Adaptive Equivalent Fuel Consumption Minimization Based Energy Management Strategy for Extended-Range Electric Vehicle
Abstract
:1. Introduction
2. Adaptive ECMS Energy Management Strategy
2.1. Mathematical Description of ECMS
2.2. Adaptive Adjustment of Equivalent Factor
2.3. Penalty Item for Frequent Start and Stop of Range Extender
3. Parameter Optimization of the A-ECMS
3.1. Vehicle Simulation Platform
3.2. Adaptive Equivalent Factor Optimization
3.3. Start–Stop Penalty Factor Optimization
4. A-ECMS Strategy Verification
5. Conclusions
- The A-ECMS for extended-range electric vehicles, based on the adaptive equivalent factor of SOC feedback and a PI controller, is designed. After the tuning of the PI coefficients, the adaptive equivalent factor can not only make the final SOC reach the target SOC as close as possible at the end of the trip, but also keep the control system stable. From the verification results, the final SOC under the A-ECMS is 30.3%, and the deviation from the target SOC is only 0.3%.
- Considering the start–stop dynamic characteristics of the range extender, a start–stop penalty term for the range extender is added to the original Hamiltonian function. When a penalty start–stop factor of 0.02 is added, compared with the original A-ECMS, the start–stop times of the range extender are obviously reduced, and the fuel consumption during the entire trip drops from 1.631 L to 1.591 L.
- Based on the vehicle simulation platform, the proposed A-ECMS is verified under the WLTC. Compared with the thermostat and the power-following strategy, the A-ECMS shows a better fuel economy performance and lower battery ohmic losses. The comprehensive fuel consumption of the A-ECMS is 6.78 L/100 km, which is 6.2% lower than the thermostat strategy and 3.8% lower than the power following strategy. The ampere-hour flux of the battery of the A-ECMS is 10.78 Ah, which is 10.26 Ah lower than the thermostat strategy and 3.69 Ah lower than the power following strategy, which also proves that the A-ECMS is more conducive to prolonging the battery life.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
EMS | Energy Management Strategy |
A-ECMS | Adaptive Equivalent Fuel Consumption Minimization Strategy |
ECMS | Equivalent Fuel Consumption Minimization Strategy |
PMP | Pontryagin’s Minimum Principle |
SOC | State Of Charge |
PI | Proportional–Integral |
ISG | Integrated Starter Generator |
MPC | Model Predictive Control |
ANN-ECMS | Artificial Neural Network Involved Equivalent Fuel Consumption Minimization Strategy |
DP | Dynamic Programming |
CS | Charge-Sustaining |
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Items | Parameter | Value |
---|---|---|
Vehicle | No-load mass/kg | 1740 |
Wheel radius/m | 0.33 | |
Windward area/m2 | 2.586 | |
Air drag coefficient | 0.374 | |
Rolling resistance coefficient | 0.01 | |
Main reducer speed ratio | 8 | |
Drivetrain efficiency | 90% | |
Rotating mass conversion factor | 1.15 | |
Engine | Type | Inline four-cylinder gasoline engine |
Displacement/L | 1.5 | |
Rated power/kW | 45 | |
Maximum power/kW | 78 | |
Maximum torque/(N·m) | 140 | |
Maximum speed/rpm | 5200 | |
ISG motor | Type | Permanent magnet synchronous motor |
Maximum power/kW | 60 | |
Maximum speed/rpm | 5000 | |
Maximum torque/(N·m) | 167 | |
Motor | Type | Permanent magnet synchronous motor |
Maximum power/kW | 125 | |
Maximum speed/rpm | 12,000 | |
Maximum torque/(N·m) | 320 | |
Battery | Type | Ternary polymer lithium battery |
Capacity/Ah | 50 | |
Number of series/parallels | 96/1 | |
Nominal voltage/V | 345.6 |
Start–Stop Penalty Factors | Fuel Consumption/L |
---|---|
0 | 1.631 |
0.01 | 1.614 |
0.02 | 1.591 |
0.03 | 1.617 |
0.04 | 1.622 |
0.05 | 1.644 |
Vehicle Demand Power (kW) | Working Point of Range Extender (kW) | The Minimum Specific Fuel Consumption (g·kW−1·h−1) |
---|---|---|
<15 | 15 | 277.8 |
15–20 | 20 | 271.5 |
20–25 | 25 | 262.1 |
25–30 | 30 | 269.2 |
30–35 | 35 | 271.2 |
35–40 | 40 | 270.8 |
>40 | 45 | 273.9 |
Energy Consumption Items | Thermostat Strategy | Power Following Strategy | A-ECMS |
---|---|---|---|
Final SOC (%) | 30.7 | 32.3 | 30.3 |
Battery ohmic loss (kJ) | 751.7 | 454.8 | 217.4 |
Ampere-hour flux (Ah) | 21.04 | 14.477 | 10.78 |
Fuel consumption (L) | 1.708 | 1.768 | 1.591 |
Comprehensive fuel consumption (L) | 1.679 | 1.639 | 1.574 |
Comprehensive fuel consumption (L/100 km) | 7.23 | 7.05 | 6.78 |
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Yao, D.; Lu, X.; Chao, X.; Zhang, Y.; Shen, J.; Zeng, F.; Zhang, Z.; Wu, F. Adaptive Equivalent Fuel Consumption Minimization Based Energy Management Strategy for Extended-Range Electric Vehicle. Sustainability 2023, 15, 4607. https://doi.org/10.3390/su15054607
Yao D, Lu X, Chao X, Zhang Y, Shen J, Zeng F, Zhang Z, Wu F. Adaptive Equivalent Fuel Consumption Minimization Based Energy Management Strategy for Extended-Range Electric Vehicle. Sustainability. 2023; 15(5):4607. https://doi.org/10.3390/su15054607
Chicago/Turabian StyleYao, Dongwei, Xinwei Lu, Xiangyun Chao, Yongguang Zhang, Junhao Shen, Fanlong Zeng, Ziyan Zhang, and Feng Wu. 2023. "Adaptive Equivalent Fuel Consumption Minimization Based Energy Management Strategy for Extended-Range Electric Vehicle" Sustainability 15, no. 5: 4607. https://doi.org/10.3390/su15054607
APA StyleYao, D., Lu, X., Chao, X., Zhang, Y., Shen, J., Zeng, F., Zhang, Z., & Wu, F. (2023). Adaptive Equivalent Fuel Consumption Minimization Based Energy Management Strategy for Extended-Range Electric Vehicle. Sustainability, 15(5), 4607. https://doi.org/10.3390/su15054607