Urban affluence, scale, and road supply positively affect car ownership; high population density suppresses it. |
Chatman [58] | New Jersey, USA | 2013 | Assess factors beyond rail access affecting auto use near TODs | Survey of households near rail stations and analysis of parking | Housing type, tenure, density, and bus service and parking availability impact auto use more than rail access. |
Kim and Kim [59] | USA | 2003 | Predict effects of transit access on auto ownership and use | Ordered logit model for auto ownership and regression for VMT | Licensed drivers are the main factor in auto ownership; transit access reduces VMT more for multi-vehicle households. |
Chatman [60] | California, USA | 2003–2004 | Examine how different aspects of development density influence household travel | Original travel survey data analysis and count and Tobit regression modeling | Network 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, USA | 2011 | Investigate LRT, neighborhood design, and self-selection’s impact on auto ownership | Survey, statistical control, and quasi-longitudinal design | Neighborhood design significantly affects auto ownership; LRT impact is indirect through neighborhood characteristics and resident self-selection. |
Cervero and Murakami [63] | USA | 2003 | Examine built environments’ impact on vehicle miles traveled (VMT) | Structural equation modeling using data from 370 urbanized areas | High population densities are associated with reduced VMT; however, dense road infrastructure and retail access moderate these effects. |
Combs and Rodríguez [64] | Bogotá, Colombia | 1995–2005 | Analyze BRT’s impact on vehicle ownership | Quasi-longitudinal analysis using difference-in-differences | BRT access reduces car ownership for wealthy households; effect depends on built environment for poor households. |
Doddamani and Manoj [65] | Hubli-Dharwad, India | 2018–2019 | Investigate built environment influences on car and motorcycle ownership | Cross-sectional analysis using ordered logistic regression | Built environment effects vary by vehicle type and city; subjective measures, like cleanliness and women-/child-friendliness, impact ownership. |
Weinberger et al. [66] | New York, USA | 2012 | Examine impacts of residential parking requirements on auto ownership and use | Analysis of parking requirements and vehicle ownership/use data | Parking requirements encourage car ownership and use, undermining sustainability and congestion reduction goals. |
Weinberger et al. [67] | New York, USA | 2009 | Examine the impact of residential off-street parking on car ownership, vehicle miles traveled, and carbon emissions | Analysis of demographics, highway and transit access, and off-street parking in two NYC neighborhoods; plausible development scenario testing | Off-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, USA | 1998–2010 | Examine residential parking’s effect on household car ownership | Nested logit modeling of car ownership with parking supply variables from online images | Parking supply strongly influences car ownership, even outperforming income and demographics; garage, driveway, and street parking have differential effects. |
Guo [69] | New York, USA | 2012 | Examine impact of street parking on car ownership for households with off-street parking | Measure on-/off-street parking via Google Street View/Bing Maps and multivariate modeling | Free street parking increases car ownership by 9% for households with off-street parking. |
Christiansen et al. [70] | Norway | 2013–2014 | Analyze impacts of home parking on car ownership and use | Norwegian travel survey with in-depth parking questions and statistical analysis | Access to private parking triples car ownership odds. Longer home–parking distance reduces the car share. |
Sobhani et al. [71] | Bangladesh | 2017 | Analyze impacts of socioeconomic factors on parking demand in developing cities | Field surveys of parking in Dhaka and multiple linear regression modeling | Floor space, household rent, population density, literacy rate, etc., significantly affect parking demand for various land uses. |
Van Eenoo et al. [72] | Belgium | 2019–2020 | Test if urban residents are multimodal and feel car dependent | Cluster analysis of survey on car use, bike use, VKT, and perceived car dependence in Flanders | Four 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] | Britain | 1978–1993 | Analyze relationships between land use, socioeconomic factors, and travel patterns | Regression analysis of national and local travel survey data | Socioeconomics 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, China | 2015 | Cluster human activity patterns using a Markov-chain-based mixture model | Nanjing household travel survey, Markov-chain-based mixture model, and logistic regression | Identified 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, China | 2019 | Analyze nonlinear effects of land use and motorcycles/E-bikes on car ownership | Gradient boosting decision trees model with travel survey data | Income 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, Sweden | 1971 (5 weeks) | Analyze relationships between sociodemographics and multidimensional travel patterns | Principal components analysis and regression on individual travel diaries | Both socioeconomic status and household roles significantly explain travel dimensions, but differently for each. Role variables are particularly important. |
Pas [77] | N/A | 1983 | Examine influence of sociodemographics on daily travel behavior | Classification of travel patterns and parametric models of contingency tables | Role, life-cycle, and lifestyle attributes significantly influence daily travel; segments have different likelihoods of travel patterns. |
