Personalization of the Car-Sharing Fleet Selected for Commuting to Work or for Educational Purposes—An Opportunity to Increase the Attractiveness of Systems in Smart Cities
Abstract
:1. Introduction
- Ride-sharing services, like those offered by Uber and Lyft, enable multiple passengers to share a single vehicle for their journeys, reducing the number of cars on the road and consequently lowering emissions and traffic congestion. These services are enhanced by sophisticated algorithms that optimize routes and match passengers traveling in the same direction, improving user efficiency and convenience [3].
- Bike-sharing systems provide an environmentally friendly and health-promoting alternative for short-distance travel. Users can pick up a bike from one station and drop it off at another, making it a flexible option for navigating urban environments [4]. This mode of transport not only reduces carbon emissions but also helps alleviate traffic congestion [4].
- Scooter-sharing has emerged as a popular option for short, spontaneous trips in many cities [5]. Electric scooters can be rented using mobile apps, offering a convenient and sustainable solution to last-mile connectivity [5]. These systems often complement public transportation by solving the problem of reaching destinations that are not accessible directly by bus or train [5].
- Car-sharing is a service that provides members with access to a fleet of vehicles on a short-term, as-needed basis [6]. Unlike traditional car rental services, which typically cater to longer rental periods and often involve visiting a rental location, car sharing is designed for short-term use, often measured in minutes or hours, and vehicles are typically located within local neighborhoods for easy access [6].
- A theoretical gap, stemming from a scarcity of detailed studies on the utility of car-sharing fleets and the selection of appropriate vehicles, coupled with a lack of clear definitions for fleet requirements and parameters;
- A methodological gap, characterized by the absence of standardized tools and methods for assessing the utility of car-sharing fleets;
- An empirical gap, related to insufficient research and observations on how societies perceive car-sharing vehicles;
- A practical gap due to the absence of tailored recommendations for car-sharing system operators.
- Systematizing knowledge concerning the operation of car-sharing systems within urban transportation networks, spanning technical, organizational, economic, and environmental aspects;
- Establishing indicators for the utilization of vehicle fleets in car-sharing systems,
- Elucidating the purposes for using car-sharing services and the criteria for segmenting customers of such systems;
- Formulating rules for calculating the overall utility of car attributes tailored to different customer segments of car-sharing services;
- Assessing the relative importance of attributes in customer decisions when choosing car-sharing services based on specific vehicles;
- Outlining the rules for the composition of vehicles in a car-sharing fleet;
- Developing recommendations for the selection of vehicle fleets for car-sharing.
2. Methods
Procedural Steps in the Methodology
- The business model under which the car-sharing operator functions;
- The operating model of the car-sharing service;
- The geographic areas where the car-sharing service operates;
- The pricing structure for vehicle rentals offered by the operator;
- The types of rentals available.
- EURO Car Segment, which categorizes vehicles into classes commonly used in Europe, such as passenger cars or vans, each designated for specific functions or characteristics [57],
- EURO NCAP class, which defines vehicle sizes based on assessments by the European New Car Assessment Programme (EURO NCAP), an independent non-profit organization focused on vehicle safety, supported by various entities and some European government bodies [58],
- US EPA Size Class, a system used predominantly in North America that categorizes vehicle sizes as defined by the Environmental Protection Agency (EPA), an independent U.S. federal agency charged with environmental protection [59],
- A common colloquial classification used within the car-sharing community likens vehicle sizes to clothing sizes, making it easier for users to identify vehicles without the need to understand specific automotive classifications.
- Wide geographic and demographic reach: CAWI enables access to a large number of geographically dispersed respondents, a feat challenging to achieve with traditional methods such as in-person or telephone interviews.
- Cost reduction: The CAWI method is more cost-effective than traditional survey methods. Cost savings arise from the elimination of the need for interviewers’ physical presence, travel expenses, and lower data processing costs due to electronic collection and processing of responses.
- Homogeneity and consistency of data: Online surveys ensure that all respondents receive questions in the same form and order, minimizing the risk of subjective errors by the interviewer in the formulation of questions and instructions.
- Speed of data collection and processing: Data are collected in real time, allowing immediate analysis and application in ongoing decisions. This method eliminates delays typically associated with manual data entry found in paper surveys.
- Increased response rates from specific demographic groups: Younger generations, who may find traditional research methods challenging, are more likely to participate in online surveys. This attribute makes CAWI particularly effective in researching new technologies or consumer trends, which is vital in studies on car-sharing services that leverage digital technologies.
- Anonymity and respondent comfort: Online surveys can be conducted anonymously, encouraging more honest responses, particularly on sensitive topics. Additionally, respondents can complete surveys at their convenience, enhancing their comfort and willingness to participate.
