Practical Application-Oriented Energy Management for a Plug-In Hybrid Electric Bus Using a Dynamic SOC Design Zone Plan Method
Abstract
:1. Introduction
2. The Description of the PHEB
3. The Formulation of the RL-Based Energy Management
3.1. The Formulation of PMP
3.2. The Design of the Dynamic SOC Design Zone
3.3. The Formalation of the RL-Based Energy Managemtn
- (1)
- The state
- (2)
- The action
- (3)
- The reward
- (4)
- The ε-greedy algorithm
- (5)
- The RL-based energy management algorithm
1: initializing the Q and R tables with null matrix |
2: for episode = 1, M do |
3: for t = 1, T do |
4: observing the current state () |
5: selecting the action with ε-greedy algorithm |
6: executing the action() and observing the next state |
7: calculating the immediate reward based on Eq. (11) |
8: updating the Q-Table by: |
9: end |
10: if the feedback SOC is bigger than 0.85 or lower than 0.25 or abs () is bigger than 0.04 11: continue; |
12: end |
13: end |
14: end |
4. Result Discussions
4.1. The Training Process
4.2. The Off-Line Verification
4.3. The Hardware in Loop Simulation Verify
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Combined Driving Cycle | RL-Based (L/100 km) | Rule-Based (L/100 km) | Fuel Consumption Comparison |
---|---|---|---|
No.7 | 16.8738 | 18.9497 | −10.95% |
No.8 | 16.6673 | 18.8939 | −11.78% |
Combined Driving Cycle | RL-Based (L/100 km) | Rule-Based (L/100 km) | Fuel Consumption Comparison |
---|---|---|---|
No.9 | 15.2956 | 17.5642 | −12.92% |
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Han, W.; Chu, X.; Shi, S.; Zhao, L.; Zhao, Z. Practical Application-Oriented Energy Management for a Plug-In Hybrid Electric Bus Using a Dynamic SOC Design Zone Plan Method. Processes 2022, 10, 1080. https://doi.org/10.3390/pr10061080
Han W, Chu X, Shi S, Zhao L, Zhao Z. Practical Application-Oriented Energy Management for a Plug-In Hybrid Electric Bus Using a Dynamic SOC Design Zone Plan Method. Processes. 2022; 10(6):1080. https://doi.org/10.3390/pr10061080
Chicago/Turabian StyleHan, Wenxiao, Xiaohua Chu, Sui Shi, Ling Zhao, and Zhen Zhao. 2022. "Practical Application-Oriented Energy Management for a Plug-In Hybrid Electric Bus Using a Dynamic SOC Design Zone Plan Method" Processes 10, no. 6: 1080. https://doi.org/10.3390/pr10061080
APA StyleHan, W., Chu, X., Shi, S., Zhao, L., & Zhao, Z. (2022). Practical Application-Oriented Energy Management for a Plug-In Hybrid Electric Bus Using a Dynamic SOC Design Zone Plan Method. Processes, 10(6), 1080. https://doi.org/10.3390/pr10061080