A Dual Distribution Control Method for Multi-Power Components Energy Output of 4WD Electric Vehicles
Abstract
:1. Introduction
- In the driving and braking process, given the existence of multiple power components in the 4WD EV, the dual equivalent consumption strategy is adopted to realize the energy distribution of the front and rear motors. The economy and driving range of the vehicle are further improved.
- The braking and driving are integrated under the same control framework to solve multiple controls. At the same time, during the braking process, the maximum braking force of the motor is used to optimize the influence of the motor braking force on the vehicle stability at different vehicle speeds.
2. The Studied 4WD EV and Model Construction
2.1. The Studied 4WD EV
2.2. Vehicle Dynamic Model
2.3. Motor Model
2.4. Battery Model
3. Methodology
3.1. Driving Energy Distribution Strategy of Front and Rear Motors Based on the Equivalent Consumption Minimization Strategy
3.2. Vehicle Braking Strategy Based on Series
3.3. The Braking Energy Recovery System Strategy of Front and Rear Motors Based on the Equivalent Minimum Consumption Strategy
4. Simulation Results and Analysis
4.1. The Change and Analysis of SOC under Different Control Strategies
4.2. Qualitative Comparison and Analysis of Front and Rear Motors
4.3. Quantitative Comparison and Analysis of the Efficiency Distribution of the Front and Rear Motors
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Parameter | Unit | Value |
---|---|---|
Vehicle Mass | kg | 1580 |
Vehicle Maximum velocity | km/h | 170 |
Wheel rolling radius | m | 0.35 |
Frontal area | m2 | 1.8 |
Front motor maximum power | kW | 137 |
Front motor maximum torque | Nm | 219 |
Rear motor maximum power | kW | 87 |
Rear motor maximum torque | Nm | 230 |
Battery capacity | kWh | 47.5 |
Battery rated voltage | V | 365 |
Control Strategy | Description of Control Strategy |
---|---|
RB | Under the driving state, the front and rear motors adopt a fixed proportion of energy output, and the vehicle has no braking energy recovery system. |
Bra-RB | Under the driving and braking state, the front and rear motors adopt a fixed a proportion of energy output. |
ECMS-drive | Under the driving state, ECMS is used for driving energy distribution of the front and rear motors. Under the braking state, the front and rear motors adopt a fixed proportion of the braking energy recovery system. |
D-ECMS | Under the driving and braking state, ECMS is used for driving energy distribution of the front and rear motors. |
Control Strategy | Terminal SOC | Economy (Relative to RB) |
---|---|---|
RB | 0.4846 | |
Ber-RB | 0.4928 | 1.69% |
ECMS-drive | 0.4992 | 3.01% |
D-ECMS | 0.5057 | 4.35% |
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Guo, Z.; Chu, L.; Hou, Z.; Wang, Y.; Hu, J.; Sun, W. A Dual Distribution Control Method for Multi-Power Components Energy Output of 4WD Electric Vehicles. Sensors 2022, 22, 9597. https://doi.org/10.3390/s22249597
Guo Z, Chu L, Hou Z, Wang Y, Hu J, Sun W. A Dual Distribution Control Method for Multi-Power Components Energy Output of 4WD Electric Vehicles. Sensors. 2022; 22(24):9597. https://doi.org/10.3390/s22249597
Chicago/Turabian StyleGuo, Zhiqi, Liang Chu, Zhuoran Hou, Yinhang Wang, Jincheng Hu, and Wen Sun. 2022. "A Dual Distribution Control Method for Multi-Power Components Energy Output of 4WD Electric Vehicles" Sensors 22, no. 24: 9597. https://doi.org/10.3390/s22249597
APA StyleGuo, Z., Chu, L., Hou, Z., Wang, Y., Hu, J., & Sun, W. (2022). A Dual Distribution Control Method for Multi-Power Components Energy Output of 4WD Electric Vehicles. Sensors, 22(24), 9597. https://doi.org/10.3390/s22249597