Energy Management Strategy for P1 + P3 Plug-In Hybrid Electric Vehicles
Abstract
:1. Introduction
2. Materials and Methods
2.1. Structure of the P1 + P3 Plug-in Hybrid Powertrain System
2.2. Rule-Based Energy Management Strategy
2.2.1. Low- to Mid-Speed Phase
- Determining whether the vehicle operates in driving mode or regenerative braking mode based on the overall vehicle torque demand.
- Deciding whether to enter EM alone or extended-range mode and whether to engage energy recovery based on SOC status.
- Based on the maximum regenerative braking capability of the P3 motor, determining whether to engage in blended braking.
2.2.2. High-Speed Phase
3. Modeling
3.1. Engine Characteristic Model
3.2. Drive Motor Characteristic Model
3.3. Power Battery Pack Model
3.4. Vehicle Dynamics Model
4. Results and Discussion
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Operating Modes | Status of Key Components | ||||
---|---|---|---|---|---|
Engine | P1 Motor | P3 Motor | Power Battery | Clutch | |
EM alone | OFF | OFF | ON | discharged | disengaged |
Extended-range mode | ON | ON | ON | charged | engaged |
ICE alone | ON | OFF | OFF | idle | engaged |
Combined ICE-EM | ON | ON | OFF | discharged | engaged |
Power split | ON | ON | OFF | charged | engaged |
Regenerative braking | OFF | OFF | ON | charged | disengaged |
Operating Modes | Switching Logic | Torque Allocation | |
---|---|---|---|
Condition 1 | Condition 2 | ||
EM alone | |||
Extended-range mode | — | ||
Regenerative braking | |||
Operating Modes | Switching Logic | Torque Allocation | |
---|---|---|---|
Condition 1 | Condition 2 | ||
ICE alone | |||
Combined ICE-EM | |||
- | |||
Power split | |||
Regenerative braking | |||
Variable Names | Variable Descriptions |
---|---|
Minimum SOC threshold value | |
Maximum SOC threshold value | |
Vehicle wheel-end torque demand | |
Engine maximum torque | |
Engine minimum operating torque threshold value | |
Engine high-efficiency zone optimal torque | |
P1 motor maximum regenerative torque | |
P1 motor maximum drive torque | |
P3 motor maximum regenerative torque | |
P3 motor maximum drive torque |
Project | Parameters | Numerical |
---|---|---|
Vehicle | Curb weight | 2130 kg |
Total mass | 2545 kg | |
Frontal area | 2.26 m2 | |
Drag coefficient | 0.33 | |
Engine | Engine displacement | 1.5 L |
Engine power | 105 kW | |
P1 motor | Peak power | 47 kW |
Peak torque | 75 Nm | |
Maximum RPM | 11,000 rpm | |
P3 motor | Peak power | 300 kW |
Peak torque | 300 Nm | |
Maximum RPM | 14,500 rpm | |
Tires | Rolling radius | 287 mm |
Transmission | Gear ratio | 1:0.75 |
Power battery | Battery pack capacity | 11.52 kWh |
Battery pack rated voltage | 320 V |
Vehicle Models | Fuel Consumption Per Hundred Kilometers (L) | Fuel Efficiency Gain |
---|---|---|
Conventional vehicle | 10.00 | — |
P1 + P3 hybrid electric vehicle | 6.74 | 67.4% |
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Share and Cite
Zhang, B.; Shi, P.; Mou, X.; Li, H.; Zhao, Y.; Zheng, L. Energy Management Strategy for P1 + P3 Plug-In Hybrid Electric Vehicles. World Electr. Veh. J. 2023, 14, 332. https://doi.org/10.3390/wevj14120332
Zhang B, Shi P, Mou X, Li H, Zhao Y, Zheng L. Energy Management Strategy for P1 + P3 Plug-In Hybrid Electric Vehicles. World Electric Vehicle Journal. 2023; 14(12):332. https://doi.org/10.3390/wevj14120332
Chicago/Turabian StyleZhang, Bo, Peilin Shi, Xiangli Mou, Hao Li, Yushuai Zhao, and Liaodong Zheng. 2023. "Energy Management Strategy for P1 + P3 Plug-In Hybrid Electric Vehicles" World Electric Vehicle Journal 14, no. 12: 332. https://doi.org/10.3390/wevj14120332
APA StyleZhang, B., Shi, P., Mou, X., Li, H., Zhao, Y., & Zheng, L. (2023). Energy Management Strategy for P1 + P3 Plug-In Hybrid Electric Vehicles. World Electric Vehicle Journal, 14(12), 332. https://doi.org/10.3390/wevj14120332