3. Results
3.1. Computational Stage for the Analyzed Case Study
3.2. Research Results for the Purpose of Using a Car-Sharing Vehicle for Commuting to Work or to a Place of Education
4. Discussion
4.1. Transferability of the Results to the Shared Mobility Market
4.2. Research Implications
- (1)
- Fleet Optimization:
- Expansion of the vehicle fleet to include a greater proportion of class D and E vehicles to accommodate user preferences for enhanced travel comfort and versatility.
- Strategic planning to ensure an adequate supply of larger vehicles during peak commuting hours to meet demand fluctuations effectively.
- (2)
- Flexible Pricing Strategies:
- Implementation of dynamic pricing mechanisms to align rental costs with user expectations, particularly in terms of per-kilometer pricing, ideally falling within the range of EUR 0.40 to EUR 0.60.
- Consideration of flexible pricing structures to offer competitive rates during peak demand periods, thereby enhancing service appeal and utilization.
- (3)
- Integration of Sustainable Mobility Solutions:
- Promotion of sustainability by increasing the deployment of hybrid and electric vehicles within car-sharing fleets, reflecting a growing consumer preference for eco-friendly transportation options.
- Investment in the expansion of electric vehicle charging infrastructure across smart city networks to facilitate widespread adoption and accessibility of environmentally conscious mobility alternatives.
- (4)
- Enhancement of Vehicle Features:
- Upgrading vehicle specifications to meet user expectations for comfort and convenience, including the integration of advanced technologies and amenities such as navigation systems and internet connectivity.
- Adoption of a user-centric approach to vehicle design and outfitting to ensure optimal user experience and satisfaction.
- (5)
- Educational Initiatives and Marketing:
- Implementation of educational campaigns to underscore the societal benefits of car-sharing in smart cities, emphasizing reductions in traffic congestion, carbon emissions, and transportation expenses.
- Promotion of a culture of resource sharing in transportation as a cornerstone of sustainable urban development, fostering increased public awareness and acceptance of car sharing as a viable mobility solution.
- (6)
- Policy implications:
- The emphasis on safety as the dominant issue among respondents emphasizes the need to introduce strict regulations and safety standards for car-sharing vehicles. Decision-makers should prioritize checking the technical condition of vehicles and require daily maintenance of vehicles to eliminate possible irregularities before using users’ cars. Ensuring that shared vehicle fleets meet high safety standards will be consistent with the overarching goals of smart cities to provide safe mobility solutions.
- Users’ preference for larger vehicles highlights the need for consultation between area operators to validate their fleet composition. Moreover, this indicates that it is also necessary to develop policies specifying the principles of fleet selection to meet the expectations of individual user groups. This type of procedure will make the use of car-sharing services a real transport option for those interested and will meet their needs.
- Findings regarding the importance of the level of vehicle equipment standards indicate the importance of integrating advanced technologies and amenities in car-sharing cars. This type of preference is consistent with the general assumptions of smart cities and may contribute to their even faster development.
- The importance of rental prices highlights the need for policies that balance affordability with environmental awareness. Policymakers should promote pricing strategies that make car-sharing services competitively priced with individual car use, while encouraging the use of environmentally friendly transportation options. Incentives for hybrid and electric vehicles in car-sharing fleets can accelerate the transition to sustainable urban mobility, in line with the ethos of smart urban development.
5. Conclusions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
- Ladies and Gentlemen,
- As part of the implementation of scientific research on improving the adaptation of the car-sharing fleet of the X company to adopt to the needs of users, I cordially invite you to take part in this survey. This questionnaire is devoted to the utility of individual attributes concerning vehicles and car-sharing systems depending on the purpose of the trip. The survey is addressed to people who occasionally use car-sharing systems, i.e., up to 10 h a year.
- The survey is anonymous and will not take more than 10 min.
- Thank you very much for your participation.
- Katarzyna Turoń, PhD. Eng. DSc.
- Silesian University of Technology,
- Faculty of Transport and Aviation Engineering, Department of Road Transport
- Demographics
- Year of birth: …..
- Sex:
- □
- Female.
- □
- Male.
- Education level:
- □
- Basic.
- □
- Junior high school.
- □
- Basic vocational.
- □
- High school.
- □
- Higher.
- Domicile:
- □
- Village.
- □
- City up to 50,000 residents.
- □
- City up to 100,000 residents.
- □
- City up to 250,000 residents.
- □
- City over 250,000 residents.
- Professional situation:
- □
- Learning.
- □
- Working.
- □
- Unemployed.
- □
- Pensioner.
