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Article

Factors Affecting Car-Sharing Services

Department of Road Transport, Faculty of Transport and Aviation Engineering, Silesian University of Technology, Krasińskiego 8 Street, 40-019 Katowice, Poland
Smart Cities 2023, 6(2), 1185-1201; https://doi.org/10.3390/smartcities6020057
Submission received: 5 April 2023 / Revised: 18 April 2023 / Accepted: 19 April 2023 / Published: 20 April 2023
(This article belongs to the Special Issue Current Trends and Future Prospects on Smart and Sustainable Cities)

Abstract

:
Car-sharing systems, i.e., short-term car rental services, are solutions indicated as an alternative to individual motorization; they can be used in an increasing number of cities around the world. These services, along with their intensive development, are becoming more and more complex. Due to their complexity, they involve not only an increasing number of stakeholders or infrastructure elements, but also indicate numerous links with the functioning of cities, especially smart cities. To properly implement or improve the car-sharing system, both in terms of operational issues regarding the system’s functioning or changes in the vehicle fleet, it is important to be familiar with the elements that make up car-sharing, as well as the factors that affect it. This work aims to present the factors affecting car-sharing, as well as the transport model of car-sharing services. This work fills the research gap stemming from the lack of comprehensive studies and knowledge on car-sharing. A detailed analysis of the literature shows that there are six main groups of factors affecting car-sharing: economic and technical, transport, social, environmental, organizational, and other issues; among these factors, more than 150 quantitative and qualitative criteria can be distinguished. Furthermore, the work also showed factors that are a niche in the literature and can be the basis for further research on car-sharing. Detailed familiarity with these factors could translate into increased profitability and, above all, success in the functioning of on-the-market services. This article supports the implementation and improvement of car-sharing services. In addition, it supports scientists in the preparation of scientific papers and mathematical models in the field of car-sharing and the factors that affect it.

