Comparative Analysis of Model-Free Deep Reinforcement Learning Controllers for Reconfigurable Battery Systems Output Voltage Regulation
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Hashemi-Zadeh, A; Tashakor, N; Rahnama, M; Touko Sieyadji, CT; Amirrezai, M; Goetz, S
Published in: Ecce Europe 2024 Energy Conversion Congress and Expo Europe Proceedings
January 1, 2024
Maintaining the battery pack voltage at the reference value is crucial for the satisfactory operation of reconfigurable battery systems. This paper proposes a comparative study of reinforcement learning with various agents in reconfigurable battery system applications, focusing on four agents: deep deterministic policy gradient (DDPG), twin-DDPG (TD3), trust region policy optimization (TRPO), and proximal policy optimization (PPO). We evaluate and compare the results obtained by the agents with the conventional control method (PI). The simulation results in MATLAB confirm the superior performance of the studied methods, among which DDPG can even outperform other types of reinforcement agent.
Duke Scholars
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Ecce Europe 2024 Energy Conversion Congress and Expo Europe Proceedings
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Publication Date
January 1, 2024
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Hashemi-Zadeh, A., Tashakor, N., Rahnama, M., Touko Sieyadji, C. T., Amirrezai, M., & Goetz, S. (2024). Comparative Analysis of Model-Free Deep Reinforcement Learning Controllers for Reconfigurable Battery Systems Output Voltage Regulation. In Ecce Europe 2024 Energy Conversion Congress and Expo Europe Proceedings. https://doi.org/10.1109/ECCEEurope62508.2024.10751905
Hashemi-Zadeh, A., N. Tashakor, M. Rahnama, C. T. Touko Sieyadji, M. Amirrezai, and S. Goetz. “Comparative Analysis of Model-Free Deep Reinforcement Learning Controllers for Reconfigurable Battery Systems Output Voltage Regulation.” In Ecce Europe 2024 Energy Conversion Congress and Expo Europe Proceedings, 2024. https://doi.org/10.1109/ECCEEurope62508.2024.10751905.
Hashemi-Zadeh A, Tashakor N, Rahnama M, Touko Sieyadji CT, Amirrezai M, Goetz S. Comparative Analysis of Model-Free Deep Reinforcement Learning Controllers for Reconfigurable Battery Systems Output Voltage Regulation. In: Ecce Europe 2024 Energy Conversion Congress and Expo Europe Proceedings. 2024.
Hashemi-Zadeh, A., et al. “Comparative Analysis of Model-Free Deep Reinforcement Learning Controllers for Reconfigurable Battery Systems Output Voltage Regulation.” Ecce Europe 2024 Energy Conversion Congress and Expo Europe Proceedings, 2024. Scopus, doi:10.1109/ECCEEurope62508.2024.10751905.
Hashemi-Zadeh A, Tashakor N, Rahnama M, Touko Sieyadji CT, Amirrezai M, Goetz S. Comparative Analysis of Model-Free Deep Reinforcement Learning Controllers for Reconfigurable Battery Systems Output Voltage Regulation. Ecce Europe 2024 Energy Conversion Congress and Expo Europe Proceedings. 2024.
Published In
Ecce Europe 2024 Energy Conversion Congress and Expo Europe Proceedings
DOI
Publication Date
January 1, 2024