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Global Maximum Power Point Tracking of PV Systems under Partial Shading Condition: A Transfer Reinforcement Learning Approach

机译:局部遮阳条件下PV系统的全局最大功率点跟踪:转移加固学习方法

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This paper aims to introduce a novel maximum power point tracking (MPPT) strategy called transfer reinforcement learning (TRL), associated with space decomposition for Photovoltaic (PV) systems under partial shading conditions (PSC). The space decomposition is used for constructing a hierarchical searching space of the control variable, thus the ability of the global search of TRL can be effectively increased. In order to satisfy a real-time MPPT with an ultra-short control cycle, the knowledge transfer is introduced to dramatically accelerate the searching speed of TRL through transferring the optimal knowledge matrices of the previous optimization tasks to a new optimization task. Four case studies are conducted to investigate the advantages of TRL compared with those of traditional incremental conductance (INC) and five other conventional meta-heuristic algorithms. The case studies include a start-up test, step change in solar irradiation with constant temperature, stepwise change in both temperature and solar irradiation, and a daily site profile of temperature and solar irradiation in Hong Kong.
机译:本文旨在引入一种名为传输增强学习(TRL)的新型最大功率点跟踪(MPPT)策略,与部分着色条件(PSC)下的光伏(PV)系统相关联。空间分解用于构造控制变量的分层搜索空间,因此可以有效地增加全局搜索TRL的能力。为了满足具有超短控制周期的实时MPPT,引入了知识传输,以大大加速TRL的搜索速度,通过将先前优化任务的最佳知识矩阵传送到新的优化任务。进行四种案例研究以研究TRL的优点与传统增量电导(INC)和其他5个常规的荟萃启发式算法相比。案例研究包括启动试验,在温度和太阳照射的恒定温度下逐步变化,以及香港的温度和太阳照射的日常曲线曲线变化,以及香港的日常生活曲线。

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