1. Introduction

In recent years, we have been dealing with the very intensive development of urban centers due to the migration of society. Current figures indicate that 55% of the world’s population now lives in urban centers [1] and this proportion is expected to increase by at least 13% by 2050, adding approximately 2.5 billion people to urban centers [2]. Along with the shift in society, the growing interest in the universality of 5G networks [3], and the desire to make ever-more services available remotely [4], this will translate into a even greater propagation of smart cities. It is worth emphasizing, however, that the increased influx in communities, apart from many advantages that will translate into the development of urban centers, will require an efficient transport system. Proper mobility will be possible thanks to the use of new mobility services that will replace classic forms of transport. New mobility services will also be one of the leading elements in Smart City 4.0 [5] and Smart City 5.0 [6].
Car-sharing systems are one of the numerous solutions aimed at improving mobility in cities. The principle of its operation is the use of one vehicle by many renters for short-term trips. Although the first car-sharing systems date back to 1948 [7], the numerous recent developments in car-sharing services are related to the ongoing technological progress in the field of digitization [8]. Statistics show that car-sharing systems are currently offered by 236 operators in 59 countries around the world [9]. It is forecast that revenues in the car-sharing segment will reach USD 12.88 billion in 2023 [10]. Furthermore, revenues are expected to show an annual growth rate (CAGR 2023–2027) of 5.64%, which translates into a projected market size of USD 16.04 billion by 2027 [10]. The intensive development of systems is also associated with the growing number of users of car-sharing services. This number is growing every year around the world, regardless of continent. An increase in interest in these services has been particularly visible since 2015 when the number of system users reached 5.8 million worldwide; this figure further increased to 36.02 million in 2017 [11].
Currently, among other forms of shared mobility, such as scooters or bicycles, car-sharing services are considered to be one of the most convenient and autonomous forms of new mobility solutions [12]. Despite this fact, among the car-sharing services available on both the European and global markets, one can observe the number of closures, takeovers of companies, or implementation of services on only a pilot basis. In such situations, various arguments are given, including that the system had an ill-matched business model [13], funds were not properly managed, the project turned out to be economically unprofitable [14], information found about the fleet of vehicles was improperly matched to the needs of users [15], customer expectations were not met [16], or that the scope of operation of the services was incorrectly defined [17]. Observing the reasons for the malfunctioning of the systems, it can be argued that car-sharing services are very complex and susceptible to numerous multi-criteria external factors. Many researchers emphasize that there is a real need for thorough research motives to participate in the processes of the shared economy and the criteria involved [18,19,20,21] because knowledge of the complexity of shared mobility is necessary to increase public awareness of shared mobility services [22,23,24]. Based on this assumption, a lot of scientific studies have been conducted in the field of factors affecting both the shared economy, shared mobility, and car-sharing. These studies include both theoretical and practical issues based on various types of field research, surveys, and research experiments. The results are very diverse in terms of, i.a., the type of factors, the level of their importance for various stakeholders, and the location area for which the case was considered. For example, Böcker and Meelen pointed out that motivations to participate in the sharing economy depend on the sociodemographic characteristics of the participants, the role of the participant as a user or supplier of goods, and the types of common goods [25]. A Deloitte study, in turn, showed that the key to the success of the sharing economy is lower costs, the possibility of using sustainable consumption, and the convenience of use [26]. In comparison, Smith showed that convenience in terms of reducing time and stress is a key advantage of shared mobility [27]. In the case of car-sharing, Szymkowiak and Żelichowska indicated savings (time, money), atmosphere (attitude to the brand, relationship with other users of the system), and expectations (user opinions, type of car affecting the comfort of travel) as key factors influencing the popularity of services [28]. However, Jie et al. indicated that gender is the most important factor in predicting whether a person will use short-term car rentals [29]. Furthermore, they emphasized that also employment status, annual income, attitude toward the benefits of shared mobility, the possibility of accessing shared mobility, and the reasons for shared mobility positively correlated with the possibility of using shared mobility [29]. In turn, Nicholas and Rajon Bernard, in analyzing car-sharing success factors, emphasize the importance of aspects such as parking policies [30]. They indicate that the parking policies for car-sharing must be at least equal to those for private cars [30]. As an incentive for electric vehicles, city parking can be given away as an in-kind contribution [30]. For less densely populated cities and rural areas, the city government will likely be required to provide financial support and aid in charger installation [30]. For comparison, Alzahrani et al. suggest that the most essential criteria for car-sharing consumers are insurance coverage, reliability, rental cost, drop-off options, and gas cost [31].
Despite the indication that many factors influence car-sharing, in numerous scientific works no study was found that would constitute a compendium of factors segregated depending on the subject area. To fill this research gap, this work is devoted to an interdisciplinary determination of factors affecting car-sharing systems. For this purpose, a comprehensive literature review was carried out. Creating a knowledge summary containing a full list of factors influencing car-sharing, along with references to individual literature items, will eliminate problems related to the multitude of factors indicated in individual research works or the lack of indication of a given factor which, for one given territory, may not be important yet may be important to another urban center. This study may be helpful to a large group of stakeholders, such as:
  • Scientists (when looking for variables that could describe a given system during mathematical modeling of car-sharing, creating optimization models, or building surveys and indicating alternatives to the assessment for respondents);
  • Practitioners–operators (when making analyses on how to manage a company or modernize business models);
  • Municipal authorities (when assessing projects or analyzing public–private car-sharing partnerships;
  • People unfamiliar with car-sharing who want to check what shared mobility entails.
The work has been divided into four sections. Section 1 presents the general scope of the article, while Section 2 is devoted to the adopted research methodology. In Section 3, the results of the analysis are indicated. Section 4 provides a summary, further research plans, and limitations.

