Hydrogen-electricity coupling energy storage systems: Models, applications, and deep reinforcement learning algorithms

Jiehui Zheng, Yingying Su, Wenhao Wang, Zhigang Li, Qinghua Wu
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Abstract

With the maturity of hydrogen storage technologies, hydrogen-electricity coupling energy storage in green electricity and green hydrogen modes is an ideal energy system. The construction of hydrogen-electricity coupling energy storage systems (HECESSs) is one of the important technological pathways for energy supply and deep decarbonization. In a HECESS, hydrogen storage can maintain the energy balance between supply and demand and increase the utilization efficiency of energy. However, its scenario models in power system establishment and the corresponding solution methods still need to be studied in depth. For accelerating the construction of HECESSs, firstly, this paper describes the current applications of hydrogen storage technologies from three aspects: hydrogen production, hydrogen power generation, and hydrogen storage. Secondly, based on the complementary synergistic mechanism of hydrogen energy and electric energy, the structure of the HECESS and its operation mode are described. To study the engineering applications of HECESSs more deeply, the recent progress of HECESS application at the source, grid, and load sides is reviewed. For the application of the models of hydrogen storage at the source/grid/load side, the selection of the solution method will affect the optimal solution of the model and solution efficiency. As solving complex multi-energy coupling models using traditional optimization methods is difficult, the paper therefore explored the advantages of deep reinforcement learning (DRL) algorithms and their applications in HECESSs. Finally, the technical application in the construction of new power systems supported by HECESSs is prospected. The study aims to provide a reference for the research on hydrogen storage in power systems.
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氢电耦合储能系统:模型、应用和深度强化学习算法
随着储氢技术的成熟,绿色电力和绿色氢气模式的氢电耦合储能是一种理想的能源系统。建设氢电耦合储能系统(HECESSs)是能源供应和深度脱碳的重要技术途径之一。在氢电耦合储能系统中,储氢可以维持能源供需平衡,提高能源利用效率。然而,其在电力系统建立中的情景模式及相应的解决方法仍有待深入研究。为加快氢能储能系统的建设,本文首先从制氢、制氢发电、储氢三个方面阐述了当前氢能储能技术的应用。其次,基于氢能与电能的互补协同机理,阐述了 HECESS 的结构及其运行模式。为了更深入地研究氢能发电和储能系统的工程应用,综述了氢能发电和储能系统在电源侧、电网侧和负载侧的最新应用进展。对于储氢模型在源侧、电网侧和负荷侧的应用,求解方法的选择将影响模型的最优解和求解效率。由于使用传统优化方法求解复杂的多能耦合模型比较困难,因此本文探讨了深度强化学习(DRL)算法的优势及其在 HECESS 中的应用。最后,还展望了由 HECESSs 支持的新型电力系统建设中的技术应用。本研究旨在为电力系统储氢研究提供参考。
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