Bhat and Koppelman [78] | Conceptual | N/A | Develop a conceptual framework of individual activity program generation | Synthesis of theories from multiple disciplines | Framework with four interrelated modules: household needs, auto ownership, activity allocation, and individual activity programming. Subsistence work hours and leisure are endogenous. |
Sarmiento [79] | N/A | 1987 | Discuss household circumstances and gender differences in travel constraints | Literature review and synthesis | Travel demand management overlooks household composition, gender roles, and complex constraints, limiting behavior change effectiveness. |
McGuckin and Murakami [80] | USA | 1995 | Compare trip-chaining behavior between men and women | Descriptive analysis of 1995 Nationwide Personal Transportation Survey data | Women, 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] | Various | Various | Review and analyze empirical literature on travel time and money budgets | Literature review and synthesis | Travel 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, Canada | 2003 | Analyze effects of neighborhood characteristics, accessibility, home–work distance, and demographics on commuting distances | Factor cluster analysis of neighborhood types and simultaneous equation modeling of trip distance | Home–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 Netherlands | 2004–2009 | Analyze impact of fuel price on activity travel time expenditure | Dutch travel survey data and seemingly unrelated regression analysis | Fuel price negatively correlated with car travel time, which differs between weekdays and weekends. |
Kotval-K and Vojnovic [84] | Detroit, USA | 2007–2008 | Explore socioeconomic impacts on travel and environmental burdens | Detroit region travel survey and ordinary least squares regression | Higher incomes associated with more car travel and emissions across neighborhood types. |
Li et al. [85] | Shenyang, China | 2015 | Examine socioeconomic factors affecting low-carbon and non-low-carbon travel modes for shopping | Questionnaire surveys and binary logistic regression modeling | Car ownership, gender, and income significantly impact travel mode choice for shopping trips. |
Wu et al. [86] | Xi’an, China | 1997 | Explore psychological and sociological factors in household vehicle ownership | Survey, LISREL model, and multinomial logit model | Attitudes 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, Greece | 1996 | Investigate the relationship between traffic parameters and automobile ownership/autolessness | Detailed local travel survey, Poisson regression for ownership, and binary logit model for autolessness | Traffic 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, Iran | 2016 | Investigate impact of urban form and socioeconomic factors on vehicle ownership using discrete choice modeling | Household travel survey, GIS analysis of urban form measures, and nested logit model | Land-use mix, distance to work, housing type, household size, and income influence car ownership levels. |
Kumar and Krishna Rao [89] | Mumbai, India | N/A | Model car ownership using stated preference data | Stated preference experiment and multinomial logit models of car ownership | Models show good fit; stated preference approach is effective for modeling car ownership in developing countries. |
Mokonyama and Venter [90] | South Africa | 2002 | Forecast household car ownership using alternative models | Household travel survey data and category analysis model based on income and dwelling type | Car ownership increases with income and varies by housing type; large growth potential in disadvantaged areas. |
Salon and Aligula [91] | Nairobi, Kenya | 2004 | Analyze urban travel behaviors, focusing on the implications for transport policy | Household travel survey analysis and multinomial logit models | Lack 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, Nigeria | 2016 | Investigate factors influencing car ownership | Household survey and multinomial logit model | Increased income and smaller households lead to higher car ownership, with sensitivity to income changes. |
Rosier and McDonald [93] | Australia | 2011 | Examine transport disadvantages in Australia | Literature review | Transport disadvantages more common in low-income, outer-urban, rural/remote areas, and for young families, Indigenous people, and people with disabilities. |
Mattioli [94] | Great Britain | 2002–2010 | Examine car dependence and carless households | Analysis of National Travel Survey data | In car-dependent areas, carless households are more concentrated among disadvantaged groups and have lower mobility levels compared with car-owning households. |
Kermanshah [95] | Mashhad, Iran | 1994 | Model household car ownership using disaggregated approach | Two-level nested logit model based on household socioeconomic and demographic data | Household 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, USA | 1993–1996 | Analyze household vehicle transaction behavior | Panel survey and competing risks duration model | Transaction type affects future transactions; household changes influence vehicle decisions. |
Bhat and Koppelman [97] | The Netherlands | 1984–1988 | Jointly model employment, income, and car ownership | Simultaneous equation system of endogenous switching | Wife’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 Britain | 1985–2000 | Examine children’s increasing car travel and dependency | Analysis of National Travel Survey data | Children’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, Spain | 2001 | Analyze effect of job accessibility on car ownership | Ordered probit model with job access by public transport | Higher job access significantly reduces the probability of owning cars; elasticities of and for Barcelona and Madrid. |
