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A Deep Reinforcement Learning-Based MPPT Control for PV Systems under Partial Shading Condition

机译:部分遮蔽条件下光伏系统基于深度强化学习的MPPT控制

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摘要

On the issues of global environment protection, the renewable energy systems have been widely considered. The photovoltaic (PV) system converts solar power into electricity and significantly reduces the consumption of fossil fuels from environment pollution. Besides introducing new materials for the solar cells to improve the energy conversion efficiency, the maximum power point tracking (MPPT) algorithms have been developed to ensure the efficient operation of PV systems at the maximum power point (MPP) under various weather conditions. The integration of reinforcement learning and deep learning, named deep reinforcement learning (DRL), is proposed in this paper as a future tool to deal with the optimization control problems. Following the success of deep reinforcement learning (DRL) in several fields, the deep Q network (DQN) and deep deterministic policy gradient (DDPG) are proposed to harvest the MPP in PV systems, especially under a partial shading condition (PSC). Different from the reinforcement learning (RL)-based method, which is only operated with discrete state and action spaces, the methods adopted in this paper are used to deal with continuous state spaces. In this study, DQN solves the problem with discrete action spaces, while DDPG handles the continuous action spaces. The proposed methods are simulated in MATLAB/Simulink for feasibility analysis. Further tests under various input conditions with comparisons to the classical Perturb and observe (P&O) MPPT method are carried out for validation. Based on the simulation results in this study, the performance of the proposed methods is outstanding and efficient, showing its potential for further applications.
机译:关于全球环境保护问题,可再生能源系统已被广泛考虑。光伏(PV)系统将太阳能转换为电能,并大大减少了环境污染所消耗的化石燃料。除了为太阳能电池引入新材料以提高能量转换效率外,还开发了最大功率点跟踪(MPPT)算法,以确保在各种天气条件下以最大功率点(MPP)高效运行光伏系统。本文提出了强化学习和深度学习的集成,称为深度强化学习(DRL),作为解决优化控制问题的未来工具。继在几个领域中成功进行深度强化学习(DRL)之后,提出了深度Q网络(DQN)和深度确定性策略梯度(DDPG)来收获PV系统中的MPP,尤其是在部分遮蔽条件下(PSC)。与仅基于离散状态和动作空间进行操作的基于强化学习的方法不同,本文采用的方法用于处理连续状态空间。在这项研究中,DQN解决了离散动作空间的问题,而DDPG处理了连续动作空间。在MATLAB / Simulink中对提出的方法进行了仿真,以进行可行性分析。与经典的Perturb和观察(P&O)MPPT方法进行比较,在各种输入条件下进行了进一步测试以进行验证。根据本研究的仿真结果,所提出方法的性能出色且高效,显示了其在进一步应用中的潜力。

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