2. Methodology

To develop a knowledge base on the factors affecting car-sharing services, it was decided to review the literature. The task of the selected research method was to define the research query, indicate keywords, define the database to which the search will be directed, indicate whether reviews of the literature fill the research gap of the query to which the article refers, determine what type of documents are in the database, specify inclusions and exclusions, conduct a detailed analysis, synthesize documents, and indicate the results [18].
Among the various available methods for literature analysis, we selected the method based on the current state of knowledge and the integrative method [32]. This complex type of literature review requires a systematic approach, is inclusive, and reduces bias without highlighting the importance of the particular topics under consideration [33,34]. In addition, the proposed method also differs from other types of classical reviews, such as the realistic review or the so-called realistic synthesis, which focus primarily on understanding the forces behind the success or effectiveness of the intervention, or the integrative method, which covers a wide range of perspectives on a given problem [35,36].
The proposed method considers all the factors influencing car-sharing specified in the given research works without indicating the factors of influence determining whether a given factor turned out to be crucial for a given area or not. It aimed to develop a compendium of factors without imposing on the recipient an aspect that, in the case of his research, could turn out to be less important than another. The indicated research method applies to topics related to urban aspects, such as smart cities and the forms of transport used in them, which is confirmed by the works of Yigitcanlar, et al., Butler et al., and Rana et al. [37,38,39,40,41]. The literature review was performed using the methodology of Booth et al. [42]. The analysis included the following steps [42]:
(1)
Indicating of the research objective of the literature review;
(2)
Conducting a full search, acquisition, and download of articles in the literature;
(3)
Extracting and evaluating items of the obtained literature;
(4)
Synthesizing and analyzing the obtained results in detail;
(5)
Presenting and sharing results and conclusions.
The first step in following the methodology was to define the research goal. Our goal was to define the factors affecting car-sharing. The scope of the study was defined through an extensive review of documents available on car-sharing in the publicly available scientific database Scopus. The Scopus database was indicated because it is a leading scientific database widely used for systematic literature reviews [43]. Boolean functions were used to search for individual volumes in the database. Such functions provide the possibility of a thorough logical analysis, ensuring the sense and truthfulness of the theorems sought during the literature reviews [44]. In the first stage, the term “car-sharing” was searched in the titles, abstracts, and keywords contained in the Scopus document database. The focus was on works written in English. The author’s name was excluded from the search to avoid citing their research. The detailed search formula was as follows (1):
G S = D O C T I T   A B S   K E Y = c a r s h a r i n g A N D   ! E X A N = T U R O Ń = 1701   d o c u m e n t s
where:
  • GS—general search,
  • D O C T I T   A B S   K E Y —documents including “car-sharing” phrase in the titles, abstracts, and keywords,
  • E X A N —exclusion of the name of the author of this article.
Based on a general search, 1701 documents in the form of articles, monographs, books, and conference papers that contained the phrase “car-sharing” in their titles, abstracts, or keywords. The number of searches turned out to be very high because the term “car-sharing” is used both in many different meanings and in various scientific disciplines not necessarily related to transport. The results showed that the term car-sharing is presented by scientists in a very broad and multi-criteria way. Therefore, in the next step works were sought that would focus on the factors affecting car-sharing both at the stage of implementation and operation of services. The detailed search formula was as follows (2):
D S = D O C T I T   A B S   K E Y     = f a c t o r s   O R   D O C T I T   A B S   K E Y   i m p l e m e n t i n g   O R   D O C T I T   A B S   K E Y = o p e r a t i o n   O R   D O C T I T   A B S   K E Y = f u n c t i o n i n g   A N D   D O C T I T   A B S   K E Y = c a r s h a r i n g A N D   ! E X A N = T U R O Ń = 136   d o c u m e n t s
where:
  • DS—detailed search,
  • D O C T I T   A B S   K E Y —documents including the terms “factors”, “implementing”, “operation”, “functioning”, and “car-sharing” in titles, abstracts, and keywords.
A detailed search found136 documents; more importantly, a more precise analysis of the obtained excerpts showed that, among the documents, there were works that referred to car-sharing in a very general way, for example, indicating it only in the form of a keyword of a given scientific work. Therefore, it was decided to perform a third, even more, precise and limited search, according to the Formula (3):
P S = D O C T I T   A B S   K E Y = f a c t o r s   O R   D O C T I T   A B S   K E Y = f u n c t i o n i n g   O R   D O C T I T   A B S   K E Y   i m p l e m e n t i n g   O R   D O C T I T   A B S   K E Y = o p e r a t i o n   O R   D O C T I T   A B S   K E Y = f u n c t i o n i n g   A N D   D O C T I T   A B S   = c a r s h a r i n g A N D   ! E X A N = T U R O Ń = 41   d o c u m e n t s
where:
  • PS—precise search.

