1. 国网经济技术研究院有限公司, 北京市 昌平区,102209
2. 大连理工大学电气工程学院,辽宁省,大连市,116081
纸质出版:2025
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田雪沁, 姚红雨, 袁铁江. 基于DRL的光伏-电解槽直接耦合制氢系统运行优化方法[J]. 中国电机工程学报, 2025,(21):8459-8472.
TIAN Xueqin, YAO Hongyu, YUAN Tiejiang. Operation Optimization Method for a Direct Coupled Photovoltaic-electrolyzer Hydrogen Production System Based on Deep Reinforcement Learning[J]. 2025, (21): 8459-8472.
田雪沁, 姚红雨, 袁铁江. 基于DRL的光伏-电解槽直接耦合制氢系统运行优化方法[J]. 中国电机工程学报, 2025,(21):8459-8472. DOI: 10.13334/j.0258-8013.pcsee.241109.
TIAN Xueqin, YAO Hongyu, YUAN Tiejiang. Operation Optimization Method for a Direct Coupled Photovoltaic-electrolyzer Hydrogen Production System Based on Deep Reinforcement Learning[J]. 2025, (21): 8459-8472. DOI: 10.13334/j.0258-8013.pcsee.241109.
为解决光伏-电解槽(photovoltaic-electrolytic cell,PV- EC)直接耦合制氢系统中,由于电解槽阵列结构频繁切换及工作电流密度较大而导致的电解槽性能加速衰减问题,该文提出一种基于深度强化学习(deep reinforcement learning,DRL)的运行优化策略。首先,建立包含光伏电池与质子交换膜电解槽的PV-EC直接耦合系统模型,并将系统能量利用率与制氢速率作为优化目标,综合考虑电解槽衰减特性及光伏发电的不确定性,将控制问题形式化为马尔可夫决策过程;其次,在Python 3.7环境下构建包含光辐照度预测、光伏发电及电解槽阵列的仿真平台,采用深度确定性策略梯度(dep dterministic plicy gadient,DDPG)算法训练智能体,学习系统的最优运行策略。结果表明,相较于现有控制方法,所提策略在保证系统较高能量利用率与制氢速率的同时,有效降低了电解槽工作在高电流密度的频率,并减少了阵列结构切换次数,且该方法在提升PV-EC直接耦合制氢系统综合性能及延长电解槽寿命方面具有显著优势。
In order to solve the problem of accelerated degradation of cell performance in the photovoltaic electrolytic cell (PV-EC) direct coupling hydrogen production system due to frequent switching of cell array structure and high working current density
this study proposes an operation optimization strategy based on deep reinforcement learning (DRL). Firstly
the PV-EC direct coupling system model including photovoltaic cells and proton exchange membrane electrolyzers is established
and the energy utilization rate and the hydrogen production rate of the system are taken as the optimization objectives. Considering the attenuation characteristics of the electrolyzers and the uncertainty of photovoltaic power generation
the control problem is formalized as a Markov decision process (MDP). Secondly
a simulation platform including light irradiance prediction
photovoltaic power generation
and the electrolytic cell array is built in Python 3.7 environment
and the deep deterministic strategy gradient (DDPG) algorithm is used to train the agent and learn the optimal operation strategy of the system. The research results show that
compared with the existing control methods
the proposed strategy not only ensures the high energy utilization and hydrogen production rate of the system
but also effectively reduces the frequency of the electrolytic cell working at high current density
and reduces the number of array structure switching. This method has significant advantages in improving the comprehensive performance of the PV-EC direct coupling hydrogen production system and prolonging the life of the electrolytic cell.
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