Srinivasan et al. [100] | Chennai, India | 1999–2004 | Examine mobility and travel pattern changes | Retrospective household survey combined with ordinal response and multinomial logit models | Increases 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] | Germany | 1994–2008 | Examine gendered travel mode choice in car-deficient households | Regression modeling of German Mobility Panel data | In 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 Netherlands | 2011 | Examine effect of car drivers’ characteristics on maximum acceptable walking distance to destinations | Survey of University Parking Panel and multinomial regression | Frequency 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] | Various | 2016 | Explore travel behavior impacts of aging populations | Literature review on older adult travel patterns, influencing factors, and alternatives to driving | Aging poses transport challenges; need accessible, safe mobility options via infrastructure, services, and land use, considering new older cohort behaviors. |
Zhou and Wang [104] | Beijing, China | 2016 | Examine generational differences in car attitudes and attitude–behavior links | Travel survey and multiple-group structural equation modeling | Young adults have less favorable attitudes toward cars and weaker attitude–behavior associations compared with older generations. |
Acheampong and Siiba [105] | Ghana | 2019 | Model factors influencing car-sharing adoption intentions | Survey of young adults and structural equation modeling | Perceived benefits, previous Uber experience, and pro-environmental attitudes positively influence car-sharing intentions, while dissatisfaction with transit also underpins them. |
Wheatley [106] | Nottingham, England | 2006 | Explore conflicts between work–life balance, flexible working, and travel-to-work policies | Case study with interviews and surveys | Professional 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, Utah | 2010 | Assess transportation needs of low-mobility individuals (elderly, disabled, low-income) | In-person interviews and mail surveys on travel patterns, social networks, and transit access | Private 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 Netherlands | 2001 | Compare the attractiveness and importance of car vs. public transport | Survey of Dutch residents | The 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 Britain | 2001–2031 | Model and forecast car ownership at disaggregated household level | Discrete choice models of car ownership level as function of household and area attributes and costs; application via prototypical sampling | Models match 2001 ownership well; forecast 42% increase in cars to 36.4 M and 1.24 cars/household by 2031. |
Andor et al. [110] | Germany | 2018 | Assess consumer understanding of total car ownership costs | Survey of 6000+ citizens, comparison with actual costs, and analysis of public transport preference changes | Consumers underestimate car ownership costs by ∼50%, impacting public transport preferences and potential car ownership reduction. |
Gössling et al. [111] | Germany | 2020 | Evaluate the full private and social costs of car ownership | Assessment of private and social cost items for three car models | Total 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 Netherlands | 2000–2016 | Explore the impact of residential parking costs on car ownership | Transaction data on houses, household survey, and MNL model | Residential parking costs significantly reduce car ownership; the elasticity of car demand is about . |
Wilson [113] | Los Angeles, USA | 1986 | Assess the impact of employer-paid parking on commute mode choice and parking demand | Multinomial logit model and downtown Los Angeles commuter survey | Employer-paid parking significantly increases solo driving. Removing subsidies could reduce cars driven to work by 25–34% |
Hess [114] | Portland, USA | 1994 | Assess the effect of free parking on commuter mode choice | Household activity survey and multinomial logit model | Free parking increases solo driving. Charging for parking could reduce cars driven by 21% per 100 commuters, impacting VMT significantly. |
Khordagui [115] | California, USA | 2012 | Investigate the impact of parking prices on commute mode choice | California Household Travel Survey and discrete choice model | A 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, USA | 2020 | Examine the effects of parking prices and availability on mode choice and urban form | Literature review and policy analysis | Parking 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] | Global | 2006 | Identify sustainable transportation issues | Literature review and policy analysis | Explores definitions, goals, and methods for sustainable transportation, emphasizing the need for comprehensive planning, equity, and integrated solutions. |
Fagnant and Kockelman [119] | USA | 2015 | Evaluate autonomous vehicles’ impacts, barriers, and policy recommendations | Literature review and benefit–cost analysis | AVs 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] | USA | 2001–2006 | Analyze the impacts of government incentives on hybrid vehicle adoption | Cross-sectional analysis, hybrid registration data, and socioeconomic and policy variables | Gasoline prices significantly influence hybrid adoption, while the relationship between incentives and adoption is weak. |