3. Car-Sharing Factors—Results and Discussion

As a result of the literature review in the form of precise searches, 41 documents were obtained. Among the 41 analyzed documents, a total of 151 individual criteria affecting car-sharing were identified at the stages of implementation and operation. The specified factors were both quantitative and qualitative variables. Due to the multitude of factors, a synthesis was completed; the factors were then divided depending on the thematic areas to which they belonged. Six thematic areas were identified:
-
Economic and technical issues;
-
Transport issues;
-
Social issues;
-
Environmental issues;
-
Organizational issues;
-
Other issues.
Each of the identified thematic areas is described in detail in Section 3.

3.1. Economic and Technical Factors

The first of the thematic areas are aspects related to financial matters. This area is very complex. Interestingly, it includes not only costs related to the operation of the car-sharing service itself and the related operating costs, such as the costs of the service, additional services or packages [45,46,47,48,49,50,51,52], but also the accompanying car-sharing services offered on the market by competitors [53,54,55,56,57,58]. Detailed factors related to the functioning of the car-sharing system are presented in Table 1.
The analysis conducted indicates that the costs of other forms of transportation available in the city, ranging from public transport to new mobility services, are also significant factors that influence car-sharing [32,33,34,35]. Detailed factors are connected to the costs of other means of transport in Table 2.
It is worth mentioning that the literature also indicates several costs related to the maintenance and use of personal vehicles as factors affecting car-sharing. Detailed factors for maintaining an individual vehicle are presented in Table 3.
An additional important group of factors are the aspects related to the costs of public transport available in the place where car-sharing operates or is to operate. Detailed factors are presented in Table 4.
Analyzing in detail the literature on the indicated economic costs of car-sharing, it is worth emphasizing that no factors were found that would be directly related to the operating costs of car-sharing operations resulting from business models, which seem to be important issues for the correct and, above all, profitable operation of the enterprise.

3.2. Transport Factors

Another thematic group of the analyzed factors are issues related to factors related to the implementation of the transport service. The group of such factors is quite extensive. Among the analyzed literature, factors related to the car fleet used in car-sharing services found include defining issues related to the size of the vehicle, its engine performance and safety, and environmental issues [15,37]. Fleet considerations are presented in Table 5.
The second thematic group in the field of transport is aspects related to shared transport. It includes factors related to the presence of other forms of shared mobility, such as short-term bicycle, car, or scooter rentals in the city, as wel as factors directly related to the operator’s service, e.g., the availability and attractiveness of the vehicle, distance to the nearest vehicle, car relocation issues, or accessibility of the system or type of system from the point of view of the business model. Detailed factors related to shared mobility are presented in Table 6.
Factors related to transport infrastructure constitute a separate subgroup. They are presented in Table 7. Interestingly, in its scope the literature defines only issues such as bus lanes, parking spaces dedicated to electric vehicles, or park and ride car parks. To the best of the authors’ knowledge, no issues related to the total number of parking spaces or places dedicated to car-sharing (and not only car-sharing based on electric vehicles) were found.
Moreover, no reference was made to the number and availability of public electric vehicle charging stations or mobility hubs dedicated to car-sharing.
Another sub-group within transport issues is issues related to the organization of transport in a given area. These aspects concern both traffic engineering and transport management in the city, e.g., traffic volume, speed limits, the availability of public charging stations and their capacity, or the presence of intelligent transport systems. A detailed summary is presented in Table 8.
A separate group within the thematic area of transport is factors directly related to urban collective transport occurring in the area where the car-sharing system is or would be operating. A detailed summary is presented in Table 9.

