遮挡条件下光伏发电系统智能优化控制方法

Hai-Jun Shen Hai-Jun Shen, Qing-Hong Wang Hai-Jun Shen, Rui Fan Qing-Hong Wang, Wei-Min Liu Rui Fan
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引用次数: 0

摘要

在光伏发电过程中,最大功率点跟踪是提高光伏发电效率的重要方法。在实际的局部阴影条件下,光伏系统的最大功率点是波动的。为此,本文根据实际应用建立了光伏电池的数学模型和输出特性方程,然后采用自适应惯性权值粒子群优化算法解决了最大功率点跟踪过程中搜索速度慢、精度低的问题。优化后,本文提出的方法可显著提高跟踪效果效率,实际运行场景下的优化结果可使光伏电池发电效率提高21.3%,证明了算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Optimization Control Method for Photovoltaic Power Generation Systems Under Shadow Occlusion Conditions
In the process of photovoltaic power generation, maximum power point tracking is an important method to improve the efficiency of photovoltaic power generation. Under the actual local shadow condition, the maximum power point of Photovoltaic system fluctuates. For this reason, this paper establishes the mathematical model and output characteristic equation of photovoltaic cells according to the actual application, and then uses the adaptive inertia weight Particle Swarm Optimization algorithm to solve the problem of slow search speed and low accuracy in the process of maximum power point tracking. After optimization, the method proposed in this paper can significantly improve the tracking effect efficiency, and the optimization results in real operation scenarios can improve the photovoltaic cell power generation efficiency by 21.3%, which proves the effectiveness of the algorithm.  
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