Policy Instruments for the Improvement of Customers’ Willingness to Purchase Electric Vehicles: A Case Study in Iran
Abstract
:1. Introduction
2. Literature Review
2.1. Previous Studies on EVs Preferences
2.2. Research Gap
3. Research Methodology
3.1. Formulation of the Model
3.2. Questionnaire Design & Data Collection
3.3. Discrete Choice Model
4. Survey
5. Agent-Based Model
5.1. Vehicle Choice Algorithm
5.2. Social Network
5.3. Simulation
5.4. Model Verification and Validation
5.5. Scenario Building
5.5.1. Scenario 1: EV Price
5.5.2. Scenario 2: NEVs Energy Costs
5.5.3. Scenario 3: EVs Government Incentives
5.5.4. Scenario 4: EVs Travel Range
5.5.5. Scenario 5: EVs Top Speed
6. Conclusions and Discussion
6.1. Comparative Analysis of the Results
6.2. Research Suggestions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Authors | Socio-Economic Variables | Psychological Factors | Spatial Variables | Car-Related Condition | Financial Attributes | Technical Attributes | Infrastructure Attributes | Policy Attributes |
---|---|---|---|---|---|---|---|---|
Noel et al. [15] | ✓ | ✓ | ✓ | ✓ | ✓ | |||
Byun et al. [16] | ✓ | ✓ | ✓ | ✓ | ||||
Onat et al. [17] | ✓ | ✓ | ✓ | |||||
Noori and Tatari [18] | ✓ | ✓ | ✓ | ✓ | ✓ | |||
Valeri et al. [19] | ✓ | ✓ | ✓ | ✓ | ||||
Hidrue et al. [20] | ✓ | ✓ | ✓ | ✓ | ✓ |
DCM | ||
Authors | Models | Results |
Danielis et al. [23] | Multinominal logit Random parameter logit | Purchase price, fuel economy, driving range, charge time, free parking for EVs, and financial incentives affect the probability of buying EVs. |
Nie et al. [24] | Multinominal logit Random parameter logit | Consumers preferred EVs with an extended range, a shorter charging time, a faster maximum speed, lower pollution emissions, lower fuel cost, and a lower price. |
ABM | ||
Authors | Models | Results |
Buchman et al. [25] | ABM and set of a business as usual (BAU) scenario | A combined package carbon tax on fuel, charging points, and direct subsidies affects the diffusion of EVs. |
Klein et al. [26] | ABM simulation using choice-based conjoint data | EVs’ charging time, range, and station density presumably cannibalize plug-in hybrid electric vehicle (PHEV) market shares. A government subsidy can initially promote PHEVs, but EVs will benefit later from that promotional effect. |
Attributes | Vehicles | Levels | Number of Levels |
---|---|---|---|
Travel range (km) | EV (by one full battery) | 315, 365, 450, 385, 565 | 5 |
NEV (by one full tank fuel) | 585, 780, 795, 750, 1150 | 5 | |
Refueling duration | EV | 20 min, 40 min, 1 h, 2 h, 4 h | 5 |
NEV | 10 min, 15 min | 2 | |
Top speed (km/h) | EV | 135, 150, 160, 180, 250 | 5 |
NEV | 160, 170, 185, 190, 250 | 5 | |
Energy cost (US$) | EV (Charge cost per kWh) | 0.02, 0.025, 0.03, 0.04, 0.07 | 5 |
NEV (Gasoline cost) | 0.15, 0.3, 0.35 | 3 | |
Government incentives | EV | Loan allocation, Removal of traffic restrictions, Tax removal and urban toll | 3 |
NEV | No government incentives | 1 | |
Price (US$) | EV | 8000, 10,000, 12,000, 14,000, 18,000 | 5 |
NEV | 5000, 7500, 9000, 12,000, 15,000 | 5 |
Choice Sets | Vehicles | Travel Range | Refueling Duration | Top Speed | Energy Cost | Government Incentives | Price |
---|---|---|---|---|---|---|---|
Pair 1 | EV option 1 | 315 | 2 h | 135 | 0.02 | Removal of traffic restrictions | 8000 |
EV option 2 | 565 | 20 min | 250 | 0.04 | Tax removal and urban toll | 18,000 | |
NEV | 795 | 10 min | 185 | 0.15 | No government incentives | 9000 | |
Pair 2 | EV option 1 | 450 | 20 min | 160 | 0.025 | Loan allocation | 12,000 |
EV option 2 | 455 | 40 min | 180 | 0.025 | Removal of traffic restrictions | 14,000 | |
NEV | 1150 | 10 min | 250 | 0.35 | No government incentives | 15,000 | |
Pair 3 | EV option 1 | 455 | 40 min | 180 | 0.07 | Loan allocation | 14,000 |
EV option 2 | 365 | 4 h | 150 | 0.03 | Loan allocation | 10,000 | |
NEV | 585 | 5 min | 160 | 0.15 | No government incentives | 5000 | |
Pair 4 | EV option 1 | 450 | 1 h | 160 | 0.025 | Loan allocation | 12,000 |
EV option 2 | 565 | 20 min | 250 | 0.07 | Tax removal and urban toll | 18,000 | |
NEV | 795 | 10 min | 185 | 0.3 | No government incentives | 9000 | |
Pair 5 | EV option 1 | 455 | 40 min | 180 | 0.02 | Tax removal and urban toll | 14,000 |
EV option 2 | 565 | 1 h | 250 | 0.07 | Removal of traffic restrictions | 18,000 | |