3.3. Social Factors

The third of the thematic areas is factors covering social issues. These include detailed information on users or potential users of car-sharing systems, such as their age, education, or earnings. Interestingly, among the factors, there are also aspects referring to the experience of using shared mobility services and the general approach to sustainable and ecological forms of transport. It seems that the range of factors is wide and related to both personal and professional issues, as well as TO the approach to transport. Detailed factors are presented in Table 10.

3.4. Environmental Factors

The fourth of the thematic groups is aspects related to environmental issues. In this group, there are factors directly related to the characteristics of individual cities and the occurrence of certain levels of pollution or noise in their area. The presence of policies or restrictions directly related to the issue of sustainable development was also indicated. Among the indicated factors, for example, the factor defining urban plans in the field of development of pro-ecological solutions was missing, as was a detailed definition of good and bad practices characteristic of a given urban center. A detailed list of factors is shown in Table 11.
A separate group of factors is issues related to the environmental performance of the vehicle fleet. It defines both the number of vehicles with alternative drives and their emissions. A detailed summary is presented in Table 12.

3.5. Organizational Factors

The fifth group of factors is aspects related to the organizational issues of the functioning of car-sharing systems. These include, for example, the method of registration in the system implemented by the operator, the approach to customer service, or the accessibility of the system application offered. A detailed summary is presented in Table 13.

3.6. Other Factors

The sixth group consists of other factors that influence car-sharing. These are factors over which neither operators nor users have influence. These issues include weather and atmospheric changes, as well as weather forecasts and predicted rainfall or temperature changes that affect consumers’ attitudes to using car-sharing services. A detailed list is shown in Table 14.
In addition to the weather, other factors over which neither users nor operators have influence are issues related to the type and time of day. A detailed summary is presented in Table 15.
The last group of factors that are not influenced by users or operators are factors directly related to the type of city or its history, administrative issues, or the number of inhabitants. A detailed summary is presented in Table 16.

4. Conclusions

To sum up, this work made it possible to achieve the goal of developing a comprehensive list of factors affecting car-sharing services. In its scope, six main thematic groups of areas with which the factors are related, i.e., economic, transport, environmental, social, organizational, and other issues, have been defined. Among the indicated thematic groups, over 150 criteria have been identified that have an impact on car-sharing services. These factors have been cataloged and presented with references to the literature. The largest group of factors is issues related to transport. That list is a collection of information that can be used both by scientists when preparing research in the field of car-sharing or building identification or optimization models. It also supports operators in carrying out analyses on the implementation or functionality of their current services.
Although many factors have been identified in the literature, it seems that the list is not exhaustive. Among the indicated aspects, several important aspects were excluded. The first is the lack of factors related to the financial operational issues of car-sharing services. These factors seem to be very important, especially from the point of view of the need to determine the profitability of the project. Another aspect not discussed in the literature is the lack of references to the transport infrastructure directly dedicated to car-sharing of any type, rather than just electric vehicles. The literature does not mention mobility hubs or public parking spaces for car-sharing. Such initiatives are becoming increasingly common solutions in the era of implementing sustainable transportation schemes. In the literature on the factors affecting car-sharing, little is said about business models. Although the type of system is an important factor, there is no information related to the individual elements that make up the business model, e.g., relations with the environment, revenue streams, etc. From a legislative point of view, there is also no indication of the rights or restrictions imposed on car-sharing services. Factors related to cooperation with, for example, urban centers, which seems to be crucial, especially in the implementation of public–private car-sharing, have not been noted either. The indicated aspects may become a guideline for further research exploration when performing analyses on car-sharing services because they constitute the current research gaps.
Like any research paper, this study also has limitations. The main limitation is the focus on researching the literature only within the scope of the Scopus database. This database, despite being the most valued in the academic community, may not contain all works on factors affecting car-sharing. The limitations introduced by the research method may not cover all studies presenting factors influencing car-sharing. Moreover, it should be emphasized that there may be works where the authors mentioned factors affecting car-sharing using different nomenclature; in these cases, the publication could not be included in the searches.
In future scientific works, the authors plan to analyze the importance of individual factors for various groups of stakeholders to indicate the leading trends and maps on the impact of individual criteria. Moreover, the authors also plan to analyze the factors affecting car-sharing based on other literature search methods, as well as bibliometric databases alternative to the Scopus database, such as Web of Science. This type of study will allow comparisons regarding the repeatability of criteria, as well as determine the selection of the appropriate research methods for literature analysis in the field of shared mobility.

