Cooperative Vehicle Infrastructure System or Autonomous Driving System? From the Perspective of Evolutionary Game Theory
Abstract
:1. Introduction
- (1)
- We develop an evolutionary game model to investigate the interaction mechanism of government and manufacturer’s investment policies in autonomous driving.
- (2)
- We estimate how investment decisions of governments and auto manufacturers in autonomous driving can ultimately shape the outcome.
- (3)
- We investigate different scenarios that might occur depending on the starting conditions and the benefits/costs of each technology of autonomous driving.
- (4)
- We predict the choices of government (whether or not to upgrade the road infrastructure) and auto manufacturers (whether to produce RIVs or ADVs).
2. Literature Review
3. Methodology
3.1. Basic Assumptions
3.2. Profit Function of RIVs and ADVs
- (1)
- The products have the same material properties or can be similar substitutes for each other;
- (2)
- The sum of market percent rate of products is 1;
- (3)
- Consumers are evenly distributed in the [0, 1] range and have unit demand.
3.3. Establishment of Evolutionary Game Model
3.3.1. Investment Strategy Analysis of Manufacturers
3.3.2. Investment Strategy Analysis of Governments
3.4. System Stability Analysis
4. Numerical Simulation Analysis
4.1. Data and Parameters
4.2. Simulation Results
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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References | Electric Vehicles | CVIS or ADS | Technical Research | Policy Research |
---|---|---|---|---|
[5,6,7,8,9,10,11,12] | ✓ | ✓ | ||
[13,14,17] | ✓ | |||
[15] | ✓ | ✓ | ||
[18,19] | ✓ | ✓ | ||
[20,21,22,23,24,25,26,27,28] | ✓ | ✓ |
Parameters | Description | Parameters | Description |
---|---|---|---|
selling prices of RIVs and ADVs | local government profits from the CVIS | ||
manufacturing costs of RIVs and ADVs | subsidies for RIVs manufacturers from local governments | ||
intelligent levels of RIVs and ADVs | benefits of ADVs manufacturers from computing power and storage unit trading | ||
base values of RIVs and ADVs | cost of the building, developing and maintaining of roadside infrastructure | ||
the profit of RIVs and ADVs | the coverage ratio of roadside infrastructure | ||
consumer’s intelligent preference | user sensitivity to the roadside infrastructure coverage | ||
net utility specification of RIVs consumers | T | travel cost | |
net utility specification of ADVs consumers | the evolutionary game domain | ||
decision space matrix | the difference in fuel consumption per mile of a vehicle before and after the implementation of CVIS | ||
driving cost benefit | the fuel consumption of a car under conventional conditions | ||
travel time cost benefit | the percentage of fuel efficiency savings when a vehicle operates within a CVIS environment | ||
the annual mileage traveled | the average fuel price for that particular year | ||
time saved in travel upon the utilization of CVIS | the number of vehicles of a specific model retained for that year | ||
the societal value of an individual’s unit of time | the percentage of time savings in a CVIS environment |
Equilibrium Point | ||
---|---|---|
(0,0) | ||
(0,1) | ||
(1,0) | ||
(1,1) |
Equilibrium Point | Stability | ||
---|---|---|---|
(0,0) | + | + | Unstable |
(0,1) | − | Saddle point | |
(1,0) | − | Saddle point | |
(1,1) | + | − | ESS |
− | 0 | Saddle point |
Equilibrium Point | Stability | ||
---|---|---|---|
(0,0) | Saddle point | ||
(0,1) | Saddle point | ||
(1,0) | + | + | Unstable |
(1,1) | + | ESS | |
+ | 0 | Non-system local equilibrium point |
Equilibrium Point | Stability | ||
---|---|---|---|
(0,0) | + | − | ESS |
(0,1) | + | + | Unstable |
(1,0) | − | Saddle point | |
(1,1) | − | Saddle point | |
− | 0 | Saddle point |
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Bai, W.; Wen, X.; Zhang, J.; Li, L. Cooperative Vehicle Infrastructure System or Autonomous Driving System? From the Perspective of Evolutionary Game Theory. Mathematics 2024, 12, 1404. https://doi.org/10.3390/math12091404
Bai W, Wen X, Zhang J, Li L. Cooperative Vehicle Infrastructure System or Autonomous Driving System? From the Perspective of Evolutionary Game Theory. Mathematics. 2024; 12(9):1404. https://doi.org/10.3390/math12091404
Chicago/Turabian StyleBai, Wei, Xuguang Wen, Jiayan Zhang, and Linheng Li. 2024. "Cooperative Vehicle Infrastructure System or Autonomous Driving System? From the Perspective of Evolutionary Game Theory" Mathematics 12, no. 9: 1404. https://doi.org/10.3390/math12091404
APA StyleBai, W., Wen, X., Zhang, J., & Li, L. (2024). Cooperative Vehicle Infrastructure System or Autonomous Driving System? From the Perspective of Evolutionary Game Theory. Mathematics, 12(9), 1404. https://doi.org/10.3390/math12091404