Dong et al. [121] | Global | 2021 | Optimize transport communication in megacities via environmental–economic approaches | Multi-criteria optimization, Pareto efficiency, mathematical models, and statistical analysis | Identified 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 countries | 2015 | Assess sustainable urban transport beyond megacities | Literature review and policy analysis | Smaller 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 Netherlands | 1966–2004 | Examine urban form and sprawl containment | National spatial planning, policy analysis, and urban growth management | Policies effectively directed growth to designated areas, promoting compact urban development and preserving open spaces. |
Crane and Chatman [124] | USA | 1985–1997 | Examine the impact of employment decentralization (sprawl) on commuting | Panel regression of commute distance on metro employment deconcentration measures from American Housing Survey data | Greater employment suburbanization associated with shorter average commutes overall, but varies by industry; wage and cost endogeneity addressed. |
Al-Buenain et al. [125] | Qatar | 2021 | Assess EV adoption’s environmental benefits | Well-to-wheel LCA and survey | EVs have lower emissions than gasoline vehicles; strong government incentives required for widespread adoption. |
Vega-Gonzalo et al. [126] | European urban areas | 2021 | Analyze COVID-19’s impact on car use | EU-wide Urban Mobility Survey and path analysis | COVID-19 increased car use among lower-car-dependency groups, with high-income teleworkers reducing car use the most. |
Handy [127] | USA | 2004 | Assess relationships among transportation, land use, and physical activity | Literature review and theory synthesis | Identifies 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 UK | 2004 | Identify travel behavior segments using attitude theory | Mail-back survey and factor and cluster analyses | Identified six psychographic groups varying in mode-switching potential, underscoring the need for targeted transport policies. |
Lucas and Jones [131] | UK | 1989–2009 | Investigate car ownership and use trends and understand car dependence | National Travel Survey analysis and literature review | Car 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/A | Up to 1998 | Critique microeconomic theory’s basis of travel choice modeling | Literature review and synthesis | Travel choice models should account for interdependencies, information biases, decision rules, social motives, and automaticity; current theory is overly simplistic. |
Bem [135] | N/A | Up to 1972 | Propose self-perception theory as alternative to cognitive dissonance theory | Conceptual analysis and review of empirical evidence | People 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] | Multiple | Up to 1991 | Review and address unresolved issues of the theory of planned behavior | Literature review and theoretical analysis | Empirical 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/A | N/A | Present an agentic perspective of social cognitive theory | Conceptual analysis and synthesis of research | Human 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] | Various | Up to 2004 | Review and clarify social exchange theory (SET) ambiguities | Literature review and theoretical analysis | Identified 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 Netherlands | 2004 | Explore instrumental, symbolic, and affective motives for car use | Questionnaire studies | Car 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] | Various | 2008 | Synthesize research on psychological correlates of car use | Meta-analysis | Supports 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, Germany | 1997 | Compare predictive power of the TPB, Triandis, and Schwartz models on car use for university commutes | Questionnaire and analysis of models | TPB 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, China | 2009 | Explore car ownership aspirations among university students | Survey and theory of planned behavior | High 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, Indonesia | 2016 | Understand car ownership motivations among Indonesian students | Survey, principal component analysis, and SEM | Independence, arrogant prestige, and income significantly influence car purchase decisions, with symbolic/affective motives also playing a role. |
Luke [145] | South Africa | 2015 | Investigate car ownership intentions among students | Survey and exploratory factor analysis | Students 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, India | 2016 | Analyze attitudinal factors influencing car ownership decisions among young adults | Survey 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, Albania | 2014 | Explore adolescents’ car ownership and use intentions | Survey 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 Philippines | 2005 | Explore attitudes toward cars and public transport across six Asian countries | Survey and principal component analysis | Identified 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 USA | 2013 | Explore car ownership intentions among students | Web survey on attitudes, social norms, and demographics | Students in developed countries show less desire to own cars; social expectations significantly influence car-purchasing intentions. |