- □
- Learning and working.
- Family status:
- □
- Bachelor/Maiden.
- □
- Married.
- □
- Divorced.
- Monthly earnings:
- □
- Up to EUR 1500.
- □
- EUR 1501–EUR 2500.
- □
- EUR 2501—EUR 4500.
- □
- Over 4500 EUR.
- Imagine that you have to make several trips using a car from a car-sharing system for commuting to work/school.
- For each trip, you are offered a different type of vehicle defined by six parameters as:
- -
- Car type [-]—Classification that determines the size of the vehicle: small (A, B class), medium (C class), large (D, E class).
- -
- The average car-sharing vehicle rental price [€/km]—the average cost of renting a car per 1 km of travel,
- -
- Engine power [kW]—The amount of work an engine can do in a given time,
- -
- Car-sharing vehicle equipment standard [-]—Additional vehicle equipment that increases the level of its safety, comfort, or vehicle quality.
- -
- Drive type of the vehicle [-]—The type of engine the car is equipped with,
- -
- Euro NCAP rating [-]—Five-star safety rating system to help consumers identify the safest choice for their needs. The safety rating is determined from a series of vehicle tests designed and carried out by the Euro NCAP organization (on a 5-star scale, 1 is the lowest and 5 is the highest safety value).
1 unsatisfactory | 2 mediocre | 3 satisfactory | 4 good | 5 very good | 6 excellent |
# 0 | Purpose: Using of a Car-Sharing Vehicle for Commuting to Work (Including Dealing with Professional Matters and Travel to Business Meetings as Business Daily Trips) or Commuting to Place of Education (e.g., School, University, etc.) | ||||||
Attributes | Car type [-] | The average car-sharing vehicle rental price [€/km] | Engine power [kW] | Car-sharing vehicle equipment standard [-] | Drive type of the vehicle [-] | Euro NCAP raring [-] | Grade |
Levels | small | 0.40–0.60 | 63–149 | Parking sensors | Electric engine | 3–4 stars | 6 |
small | 0.40–0.60 | 40–62 | Parking sensors | Internal Combustion engine | 1–3 stars | 2 |
# 1 | Using of a Car-Sharing Vehicle for Commuting to Work (Including Dealing with Professional Matters and Travel to Business Meetings as Business Daily Trips) or Commuting to Place of Education (e.g., School, University, etc.) | ||||||
Attributes | Car type [-] | The average car-sharing vehicle rental price [€/km] | Engine power [kW] | Car-sharing vehicle equipment standard [-] | Drive type of the vehicle [-] | Euro NCAP rating [-] | Grade |
Levels | Small | 0.40–0.60 | 63–149 | Parking sensors | Electric engine | 3–4 stars | … |
Small | 0.40–0.60 | 40–62 | Parking sensors | Internal Combustion Engine | 1–3 stars | … | |
… | … | … | … | … | … | … | |
Large | over 0.91 | Over 150 | Parking sensors, navigation, handsfree, lane assistant, heated seats, cruise control | Internal Combustion Engine | 5 stars | … |
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Travel Purpose: …. | |||||||
---|---|---|---|---|---|---|---|
Attributes Examples | Average Rental Price | Car Type | Vulnerable Road User (VRU) Protection Rate | Luggage Compartment Capacity (Seats Up) | Engine Power | Safety Assist Rate | Average Rental Price |
Levels | 1 | 2 | 5 | 2 | 3 | 5 | 1 |
4 | 1 | 2 | 3 | 1 | 3 | 3 | |
3 | 3 | 3 | 2 | 2 | 4 | 2 | |
2 | 2 | 1 | 3 | 2 | 5 | 1 | |
… | … | … | … | … | … | … |
Attribute | Quasi-Experimental Coding | ||
---|---|---|---|
Z1 | X1 | X2 | X3 |
Level I | 1 | 0 | 0 |
Level II | 0 | 1 | 0 |
Level III | −1 | −1 | −1 |
Attribute | Quasi-Experimental Coding | ||
---|---|---|---|
Z1 | |||
Level I | 0 | ||
Level II | 0 | ||
Level III |
Feature | Detailed Data |
---|---|
Type of business model of the system | For profit: B2C/B2B |
type of system operating model | Free-floating |