Funding

This research received no external funding.

Data Availability Statement

The data presented in this study are available on request from the author.

Conflicts of Interest

The author declare no conflict of interest.

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Table 1. Costs of car-sharing.
Table 1. Costs of car-sharing.
Detailed FactorsVariable TypeInvestigation
Method
Reference
Quantitative
The cost of the car-sharing service per kilometerXLiterature review; survey[45,46,47]
The cost of the car-sharing service per minuteXSurvey[45,46]
Stop-over costXSurvey, case study[45,46]
Daily tariffXCase study[48]
Night tariffXCase study[48]
The cost of registering in the systemXCase study[48]
Deposit amountXCase study[48]
The cost of the car-sharing service packageXCase study[49]
Financial bonuses for using car-sharingXCase study[50]
Additional costs, i.e., the possibility to go outside the zoneXCase study[45,46,49]
The cost of violations (e.g., improper use, parking)—finesXCase study[50,51]
Table 2. Costs of using other means of transport.
Table 2. Costs of using other means of transport.
Detailed FactorsVariable TypeInvestigation
Method
Reference
Quantitative
The cost of renting a vehicle in a classic rental companyXCase study[55,56]
TAXI service costXCase study[57]
Amount of discount on urban collective transportXEmpirical study[56]
The cost of a ticket in urban collective transportXEmpirical study[47]
The cost of the bike-sharing serviceXCase study[58]
The cost of the scooter-sharing serviceXCase study[58]
Table 3. Costs of maintaining an individual vehicle.
Table 3. Costs of maintaining an individual vehicle.
Detailed FactorsVariable TypeInvestigation MethodReference
Quantitative
Vehicle service costXTrip data[52]
Vehicle insurance costXTrip data[31,53]
The cost of 1 L of fuelXSurvey, Trip data[31,52,53]
Car loan/leasing installmentsXTrip data[52,53,54]
The cost of additional services (e.g., vehicle washing, tire change, etc.)XSurvey, literature review[52,53,54]
Table 4. Costs of using the urban transport system for users of individual vehicles.
Table 4. Costs of using the urban transport system for users of individual vehicles.
Detailed FactorsVariable TypeInvestigation MethodReference
Quantitative
Environmental fee for entering the cityXSurvey[59]
Public parking costXTrip data[51]
The cost of private parkingXTrip data[51]
Table 5. Factors related to car-sharing fleet.
Table 5. Factors related to car-sharing fleet.
Detailed FactorsVariable TypeInvestigation MethodVariable Type
QualitativeQuantitative
Car classX Survey[15]
Car sizeX Survey, Case study[60]
Boot capacity XSurvey[15]
Convenience of use XSurvey[27]
Engine performance XCase study[60,61]
Energy/fuel consumption XTrip data, Survey[27,62]
Vehicle cost XSurvey[15]
Vehicle safety level XSurvey[62]
Vehicle warranty XSurvey[62]
Table 6. Factors related to shared transport.
Table 6. Factors related to shared transport.
Detailed FactorsVariable TypeInvestigation MethodVariable Type
QualitativeQualitative
Availability of the bike-sharing serviceX Survey[59]
Availability of an already existing car-sharing serviceX Literature review[49,62]
Availability of the scooter-sharing serviceX Survey[58]
Availability of the kick-scooter-sharing serviceX Survey[58]
Availability of car-sharing parking spacesX Survey[47,62]
Vehicle location XTrip data[49,62,63]
Actual vehicle availabilityX Case study[49,63]
Vehicle fuel/charge level XTrip data[43,44]
fleet attractivenessX Survey[63]
Distance to the nearest vehicle XTrip data, case study[49,63]
Number of operator-owned charging points XCase study[43]
Number of vehicles available XCase study[62]
The possibility of leaving the vehicle in another cityX Case study[63]
System area limitationsX Case study[62]
Availability of dedicated operator parking spacesX Case study, survey[30,54]
Number of dedicated operator parking spaces XCase study, survey[30,54]
