Individuals’ Acceptance to Free-Floating Electric Carsharing Mode: A Web-Based Survey in China
Abstract
:1. Introduction
2. Literature Review
3. Method
3.1. Survey and Data
3.2. Hierarchical Tree-Based Regression (HTBR) Method
4. Descriptive Analysis Findings
4.1. Carsharing Mode Choice under Different Trip Purposes and Trip Distances
4.2. Highest Acceptable Price for Using Carsharing
- Except CPRP, UPTSL, participants’ age, education level and children in the household, all the other variables showed significant effects on the highest acceptable price.
- Compared with females, more males could accept relatively higher trip cost. Specifically, when the price was more than 2 Yuan, 32% of males could accept, but only 23% females could accept.
- Thirty-one percent of non-office workers thought that the price should be smaller than 1 Yuan, while the percentage of office workers (23%) was a little lower. Inversely, 34% of office workers showed acceptance of the price higher than 2 Yuan, while that of non-office workers was 22%. The results revealed that office workers were willing to pay more to use carsharing than non-office workers.
- With the increase of income, the percentage of accepting high price (>2 Yuan) would also increase: 18% for low-income, 33% for middle-income, and 48% for high-income.
- Participants who have private cars were found to be more willing to accept high price than those not having cars. Particularly, the accepting percentage of each price interval for participants who have private cars was 48% for 1–2 Yuan, 27% for 2–3 Yuan, and 5% for >3 Yuan, which were all higher than percentages of participants not having a private.
- Results showed that participants who know about carsharing could accept higher price. Specifically, 30% of participants who know about carsharing could accept the price between 2 and 3 Yuan, which was 16% higher than those who do not know about carsharing.
- When price of carsharing vehicles is less than 100,000, only 14% of them were willing to pay more than 2 Yuan. However, with the price of carsharing vehicles increasing to 200,000, more than 50% of participants could accept a price over 2 Yuan. It indicated that participants would be willing to pay more when carsharing vehicles are more expensive.
4.3. Willingness to Forgo Car Purchases
- Variables, including CPRP, UPTSL, gender, income level, car ownership, awareness of carsharing, and price of carsharing vehicles, showed significant impacts on participants’ willingness to forgo car purchases and participant in carsharing.
- When living in a city without CPRP, 55% of participants were inclined to give up buying a new car. The proportion would increase to 66% among participants living in a city with CPRP. The results revealed that CPRP could provide a meaningful pathway to reduce private car ownership and promote carsharing.
- Only 5% of participants with low satisfaction on UPTSL would be willing to use carsharing instead of buying a car. Conversely, when having high satisfaction, more participants (37%) showed interests in forgoing car purchases. It indicated that with the increase of participants’ satisfaction on UPTSL, their willingness to forgo buying cars would dramatically increase.
- Results showed that males were more insistent on buying cars. The proportion of male participants accepting to forgoing car purchases was 59%, while that of females was 65%.
- A clear relationship between participants’ willingness to give up buying cars and their income level was that the former increased with the latter. Particularly, the willing proportion of participants from the low-income group was 58%, while that of participants from the high-income group was 68%.
- Seventy-five percent of participants who have cars were willing to forgo car purchases, which was obviously more than those who do not have cars (44%). It indicated that carsharing had a positive impact on reducing the number of cars in the household.
- Participants who know about carsharing would be more likely to accept forgoing car purchases (75%) than those who do not know about carsharing (48%). Thus, carsharing organizations should pay more attention to widely advertising carsharing.
