A Data-Driven Scheduling Approach for Integrated Electricity-Hydrogen System Based on Improved DDPG

The involvement of hydrogen energy systems has been recognised as a promising way to mitigate climate problems. As a kind of efficient multi-energy complementary system, the hydropower-photovoltaic-hydrogen (HPH) system could be an ideal approach to combining hydrogen with an installed renewable ene...

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Main Authors: Zhao, Yaping, Huang, Jingsi, Xu, Endong, Wang, Jianxiao, Xu, Xiaoyun
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Published: Archīum Ateneo 2023
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Online Access:https://archium.ateneo.edu/gsb-pubs/83
https://archium.ateneo.edu/context/gsb-pubs/article/1082/viewcontent/IET_Renewable_Power_Gen___2023___Zhao___A_data_driven_scheduling_approach_for_integrated_electricity_hydrogen_system_based.pdf
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Institution: Ateneo De Manila University
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spelling ph-ateneo-arc.gsb-pubs-10822024-02-14T06:20:44Z A Data-Driven Scheduling Approach for Integrated Electricity-Hydrogen System Based on Improved DDPG Zhao, Yaping Huang, Jingsi Xu, Endong Wang, Jianxiao Xu, Xiaoyun The involvement of hydrogen energy systems has been recognised as a promising way to mitigate climate problems. As a kind of efficient multi-energy complementary system, the hydropower-photovoltaic-hydrogen (HPH) system could be an ideal approach to combining hydrogen with an installed renewable energy system to improve the flexibility of energy management and reduce power curtailment. However, the intra-day scheduling of HPH system brings challenges due to the time-related nonlinear hydropower generation process, the complex energy conversion process and the uncertain natural resource supply. Faced with these challenges, an improved deep deterministic policy gradient (DDPG)-based data-driven scheduling algorithm is proposed. In contrast to the prevalent DDPG, two sets of actor-critic networks are properly designed based on prior knowledge-based deep neural networks for the considered complex uncertain system to search for near-optimal policies and approximate actor-value functions. In addition, customized reward functions are proposed with the consideration of interactions among different energy supplies, which helps to improve convergence speed and stability. Finally, the case study results demonstrate that the proposed system model and the optimal energy management strategy based on the improved DDPG algorithm can guide the electricity-hydrogen system to achieve rapid response and more reasonable energy management. 2023-01-01T08:00:00Z text application/pdf https://archium.ateneo.edu/gsb-pubs/83 https://archium.ateneo.edu/context/gsb-pubs/article/1082/viewcontent/IET_Renewable_Power_Gen___2023___Zhao___A_data_driven_scheduling_approach_for_integrated_electricity_hydrogen_system_based.pdf Graduate School of Business Publications Archīum Ateneo data-driven algorithm deep reinforcement learning hydrogen device integrated renewable energy system real-time scheduling Electrical and Computer Engineering Engineering
institution Ateneo De Manila University
building Ateneo De Manila University Library
continent Asia
country Philippines
Philippines
content_provider Ateneo De Manila University Library
collection archium.Ateneo Institutional Repository
topic data-driven algorithm
deep reinforcement learning
hydrogen device
integrated renewable energy system
real-time scheduling
Electrical and Computer Engineering
Engineering
spellingShingle data-driven algorithm
deep reinforcement learning
hydrogen device
integrated renewable energy system
real-time scheduling
Electrical and Computer Engineering
Engineering
Zhao, Yaping
Huang, Jingsi
Xu, Endong
Wang, Jianxiao
Xu, Xiaoyun
A Data-Driven Scheduling Approach for Integrated Electricity-Hydrogen System Based on Improved DDPG
description The involvement of hydrogen energy systems has been recognised as a promising way to mitigate climate problems. As a kind of efficient multi-energy complementary system, the hydropower-photovoltaic-hydrogen (HPH) system could be an ideal approach to combining hydrogen with an installed renewable energy system to improve the flexibility of energy management and reduce power curtailment. However, the intra-day scheduling of HPH system brings challenges due to the time-related nonlinear hydropower generation process, the complex energy conversion process and the uncertain natural resource supply. Faced with these challenges, an improved deep deterministic policy gradient (DDPG)-based data-driven scheduling algorithm is proposed. In contrast to the prevalent DDPG, two sets of actor-critic networks are properly designed based on prior knowledge-based deep neural networks for the considered complex uncertain system to search for near-optimal policies and approximate actor-value functions. In addition, customized reward functions are proposed with the consideration of interactions among different energy supplies, which helps to improve convergence speed and stability. Finally, the case study results demonstrate that the proposed system model and the optimal energy management strategy based on the improved DDPG algorithm can guide the electricity-hydrogen system to achieve rapid response and more reasonable energy management.
format text
author Zhao, Yaping
Huang, Jingsi
Xu, Endong
Wang, Jianxiao
Xu, Xiaoyun
author_facet Zhao, Yaping
Huang, Jingsi
Xu, Endong
Wang, Jianxiao
Xu, Xiaoyun
author_sort Zhao, Yaping
title A Data-Driven Scheduling Approach for Integrated Electricity-Hydrogen System Based on Improved DDPG
title_short A Data-Driven Scheduling Approach for Integrated Electricity-Hydrogen System Based on Improved DDPG
title_full A Data-Driven Scheduling Approach for Integrated Electricity-Hydrogen System Based on Improved DDPG
title_fullStr A Data-Driven Scheduling Approach for Integrated Electricity-Hydrogen System Based on Improved DDPG
title_full_unstemmed A Data-Driven Scheduling Approach for Integrated Electricity-Hydrogen System Based on Improved DDPG
title_sort data-driven scheduling approach for integrated electricity-hydrogen system based on improved ddpg
publisher Archīum Ateneo
publishDate 2023
url https://archium.ateneo.edu/gsb-pubs/83
https://archium.ateneo.edu/context/gsb-pubs/article/1082/viewcontent/IET_Renewable_Power_Gen___2023___Zhao___A_data_driven_scheduling_approach_for_integrated_electricity_hydrogen_system_based.pdf
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