Beirão and Cabral [150] | Porto, Portugal | 2007 | Explore attitudes toward public transport and car use | Qualitative study with in-depth interviews | To 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] | UK | 2000 | Explore potential for de-marketing car use to reduce traffic | Theoretical analysis and review of de-marketing concepts | Proposes 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/A | N/A | Explore the inherent nature of basic needs | Analysis of instinct theory errors, argumentation for basic needs’ hereditary nature, and proposal of new instinct hypothesis | Identifies 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] | Various | 2004 | Explore the emotional and cultural dimensions of car use | Theoretical analysis and literature review | Highlights 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, China | 2016 | Examine effects of constrained car ownership and use on travel and life satisfaction | Survey and structural equation modeling | Multiple 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 Netherlands | 2001 | Clarify symbolic–affective vs. instrumental-reasoned motives for car use | Similarity sorting, Q-sorting, and semantic differential method | Symbolic–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] | Sweden | 2007 | Investigate how affective–symbolic and instrumental–independence motives mediate sociodemographic effects on car use | Mail survey and principal component analysis | Affective–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] | Various | 1990 | Refine and evaluate the influence of norms on behavior | Field experiments and norm activation methods | Demonstrated 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] | USA | 2000 | Investigate how previous living environments affect auto ownership decisions | 2000 U.S. Census data and multinomial probit model | Residents 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] | Singapore | 2003 | Examine attitudes toward transport modes for shopping | Survey and perception analysis | Car 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, China | 2013 | Understand attitudes and perceptions affecting travel mode choice and car ownership intentions | Survey, factor analysis, SEM, and logistic regression | Car 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 Kong | 2001 | Examine reasons for car ownership and car dependence in a city with extensive public transport | Survey of 401 car owners | Despite 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] | UK | 1999 | Investigate household strategies for coordinating home and work | Qualitative interviews and thematic analysis | Households employ diverse strategies influenced by social and kin networks, with implications for mobility, employment structure, and place attachment. |
Jarvis [166] | West Coast U.S. cities | 2003 | Examine whether compact, mixed-use design reduces “wasteful” journeys | Qualitative household research in Portland, Seattle, and San Francisco | High 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, UK | 2005 | Explore the impact of urban living on household time coordination | In-depth biographies and thematic analysis | London’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] | Various | 2007 | Analyze motivational and emotional factors in driver behavior, focusing on “comfort through satisficing” | Theoretical analysis and review of literature on driver behavior models | Introduces 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] | Various | 2005 | Examine physiological markers for anxiety, focusing on panic disorder and phobias | Ambulatory study and physiological measurements | Concordance 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] | UK | 2005–2008 | Explore the nature and effects of car dependence | Literature review, NTS data analysis, interviews, and focus groups | Identified 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 Zealand | 2009 | Investigate social environment and interpersonal discomfort in public transport | Naturalistic observation, survey, and exploratory questionnaire | Public 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] | Romania | 2022 | Evaluate PTSD symptoms and stress’s influence on anxious driving among novice drivers | Survey, scales for PTSD symptoms, driving stress, and anxious driving behavior | Aggression, dislike of driving, thrill-seeking, and fatigue predict anxious driving behavior. Aggression increases hostile behavior, while dislike decreases it and increases performance deficits. |
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Category | Keywords and Subject Headings |
---|---|
General terms | Car ownership, vehicle ownership, automobile dependence, driving propensity, car usage, vehicle-use patterns, motor vehicle trends, auto mobility |
Economic factors | Cost 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 factors | Environmental 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 factors | Age 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 factors | Urban 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 aspects | Psychological 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 behavioral | Attitudes 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 planning | Urban 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 legislation | Transportation policy, emission regulations, car taxation, urban mobility policies, public transportation funding, transport regulations, environmental policy for vehicles, infrastructure policy, urban transport governance |
Technological advances | Electric vehicles, hybrid cars, autonomous vehicles, car sharing, ride-hailing services, vehicle technology innovation, smart cars, connectivity and automobiles, future of automotive technology |
Health and safety | Road 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 |
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Feyzollahi, M.; Pineau, P.-O.; Rafizadeh, N. Drivers of Driving: A Review. Sustainability 2024, 16, 2479. https://doi.org/10.3390/su16062479
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 StyleFeyzollahi, 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 StyleFeyzollahi, M., Pineau, P. -O., & Rafizadeh, N. (2024). Drivers of Driving: A Review. Sustainability, 16(6), 2479. https://doi.org/10.3390/su16062479