5. HTBR Modeling Results
5.1. HTBR Model #1 and Model #2–Predicting Participants’ Carsharing Mode Choice
5.2. HTBR Model #3: Predicting Participants’ Highest Acceptable Price for Using Carsharing
5.3. HTBR Model #4: Predicting Participants’ Willingness to Forgo Car Purchases
6. Conclusions
6.1. Improve Individuals’ Awareness of Carsharing
6.2. Provide Government Supports
6.3. Reasonably Allocate Carsharing Service
6.4. Provide High-Quality and Diversified Service
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Company | Operation Mode | Rental Time Unit | Battery Electric Vehicle (BEV) | Founded Time (Year) |
---|---|---|---|---|
eHi | One-way | Day | × | 2006 |
Shenzhou | One-way | Day | × | 2007 |
City Car Club | Round-trip | Day | × | 2010 |
YiDuo | One-way | Day | × | 2010 |
GreenGo | Round-trip | Minute | √ | 2014 |
Car2go | Free-floating | Minute | × | 2015 |
PanDa | One-way | Minute | √ | 2015 |
Hertz | One-way | Day | × | 2015 |
ZhiDou | Free-floating | Minute | √ | 2015 |
EVCARD | One-way | Minute | √ | 2015 |
TOGO | Free-floating | Minute | × | 2015 |
YouChe | One-way | Minute | √ | 2015 |
MoCar | Free-floating | Minute | × | 2016 |
LeShare | One-way | Minute | √ | 2016 |
JiaBei | One-way | Minute | √ | 2016 |
DaDa | One-way | Minute | √ | 2016 |
ShareGo | One-way | Minute | √ | 2016 |
GoFun | One-way | Minute | √ | 2017 |
eVpop | One-way | Minute | √ | 2017 |
Independent Variables | Description/Levels | Summary Statistics | |
---|---|---|---|
N | % | ||
Car purchase restriction policy (CPRP) | Have | 546 | 33.9 |
Not have | 280 | 66.1 | |
Urban public transport service level (UPTSL) | Low | 363 | 43.9 |
Medium | 133 | 16.1 | |
High | 330 | 40 | |
Gender | Male | 420 | 50.8 |
Female | 406 | 49.2 | |
Age (year) | <20 | 52 | 6.3 |
21–30 | 472 | 57.1 | |
31–40 | 233 | 28.2 | |
41–50 | 53 | 6.4 | |
Above 50 | 16 | 1.9 | |
Profession | Office worker | 523 | 63.3 |
Non-office worker | 303 | 36.7 | |
Education level | Low-education | 110 | 13.3 |
Middle-education | 612 | 74.1 | |
High-education | 104 | 12.6 | |
Personal income (¥) | Low-income | 405 | 49.0 |
Middle-income | 296 | 34.8 | |
High-income | 125 | 15.1 | |
Children in the household | None | 375 | 45.4 |
Yes | 451 | 54.6 | |
Car ownership | Have a car | 514 | 62.2 |
Do not have a car | 312 | 37.8 | |
Awareness of carsharing | Know about carsharing | 429 | 51.9 |
Do not know about carsharing | 397 | 48.1 | |
Price of carsharing vehicles | Below 100,000 Yuan | 336 | 40.7 |
100 to 200,000 Yuan | 319 | 38.6 | |
200 to 300,000 Yuan | 138 | 16.7 | |
Above 300,000 Yuan | 33 | 4.0 | |
Trip purpose | Commute | 826 | 16.7 |
Shopping | 826 | 16.7 | |
Go to the doctor | 826 | 16.7 | |
Visit relatives and friends | 826 | 16.7 | |
Business activity | 826 | 16.7 | |
Ferry children | 826 | 16.7 | |
Trip distance | Trip distance less than 3 km | 826 | 16.7 |
Trip distance between 3 and 10 km | 826 | 16.7 | |
Trip distance between 10 and 20 km | 826 | 16.7 | |
Trip distance between 20 and 30 km | 826 | 16.7 | |
Trip distance between 30 and 40 km | 826 | 16.7 | |
Trip distance more than 40 km | 826 | 16.7 |
Independent Variables | <1 Yuan | 1–2 Yuan | 2–3 Yuan | >3 Yuan | Total | |||||
---|---|---|---|---|---|---|---|---|---|---|
N | % | N | % | N | % | N | % | N | % | |
By CPRP | ||||||||||
Have | 126 | 23 | 264 | 48 | 133 | 25 | 23 | 4 | 546 | 100 |
Not have | 85 | 30 | 125 | 45 | 54 | 19 | 16 | 6 | 280 | 100 |
By UPTSL | ||||||||||
Low | 102 | 28 | 165 | 46 | 79 | 22 | 17 | 5 | 363 | 100 |
Medium | 38 | 29 | 59 | 44 | 28 | 21 | 8 | 6 | 133 | 100 |
High | 71 | 22 | 165 | 50 | 80 | 24 | 14 | 4 | 330 | 100 |
By gender | ||||||||||
Male | 98 | 23 | 189 | 45 | 108 | 26 | 25 | 6 | 420 | 100 |
Female | 113 | 28 | 200 | 50 | 79 | 20 | 14 | 3 | 406 | 100 |
By age (year) | ||||||||||
<20 | 15 | 29 | 22 | 42 | 11 | 21 | 4 | 8 | 52 | 100 |
21–30 | 121 | 26 | 233 | 49 | 99 | 21 | 19 | 4 | 472 | 100 |
31–40 | 51 | 23 | 106 | 48 | 64 | 29 | 12 | 5 | 233 | 100 |
41–50 | 16 | 30 | 23 | 43 | 12 | 23 | 2 | 4 | 53 | 100 |
