Comparison of Swarm Optimization Methods for MPPT in Partially Shaded Photovoltaic Systems

H. S. Moreira, João Lucas de S. Silva, Guilherme C. S. Prym, E. Y. Sakô, M. V. G. dos Reis, M. G. Villalva
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引用次数: 4

Abstract

The use of solar energy for electricity grows mainly due to environmental issues. However, several challenges arise for researchers, such as improving the efficiency of photovoltaic systems in shading situations. In this opportunity, several algorithms attempt to search for the point of maximum power in a photovoltaic system, among them the artificial intelligence algorithms. Thus, this paper investigates the use of artificial intelligence in maximum power tracking techniques for partially shaded systems. A review of different methods is done and performed simulations. As a highlight, the particle swarm optimization was the fastest algorithm and the most accurate was artificial bee colony. Therefore, the tested algorithms obtained good efficiency, being the role of the designer to choose the most suitable for each system.
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部分遮阳光伏系统最大功率点群优化方法比较
太阳能发电的增长主要是由于环境问题。然而,研究人员面临着一些挑战,例如提高光伏系统在遮阳情况下的效率。在此机会下,几种算法试图在光伏系统中搜索最大功率点,其中包括人工智能算法。因此,本文研究了人工智能在部分遮阳系统的最大功率跟踪技术中的应用。对不同的方法进行了回顾,并进行了仿真。其中粒子群优化算法速度最快,精度最高的是人工蜂群算法。因此,经过测试的算法获得了良好的效率,是设计者为每个系统选择最适合的算法的作用。
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