Empirical Analysis of Parking Behaviour of Conventional and Electric Vehicles for Parking Modelling: A Case Study of Beijing, China
Abstract
:1. Introduction
1.1. General Parking Behaviour of Conventional Vehicles (CVs)
1.2. Parking Behaviour of Electric Vehicles (EVs)
1.3. Research Gaps
2. Methodology
2.1. Questionnaire Design
2.2. Survey Design
2.3. Statistical Analysis of Heterogenous Parking Behaviour: Multinomial Logit (MNL) Model
3. Survey Results
3.1. General Results
3.2. The Influence of Parking Fee
3.3. A Comparative Study of Parking Behaviours of BEV and PHEV
- PHEVs with sufficient charge—Sex;
- PHEVs with insufficient charge—Age and education level;
- BEVs with sufficient charge—Household income and the number of vehicles owned.
3.4. The Influence of Range Anxiety of BEV Drivers
4. A Conceptual Design for Agent-Based Modelling of Parking Behaviour with the Empirical Findings
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
Appendix A. Questionnaire Design
- Plug-in Hybrid Electric Vehicle (PHEV): runs on both electricity and petrol. The vehicle can still run on petrol when the electricity is used up. The electric driving range is around 50 km and the petrolic range is the same as that of a conventional vehicle.
- Battery Electric Vehicle (BEV): only runs on electricity. Its driving range is about 150 to 200 km.
- Charging Post: is one common charging facility and is mostly located at parking lots. Drivers can connect their electric vehicles to charging posts and get their vehicles charged when they are parked. It takes around 8 h to fully charge a battery electric vehicle, which means you can obtain around 25 km driving range with one-hour charging and can save 8 Yuan, compared with refuelling.
Appendix B. General Results of the Survey
Appendix C. Figures for Parking Fee
Appendix C.1. Case 1: Saving 5 RMB for Parking Fee
Appendix C.2. Case 2: Saving 10 RMB for Parking Fee
Appendix C.3. Case 3: Saving 20 RMB for Parking Fee
Appendix D. Figures for Comparative Studies of BEV and PHEV Parking Behaviour
Appendix D.1. Case 1: PHEV with Sufficient Change
Appendix D.2. Case 2: PHEV with Insufficient Change
Appendix D.3. Case 3: BEV with Sufficient Change
Appendix E. Figures for the Minimum Driving Range of BEV
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Scenarios | Your Choice (Maximum Acceptable Walking Time?) | |||
---|---|---|---|---|
If you choose parking lot B, you will save… | 5 RMB | A.3 min | B.5 min | C.8 min |
D.10 min | E.15 min | F. Others:____ | ||
10 RMB | A.3 min | B.5 min | C.8 min | |
D.10 min | E.15 min | F. Others:____ | ||
20 RMB | A.3 min | B.5 min | C.8 min | |
D.10 min | E.15 min | F. Others:____ |
Walking Time | Parking Fee -5 RMB | Parking Fee -10 RMB | Parking Fee -20 RMB | |||
---|---|---|---|---|---|---|
Coef. | z value | Coef. | z value | Coef. | z value | |
Choice 1 = 3 Min | ||||||
Age | −0.317046 | −2.07 | ||||
Education | 0.3005372 | 1.67 | ||||
Indincome | 0.1819307 | 2.11 | ||||
Sex | −0.92659 | −2.44 | −0.779752 | −1.86 | −0.228113 | −0.79 |
LicenseNum | −0.397464 | −0.53 | ||||
VehicleNum | 0.5519227 | 1.84 | ||||
Constant | 3.091553 | 5 | 1.412477 | 0.74 | −0.309081 | −0.32 |
Choice 2 = 5 Min | ||||||
Age | −0.141183 | −0.84 | ||||
Education | 0.4422604 | 2.6 | ||||
Indincome | 0.1487178 | 1.55 | ||||
Sex | −0.776529 | −2.04 | −0.691521 | −1.76 | −0.214762 | −0.66 |
LicenseNum | −0.964162 | −1.35 | ||||
VehicleNum | 0.0691371 | 0.2 | ||||
Constant | 2.791432 | 4.48 | 2.270291 | 1.25 | −0.129166 | −0.12 |
Choice 3 = 8 Min | ||||||
Age | −0.06501 | −0.4 | ||||
Education | 0.5880812 | 3.15 | ||||
Indincome | 0.0517238 | 0.55 | ||||
Sex | −0.802962 | −1.7 | −0.831337 | −2 | −0.309132 | −0.96 |
LicenseNum | −1.065447 | −1.39 | ||||
VehicleNum | 0.1808234 | 0.53 | ||||
Constant | 1.382781 | 1.85 | 1.300065 | 0.66 | −0.096586 | −0.09 |
Choice 4 = 10 Min | ||||||
Age | −0.196092 | −1.35 | ||||
Education | 0.4213494 | 2.29 | ||||
Indincome | 0.0800174 | 0.96 | ||||
Sex | −0.921205 | −2.2 | −0.64047 | −1.53 | −0.596636 | −2.1 |
LicenseNum | −0.874026 | −1.14 | ||||