>50 | 8 | 50 | 5 | 31 | 1 | 6 | 2 | 13 | 16 | 100 |
By profession | ||||||||||
Non-office worker | 93 | 31 | 142 | 47 | 57 | 19 | 11 | 3 | 303 | 100 |
Office worker | 118 | 23 | 247 | 47 | 130 | 25 | 28 | 5 | 523 | 100 |
By monthly income | ||||||||||
Low-income | 141 | 35 | 195 | 48 | 55 | 14 | 14 | 4 | 405 | 100 |
Middle-income | 58 | 20 | 141 | 48 | 82 | 28 | 15 | 5 | 296 | 100 |
High-income | 12 | 10 | 53 | 42 | 50 | 40 | 10 | 8 | 125 | 100 |
By education level | ||||||||||
Low-education | 35 | 32 | 53 | 48 | 15 | 14 | 7 | 6 | 110 | 100 |
Middle-education | 152 | 25 | 283 | 46 | 149 | 24 | 28 | 5 | 612 | 100 |
High-education | 24 | 23 | 53 | 51 | 23 | 22 | 4 | 4 | 104 | 100 |
By child | ||||||||||
No | 116 | 31 | 180 | 48 | 63 | 17 | 16 | 4 | 375 | 100 |
Yes | 95 | 21 | 209 | 46 | 124 | 27 | 23 | 5 | 451 | 100 |
By car ownership | ||||||||||
Have a car | 101 | 20 | 245 | 48 | 141 | 27 | 27 | 5 | 514 | 100 |
Do not have a car | 110 | 35 | 144 | 46 | 46 | 15 | 12 | 4 | 312 | 100 |
By awareness of carsharing | ||||||||||
Know about carsharing | 67 | 16 | 211 | 49 | 130 | 30 | 21 | 5 | 429 | 100 |
Do not know about carsharing | 144 | 36 | 178 | 45 | 57 | 14 | 18 | 5 | 397 | 100 |
By price of carsharing vehicle | ||||||||||
Below 100,000 Yuan | 135 | 40 | 154 | 46 | 35 | 10 | 12 | 4 | 336 | 100 |
100 to 200,000 Yuan | 66 | 21 | 166 | 52 | 73 | 23 | 14 | 4 | 319 | 100 |
200 to 300,000 Yuan | 8 | 6 | 57 | 41 | 63 | 46 | 10 | 7 | 138 | 100 |
Above 300,000 Yuan | 2 | 6 | 12 | 36 | 16 | 49 | 3 | 9 | 33 | 100 |
Independent Variables | Willing to Forgo Car Purchases | Not Willing to Forgo Car Purchases | ||
---|---|---|---|---|
N | % | N | % | |
By CPRP | ||||
Have | 359 | 66 | 187 | 34 |
Not have | 154 | 55 | 126 | 45 |
By UPTSL | ||||
Low | 134 | 37 | 229 | 63 |
Medium | 64 | 48 | 69 | 52 |
High | 315 | 95 | 15 | 5 |
By gender | ||||
Male | 256 | 61 | 164 | 39 |
Female | 257 | 63 | 149 | 37 |
By age (year) | ||||
<20 | 21 | 40 | 31 | 60 |
21–30 | 280 | 59 | 192 | 41 |
31–40 | 163 | 70 | 70 | 30 |
41–50 | 38 | 72 | 15 | 28 |
>50 | 11 | 69 | 5 | 31 |
By profession | ||||
Non-office worker | 167 | 55 | 136 | 45 |
Office worker | 346 | 66 | 177 | 34 |
By monthly income | ||||
Low-income | 234 | 58 | 171 | 42 |
Middle-income | 194 | 66 | 102 | 34 |
High-income | 85 | 68 | 40 | 32 |
By education level | ||||
Low-education | 66 | 60 | 44 | 40 |
Middle-education | 390 | 64 | 222 | 36 |
High-education | 57 | 55 | 47 | 45 |
By child | ||||
No | 194 | 52 | 181 | 48 |
Yes | 319 | 71 | 132 | 29 |
By car ownership | ||||
Have a car | 340 | 66 | 174 | 34 |
Do not have a car | 173 | 55 | 139 | 45 |
By awareness of carsharing | ||||
Know about carsharing | 324 | 76 | 105 | 24 |
Do not know about carsharing | 189 | 47 | 208 | 53 |
By price of carsharing vehicle | ||||
Below 100,000 Yuan | 190 | 56 | 146 | 44 |
100 to 200,000 Yuan | 207 | 65 | 112 | 35 |
200 to 300,000 Yuan | 95 | 69 | 43 | 31 |
Above 300,000 Yuan | 21 | 64 | 12 | 36 |
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Wang, Y.; Yan, X.; Zhou, Y.; Xue, Q.; Sun, L. Individuals’ Acceptance to Free-Floating Electric Carsharing Mode: A Web-Based Survey in China. Int. J. Environ. Res. Public Health 2017, 14, 476. https://doi.org/10.3390/ijerph14050476
Wang Y, Yan X, Zhou Y, Xue Q, Sun L. Individuals’ Acceptance to Free-Floating Electric Carsharing Mode: A Web-Based Survey in China. International Journal of Environmental Research and Public Health. 2017; 14(5):476. https://doi.org/10.3390/ijerph14050476
Chicago/Turabian StyleWang, Yun, Xuedong Yan, Yu Zhou, Qingwan Xue, and Li Sun. 2017. "Individuals’ Acceptance to Free-Floating Electric Carsharing Mode: A Web-Based Survey in China" International Journal of Environmental Research and Public Health 14, no. 5: 476. https://doi.org/10.3390/ijerph14050476
APA StyleWang, Y., Yan, X., Zhou, Y., Xue, Q., & Sun, L. (2017). Individuals’ Acceptance to Free-Floating Electric Carsharing Mode: A Web-Based Survey in China. International Journal of Environmental Research and Public Health, 14(5), 476. https://doi.org/10.3390/ijerph14050476