Range of the car-sharing operator (local/global)X Literature review[62]
Vehicle fleet diversity (vehicle classes)X Survey[15,49]
Possibility of self-refueling of the vehicle by the userX Survey[49]
Relocation of vehicles in the cityX Case study[43,62]
Minimum age required to use the system XCase study[14]
System typeX Case study, literature review[43,49,63]
Table 7. Factors related to infrastructure.
Table 7. Factors related to infrastructure.
Detailed FactorsVariable TypeInvestigation MethodReference
Qualitative
Number of bus lanesXTrip data[64]
Number of parking spaces dedicated to electric vehiclesXTrip data[65]
Number of park and ride car parksXTrip data[66]
Table 8. Factors related to organizational issues.
Table 8. Factors related to organizational issues.
Detailed FactorsVariable TypeInvestigation MethodReference
QualitativeQualitative
Traffic XTrip data[67]
Speed limit zone XTrip data[67]
Restricted vehicle entry zonesX Case study[47]
Privileges for urban collective transportX Case study[47]
Information integration about all means of public transportX Case study[68]
Operating costs of collective transport XCase study[68]
Spatial and functional integration with other means of public transportX Case study[69]
Convenience of transfersX Trip data[70]
Mass transit travel speed XTrip data[70]
Availability of information (e.g., timetables)X Trip data[70]
Level of public transport driving safetyX Case study[69]
Level of personal safety of public transport passengersX Case study[69]
Waiting time at stops for a public transport vehicle XCase study[69]
The convenience of the ticketing system (ease of purchase, variety of the ticket offer, ticket validity with different carriers, etc.)X Case study[47]
Privileges for electric/hybrid vehiclesX Case study[71]
Number of electric vehicle charging stations XCase study[71]
Electric vehicle charging time using a public charging station XCase study[71]
The presence of parking spaces dedicated to electric vehiclesX Case study[71]
Number of TAXI service operators XTrip data, case study[57]
Presence of the ITS systemX Case study[64]
Table 9. Factors related to urban collective transport.
Table 9. Factors related to urban collective transport.
Detailed FactorsVariable TypeInvestigation MethodReference
QualitativeQualitative
Accessibility of urban collective transportX Case study[47]
Punctuality of urban public transportX Case study[69]
Diversity of urban collective transportX Case study[68]
Level of comfort of urban collective transportX Case study[68]
Condition of urban collective transport rolling stockX Case study[68]
Travel time by public transport XCase study[68]
Time loss/delays in urban collective transport XCase study[47]
Service for socially diverse groups of residentsX Case study[69,70,71]
Frequency of transport means (number of daily trips)X Case study[72]
Number of operators servicing urban collective transport XCase study[69]
Direct connections (no transfers)X Case study[68]
Percentage chance of securing a seat XCase study[69,73]
Operating range of the municipal public transport operator (local/global)X Case study[69]
The failure rate of vehicles used in public transport XCase study[47]
Number and length of routes XTrip data[69]
Table 10. Social factors related to current or potential car-sharing users.
Table 10. Social factors related to current or potential car-sharing users.
Detailed FactorsVariable TypeInvestigation MethodReference
QualitativeQualitative
SexX Survey[49,59,74]
License to drive motor vehiclesX Survey[14,74]
DomicileX Survey[49,59,74,75]
Home-work distanceX Survey[75]
EducationX Survey[50]
Social statusX Survey[76,77]
earnings XSurvey[14,75,76]
Possessed electronic equipment, e.g., a smartphone with the InternetX Survey[14,75]
Number of owned vehicles XSurvey[77]
Number of kilometers driven by car per year/month XSurvey[77]
Number of kilometers driven by car per day in the city XSurvey[14,75,77]
City travel time XSurvey[14,75]