NEV | 1150 | 5 min | 250 | 0.35 | No government incentives | 15,000 | |
Pair 6 | EV option 1 | 450 | 2 h | 160 | 0.03 | Loan allocation | 12,000 |
EV option 2 | 565 | 40 min | 250 | 0.02 | Tax removal and urban toll | 18,000 | |
NEV | 780 | 10 min | 170 | 0.15 | No government incentives | 7500 | |
Pair 7 | EV option 1 | 565 | 20 min | 250 | 0.04 | Removal of traffic restrictions | 18,000 |
EV option 2 | 455 | 20 min | 180 | 0.03 | Tax removal and urban toll | 14,000 | |
NEV | 750 | 5 min | 190 | 0.3 | No government incentives | 12,000 | |
Pair 8 | EV option 1 | 450 | 20 min | 160 | 0.03 | Tax removal and urban toll | 12,000 |
EV option 2 | 565 | 4 h | 250 | 0.025 | Loan allocation | 18,000 | |
NEV | 780 | 5 min | 170 | 0.3 | No government incentives | 7500 |
Attributes | EV Option 1 | EV Option 2 | NEV |
---|---|---|---|
Travel range (km) | 315 | 565 | 795 |
Refueling duration | 2 h | 20 min | 10 min |
Top speed (km/h) | 135 | 250 | 185 |
Energy cost (US$) | 0.02 | 0.04 | 0.15 |
Government incentives | Removal of traffic restrictions | Tax removal and urban toll | No government incentives |
Price (US$) | 8000 | 18,000 | 9000 |
The preferred choice between these vehicles is according to the above attributes. |
Statement 1 | I usually recommend the car I buy to others. |
Statement 2 | I usually talk to my friends a lot about the price and features of the appropriate car. |
Statement 3 | I listen to people’s advice to buy a car. |
Statement 4 | I have full knowledge of electric cars. |
Statements | Weighted Average Score | |
---|---|---|
Statement 1 | I usually recommend the car I buy to others. | 4.91 |
Statement 2 | I usually talk to my friends a lot about the price and features of the appropriate car. | 4.37 |
Statement 3 | I listen to people’s advice to buy a car. | 3.75 |
Statement 4 | I have full knowledge of electric cars. | 3.41 |
Total Average | 4.11 |
Attributes | Vehicles | Coefficient | Std. Error | P > |Z| |
---|---|---|---|---|
Price | EV | −0.0066 | 0.0049 | 0.000 |
NEV | −0.0041 | 0.0074 | 0.005 | |
Travel range | EV | 0.0087 | 0.0094 | 0.000 |
NEV | 0.0128 | 0.0071 | 0.002 | |
Top speed | EV | 0.0086 | 0.0039 | 0.007 |
NEV | 0.0119 | 0.0096 | 0.091 | |
Government incentives | EV | 0.0251 | 0.0057 | 0.047 |
NEV | 0.0072 | 0.0037 | 0.000 | |
Energy cost | EV | −0.0069 | 0.0063 | 0.001 |
(0.0566) | (0.0031) | |||
NEV | −0.0059 | 0.0041 | 0.014 | |
(0.0111) | (0.0045) | |||
Log simulated likelihood | −5702.135 | |||
Number of observations | 9024 | |||
Wald chi2 (2) | 104.77 | |||
Prob > Chi2 | 0.0000 |
Income Group Attributes | High | Middle | Low |
---|---|---|---|
The Mean of Beta Coefficients | |||
Price | −0.0021 (0.0167) | −0.0077 (0.0619) | −0.0068 (0.0093) |
Top speed | 0.0013 (0.0095) | 0.0897 (0.0214) | 0.0767 (0.0228) |
Energy cost | −0.0214 (0.0037) | −0.0041 (0.0071) | −0.0085 (0.0056) |
Travel range | 0.0916 (0.0271) | 0.0011(0.0012) | 0.0285(0.0108) |
Government incentives | 0.0671 (0.0813) | 0.01708 (0.0057) | 0.0075 (0.0091) |
Number of observations | 3960 | 3072 | 1992 |
Log simulated likelihood | −301.0409 | −231.7124 | −521.9007 |
Wald chi2 (2) | 2.92 | 12.35 | 37.33 |
Prob > Chi2 | 0.0000 | 0.0000 | 0.003 |
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Allahmoradi, E.; Mirzamohammadi, S.; Bonyadi Naeini, A.; Maleki, A.; Mobayen, S.; Skruch, P. Policy Instruments for the Improvement of Customers’ Willingness to Purchase Electric Vehicles: A Case Study in Iran. Energies 2022, 15, 4269. https://doi.org/10.3390/en15124269
Allahmoradi E, Mirzamohammadi S, Bonyadi Naeini A, Maleki A, Mobayen S, Skruch P. Policy Instruments for the Improvement of Customers’ Willingness to Purchase Electric Vehicles: A Case Study in Iran. Energies. 2022; 15(12):4269. https://doi.org/10.3390/en15124269
Chicago/Turabian StyleAllahmoradi, Elham, Saeed Mirzamohammadi, Ali Bonyadi Naeini, Ali Maleki, Saleh Mobayen, and Paweł Skruch. 2022. "Policy Instruments for the Improvement of Customers’ Willingness to Purchase Electric Vehicles: A Case Study in Iran" Energies 15, no. 12: 4269. https://doi.org/10.3390/en15124269
APA StyleAllahmoradi, E., Mirzamohammadi, S., Bonyadi Naeini, A., Maleki, A., Mobayen, S., & Skruch, P. (2022). Policy Instruments for the Improvement of Customers’ Willingness to Purchase Electric Vehicles: A Case Study in Iran. Energies, 15(12), 4269. https://doi.org/10.3390/en15124269