Model Predictive Control Based Energy Management Strategy of Series Hybrid Electric Vehicles Considering Driving Pattern Recognition
Abstract
:1. Introduction
1.1. Literature Review
- As a complex power component, the performance of the engine in dynamic response is often unsatisfactory. In addition to the characteristics of preheating before stable operation, the battery output can be dominant when the vehicle is started. This is due to the fast response of the battery and the characteristics of the motor-low speed and large torque. Under this condition, the vehicle can start quickly and smoothly, the acceleration performance is significantly improved, the power output is stable, and the emission reduction of the vehicle is also significantly improved [3].
- The service life of the engine will be correspondingly increased because it can avoid the engine working in the inefficient area.
- During braking and downhill deceleration, the braking energy can be recovered and stored in the battery.
- The system description of vehicles is often complex and nonlinear, which has caused a huge obstacle to simulation modeling and control strategy design. How to describe the system reasonably, reasonable simplification, and mathematical processing are essential.
- The conditions encountered by the vehicle during the driving process are changeable and the speed of change is extremely fast, and the basis of energy management decision-making is difficult to accurately determine.
- The driving styles of drivers are different, and the terrain that vehicles encounter at every moment is also changeable [4,5]. Therefore, in future research, vehicles should be considered as a part of a larger system, and energy management should be allocated in combination with various information.
1.2. Motivation and Contribution
2. Driving Pattern Recognition and Speed Prediction
3. MPC-Based Energy Management Strategy
3.1. Demanded Power Calculation
3.2. System Model
3.3. Linearizing Predictive Model
3.4. Optimization Process
3.5. Interior Point Method
3.6. Simulation Results
4. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Nomenclature
HEV | hybrid electric vehicle |
EMS | energy management strategy |
EM | expectation maximization |
SOC | state of charge |
MPC | model predictive control |
ECMS | equivalent consumption minimization strategy |
DP | dynamic programming |
PR | pattern recognition |
EGS | engine generator set |
DB | Davies-Bouldin index |
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Time Error | 1st | 2nd | 3rd | 4th | 5th |
---|---|---|---|---|---|
Max error (km/h) | 0.3572 | 0.5236 | 0.7692 | 1.0751 | 1.7846 |
Ave error (km/h) | 0.2918 | 0.3982 | 0.6732 | 0.8736 | 1.2358 |
Time Error | 1st | 2nd | 3rd | 4th | 5th |
---|---|---|---|---|---|
Max error (km/h) | 0.6723 | 0.9762 | 1.3674 | 2.3268 | 3.1469 |
Ave error (km/h) | 0.4174 | 0.7214 | 0.9826 | 1.6746 | 2.3478 |
Condition Predict Method | RMSE |
---|---|
Prediction error with recognition | 1.1834 |
Prediction error without recognition | 2.0762 |
Parameter | Value | Unit |
---|---|---|
Vehicle mass m | 8000 | kg |
Radius of wheels rw | 0.38 | m |
Windward area A | 3.24 | m2 |
Air resistance coefficient CD | 0.38 | - |
rolling resistance coefficient f | 0.015 | - |
Capacity of battery pack Cmax | 20 | Ah |
Voltage of battery pack Voc | 360 | V |
Rated power of the engine | 120 | kW |
Rated power of the generator | 120 | kW |
Rated power of the motor | 160 | kW |
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Hao, J.; Ruan, S.; Wang, W. Model Predictive Control Based Energy Management Strategy of Series Hybrid Electric Vehicles Considering Driving Pattern Recognition. Electronics 2023, 12, 1418. https://doi.org/10.3390/electronics12061418
Hao J, Ruan S, Wang W. Model Predictive Control Based Energy Management Strategy of Series Hybrid Electric Vehicles Considering Driving Pattern Recognition. Electronics. 2023; 12(6):1418. https://doi.org/10.3390/electronics12061418
Chicago/Turabian StyleHao, Jinna, Shumin Ruan, and Wei Wang. 2023. "Model Predictive Control Based Energy Management Strategy of Series Hybrid Electric Vehicles Considering Driving Pattern Recognition" Electronics 12, no. 6: 1418. https://doi.org/10.3390/electronics12061418
APA StyleHao, J., Ruan, S., & Wang, W. (2023). Model Predictive Control Based Energy Management Strategy of Series Hybrid Electric Vehicles Considering Driving Pattern Recognition. Electronics, 12(6), 1418. https://doi.org/10.3390/electronics12061418