Explainable Artificial Intelligence Applied to Deep Reinforcement Learning Controllers for Photovoltaic Maximum Power Point Tracking

Pei Seng Tan, T. Tang, E. Ho
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Abstract

Deep Reinforcement Learning (DRL) algorithms have been applied to extract maximum power from photovoltaic (PV) modules under a variety of environmental conditions. However, it is difficult for a human to explain how a DRL-based maximum power point tracking (MPPT) controller works as it consists of Neural Networks (NNs) that are generally complex and non-linear. Various Explainable Artificial Intelligence (XAI) techniques have been proposed to interpret NNs in power system applications, but MPPT controllers have yet to be analyzed. This paper presents the application of XAI techniques to the DRL agents for MPPT. Two distinct DRL agents were developed, one with and one without the information of the converter's duty cycle, using the Deep Deterministic Policy Gradient (DDPG) algorithm and analyzed using XAI techniques, namely Local Interpretable Model-agnostic Explanations (LIME) and Shapley Additive Explanations (SHAP). The results reveal that the converter's input power is the most crucial information for the DRL agents when the converter is operating away from the maximum power point. When the converter approaches operation at the maximum power point, the DRL agents are significantly dependent on the power differential of the converter across time. If the information about the converter's duty cycle is available, the DRL agents are significantly reliant on the converter's duty cycle and disregard other observations for decision-making.
可解释人工智能应用于光伏最大功率点跟踪的深度强化学习控制器
深度强化学习(DRL)算法已被应用于在各种环境条件下从光伏(PV)模块中提取最大功率。然而,人类很难解释基于drl的最大功率点跟踪(MPPT)控制器是如何工作的,因为它由神经网络(nn)组成,通常是复杂和非线性的。已经提出了各种可解释的人工智能(XAI)技术来解释电力系统应用中的神经网络,但尚未对MPPT控制器进行分析。本文介绍了XAI技术在MPPT的DRL代理中的应用。使用深度确定性策略梯度(DDPG)算法开发了两种不同的DRL代理,一种带有转换器占空比信息,另一种没有,并使用XAI技术进行分析,即局部可解释模型不可知解释(LIME)和Shapley加性解释(SHAP)。结果表明,当变换器远离最大功率点工作时,变换器的输入功率是DRL代理最重要的信息。当变换器在最大功率点接近运行时,DRL代理显著依赖于变换器随时间的功率差。如果有关转换器占空比的信息是可用的,则DRL代理在决策时明显依赖于转换器的占空比,而忽略其他观察结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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