VehicleNum | −0.32002 | −1.03 | ||||
Constant | 2.213973 | 3.31 | 1.498277 | 0.77 | 2.349504 | 2.46 |
Note: Choice 5 (=15 Min) is the base outcome |
Walking Time | PHEV (Sufficient) | PHEV (Insufficient ) | BEV (Sufficient) | |||
---|---|---|---|---|---|---|
Coef. | z value | Coef. | z value | Coef. | z value | |
Choice 1 = 3 Min | ||||||
Age | −0.443081 | −2.37 | ||||
Education | −0.374984 | −2.17 | ||||
Sex | 0.0660901 | 0.18 | ||||
HouIncome | 0.3592022 | 2.06 | ||||
VehicleNum | −0.639558 | −1.63 | ||||
Constant | 0.5844975 | 1.03 | 3.323677 | 2.64 | 0.9812186 | 1.1 |
Choice 2 = 5 Min | ||||||
Age | −0.167095 | −1.11 | ||||
Education | −0.235379 | −1.55 | ||||
Sex | −0.255404 | −0.75 | ||||
HouIncome | 0.358516 | 2.22 | ||||
VehicleNum | −0.887167 | −2.49 | ||||
Constant | 1.57716 | 3.01 | 2.353227 | 2.12 | 2.181667 | 2.7 |
Choice 3 = 8 Min | ||||||
Age | −0.31517 | −1.98 | ||||
Education | −0.21266 | −1.35 | ||||
Sex | −0.132172 | −0.37 | ||||
HouIncome | 0.331195 | 1.95 | ||||
VehicleNum | −0.944234 | −2.46 | ||||
Constant | 1.048463 | 1.91 | 2.55387 | 2.22 | 1.969183 | 2.28 |
Choice 4 = 10 Min | ||||||
Age | −0.37386 | −2.54 | ||||
Education | −0.096791 | −0.65 | ||||
Sex | −0.717245 | −2.04 | ||||
HouIncome | 0.342629 | 2.1 | ||||
VehicleNum | −0.547569 | −1.54 | ||||
Constant | 2.103539 | 3.97 | 2.50321 | 2.3 | 1.327651 | 1.63 |
Note: Choice 5 (=15 Min) is the base outcome |
BEV Driving Range | Coef. | Std. Err. | z | P > z | [95% Conf.Interval] | |
---|---|---|---|---|---|---|
Choice 1 = 55 km | ||||||
VehicleNum | −0.42947 | 0.442247 | −0.97 | 0.331 | −1.29626 | 0.437319 |
Education | −0.74948 | 0.203826 | −3.68 | 0 | −1.14897 | −0.34999 |
LicenseNum | 1.64212 | 0.822484 | 2 | 0.046 | 0.03008 | 3.254159 |
Constant | 1.67083 | 2.116229 | 0.79 | 0.43 | −2.4769 | 5.818563 |
Choice 2 = 60 km | ||||||
VehicleNum | −0.30374 | 0.350236 | −0.87 | 0.386 | −0.99019 | 0.382709 |
Education | −0.2634 | 0.189578 | −1.39 | 0.165 | −0.63496 | 0.108172 |
LicenseNum | 1.552505 | 0.681592 | 2.28 | 0.023 | 0.216609 | 2.8884 |
Constant | −0.32831 | 1.879291 | −0.17 | 0.861 | −4.01165 | 3.355031 |
Choice 3 = 70 km | ||||||
VehicleNum | −0.70268 | 0.340072 | −2.07 | 0.039 | −1.36921 | −0.03615 |
Education | −0.26739 | 0.181346 | −1.47 | 0.14 | −0.62282 | 0.088046 |
LicenseNum | 1.373702 | 0.652634 | 2.1 | 0.035 | 0.094564 | 2.652841 |
Constant | 1.26546 | 1.794359 | 0.71 | 0.481 | −2.25142 | 4.78234 |
Choice 4 = 80 km | ||||||
VehicleNum | −0.73018 | 0.324226 | −2.25 | 0.024 | −1.36565 | −0.09471 |
Education | −0.16696 | 0.177314 | −0.94 | 0.346 | −0.51449 | 0.180566 |
LicenseNum | 1.084067 | 0.617689 | 1.76 | 0.079 | −0.12658 | 2.294715 |
Constant | 1.596194 | 1.728342 | 0.92 | 0.356 | −1.7913 | 4.983682 |
Choice 5 = 90 km | ||||||
VehicleNum | 0.211941 | 0.413675 | 0.51 | 0.608 | −0.59885 | 1.02273 |
Education | −0.28725 | 0.224196 | −1.28 | 0.2 | −0.72666 | 0.152169 |
LicenseNum | 1.122391 | 0.814865 | 1.38 | 0.168 | −0.47471 | 2.719497 |
Constant | −1.35403 | 2.247921 | −0.6 | 0.547 | −5.75987 | 3.051817 |
Note: Choice 6 (=100 km) is the base outcome |
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Share and Cite
Zhuge, C.; Shao, C.; Li, X. Empirical Analysis of Parking Behaviour of Conventional and Electric Vehicles for Parking Modelling: A Case Study of Beijing, China. Energies 2019, 12, 3073. https://doi.org/10.3390/en12163073
Zhuge C, Shao C, Li X. Empirical Analysis of Parking Behaviour of Conventional and Electric Vehicles for Parking Modelling: A Case Study of Beijing, China. Energies. 2019; 12(16):3073. https://doi.org/10.3390/en12163073
Chicago/Turabian StyleZhuge, Chengxiang, Chunfu Shao, and Xia Li. 2019. "Empirical Analysis of Parking Behaviour of Conventional and Electric Vehicles for Parking Modelling: A Case Study of Beijing, China" Energies 12, no. 16: 3073. https://doi.org/10.3390/en12163073
APA StyleZhuge, C., Shao, C., & Li, X. (2019). Empirical Analysis of Parking Behaviour of Conventional and Electric Vehicles for Parking Modelling: A Case Study of Beijing, China. Energies, 12(16), 3073. https://doi.org/10.3390/en12163073