Area/areas of operation | Berlin city area |
Vehicle rental price list | 0.40—over a 0.91 [€/km] + 1€ Unlock Fee (2€ premium vehicles) + 0.29€/min stopover + Reservation (10 min for free) |
Types of available rental offers | min/km/long-term offers. |
Attribute | Attribute Levels |
---|---|
Car type [-] | 1. Small 2. Medium 3. Large |
The average car-sharing vehicle rental price [€/km] | 1. 0.40–0.60 [€/km] 2. 0.61–0.90 [€/km] 3. over 0.91 [€/km] |
Engine power [kW] | 1. 40–62 [kW] 2. 63–149 [kW] 3. over 150 [kW] |
Car-sharing vehicle equipment standard [-] | 1. Parking sensors, navigation, handsfree, lane assistant, heated seats, cruise control 2. Parking sensors, navigation, handsfree, lane assistant, heated seats 3. Parking sensors |
Drive type of the vehicle [-] | 1. Electric engine 2. Internal Combustion Engine 3. Hybrid engine |
Euro NCAP rating [-] | 1. 1–3 stars 2. 3–4 stars 3. 5 stars |
Attributes | Car Type [-] | The Average Car-Sharing Vehicle Rental Price [€/km] | Engine Power [kW] | Car-Sharing Vehicle Equipment Standard [-] | Drive Type of the Vehicle [-] | Euro NCAP Rating [-] |
---|---|---|---|---|---|---|
Levels | 1 | 1 | 2 | 3 | 1 | 2 |
1 | 1 | 1 | 3 | 2 | 1 | |
1 | 1 | 1 | 3 | 1 | 2 | |
1 | 1 | 1 | 3 | 2 | 2 | |
1 | 1 | 3 | 2 | 1 | 3 | |
1 | 1 | 2 | 2 | 2 | 2 | |
2 | 3 | 2 | 2 | 1 | 2 | |
2 | 2 | 2 | 2 | 3 | 3 | |
2 | 2 | 2 | 2 | 2 | 3 | |
3 | 3 | 3 | 1 | 1 | 3 | |
3 | 3 | 2 | 2 | 2 | 3 | |
3 | 3 | 3 | 1 | 1 | 3 | |
3 | 3 | 3 | 1 | 2 | 3 |
Feature | Number of Respondents [-] | Number of Respondents [%] |
---|---|---|
Age | ||
18–25 | 836 | 53.21% |
26–35 | 403 | 25.65% |
36–45 | 254 | 16.17% |
46–55 | 40 | 2.55% |
Over 55 | 38 | 2.42% |
Sex | ||
Women | 417 | 26.54% |
Men | 1154 | 73.45% |
Domicile | ||
Village | 74 | 4.71% |
City up to 50,000 inhabitants | 194 | 12.35% |
City up to 100,000 inhabitants | 386 | 24.57% |
City up to 250,000 inhabitants | 426 | 27.12% |
City over 250,000 inhabitants | 491 | 31.25% |
Professional situation | ||
Learning | 562 | 35.77% |
Working | 691 | 43.98% |
Unemployed | 26 | 1.65% |
Pensioner | 18 | 1.15% |
Learning and working | 274 | 17.44% |
Family status | ||
Bachelor/Maiden | 1022 | 65.05% |
Married | 538 | 34.25% |
Divorced/Divorced | 11 | 0.70% |
Monthly earnings | ||
Up to EUR 1500 | 532 | 33.86% |
EUR 1501—EUR 2500 | 432 | 27.50% |
EUR 2501—EUR 4500 | 321 | 20.43% |
over EUR 4501 | 286 | 18.20% |
Education | ||
Basic | 3 | 0.19% |
Junior high school | 45 | 2.86% |
Basic vocational | 35 | 2.23% |
High school | 782 | 49.78% |
Higher | 706 | 44.94% |
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Turoń, K. Personalization of the Car-Sharing Fleet Selected for Commuting to Work or for Educational Purposes—An Opportunity to Increase the Attractiveness of Systems in Smart Cities. Smart Cities 2024, 7, 1670-1705. https://doi.org/10.3390/smartcities7040066
Turoń K. Personalization of the Car-Sharing Fleet Selected for Commuting to Work or for Educational Purposes—An Opportunity to Increase the Attractiveness of Systems in Smart Cities. Smart Cities. 2024; 7(4):1670-1705. https://doi.org/10.3390/smartcities7040066
Chicago/Turabian StyleTuroń, Katarzyna. 2024. "Personalization of the Car-Sharing Fleet Selected for Commuting to Work or for Educational Purposes—An Opportunity to Increase the Attractiveness of Systems in Smart Cities" Smart Cities 7, no. 4: 1670-1705. https://doi.org/10.3390/smartcities7040066
APA StyleTuroń, K. (2024). Personalization of the Car-Sharing Fleet Selected for Commuting to Work or for Educational Purposes—An Opportunity to Increase the Attractiveness of Systems in Smart Cities. Smart Cities, 7(4), 1670-1705. https://doi.org/10.3390/smartcities7040066