Accessibility to a family vehicleX Survey[14,75]
Technological advancementX Survey[14,75,77]
Using car-pooling services such as UberX Survey[64]
Pro-ecological attitude of usersX Survey[67,78]
Passion for a particular brand of vehiclesX Survey[74]
Perception of the vehicle as a luxury goodX Survey[74]
Willingness to test drive a given vehicleX Survey[74]
Sharing economy experienceX Survey[75]
Brand perceptionX Survey[28]
Opinions of other customers about the brandX Survey[28]
Table 11. Factors related to city features.
Table 11. Factors related to city features.
Detailed FactorsVariable TypeInvestigation MethodReference
QualitativeQualitative
Ecological restrictions in cities, e.g., eco-zonesX Case study, Survey[75]
The noise level in the city XCase study[79]
Pollution level in the city XCase study[80]
The policy of sustainable transport development in the cityX Case study[67,78]
Ecological restrictions in cities, e.g., eco-zonesX Case study[67]
Table 12. Factors related to environmental issues associated with the car-sharing fleet.
Table 12. Factors related to environmental issues associated with the car-sharing fleet.
Detailed FactorsVariable TypeInvestigation MethodReference
Qualitative
Number of electric carsXCase study[67,78]
Number of hybrid carsXCase study[81]
Number of EURO6 carsXCase study[81]
CO2 emission level of car-sharing vehiclesXCase study[82]
Table 13. Organizational factors of car-sharing functioning.
Table 13. Organizational factors of car-sharing functioning.
Detailed FactorsVariable TypeInvestigation MethodReference
Qualitative
Accessibility of the IT system for the userXCase study[49,63,83]
Contacting customer serviceXCase study[68]
Location of customer service officesXCase study[62,68]
Method of data verification during registrationXSurvey[44]
Accessibility of the system for people from abroadXSurvey[58,68]
Operators liability for damage to the vehicleXCase study[68]
The users responsibility for damage to the vehicleXCase study[68]
How to book a vehicleXCase study[43]
How to open the vehicleXCase study[68]
Additional vehicle equipment, e.g., a child seatXCase study[68]
Table 14. Factors related to weather conditions.
Table 14. Factors related to weather conditions.
Detailed FactorsVariable TypeInvestigation MethodReference
QualitativeQualitative
SeasonX Empirical study[49]
Temperature XEmpirical study[49]
Rainfall XEmpirical study[49]
Weather changesX Empirical study[49]
Weather forecastsX Empirical study[49]
SeasonX Empirical study[49]
Table 15. Factors related to days of using the systems.
Table 15. Factors related to days of using the systems.
Detailed FactorsVariable TypeInvestigation MethodReference
QualitativeQualitative
The time of the day XSurvey, case study[49,74]
Working daysX Survey, case study[49,74]
WeekendsX Survey, case study[49,74]
HolidaysX Survey, case study[49,74]
Table 16. Factors related to the demographic and social structure of the city.
Table 16. Factors related to the demographic and social structure of the city.
Detailed FactorsVariable TypeInvestigation MethodReference
QualitativeQualitative
Cty areaX Survey[58]
city type (administrative)X Survey[83]
The number of residents XSurvey[58]
Tourist attractivenessX Survey[58]
Number of inhabitants in given transport zones XCase study[83]
Monuments in different locationsX Survey[58]
Location of strategic places, e.g., railway stationsX Case study[83]
Distance of the main city from other cities XCase study[49,63]
City type (historical/modern)X Case study[49,63]
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Turoń, K. Factors Affecting Car-Sharing Services. Smart Cities 2023, 6, 1185-1201. https://doi.org/10.3390/smartcities6020057

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Turoń, K. (2023). Factors Affecting Car-Sharing Services. Smart Cities, 6(2), 1185-1201. https://doi.org/10.3390/smartcities6020057

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