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An improved SA-PSO global maximum power point tracking method of photovoltaic system under partial shading conditions

机译:局部阴影条件下光伏系统的一种改进的SA-PSO全局最大功率点跟踪方法

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摘要

In recent years, photovoltaic power generation has been more and more popular, because it has many advantages, clean energy and widely distributed. However, in the development process photovoltaic power generation also encountered a lot of obstacles, such as tracking the global maximum power point (GMPPT). Due to the photovoltaic system will be blocked by the photovoltaic panels appear multiple peaks, in this case, the photovoltaic panels cannot work on the maximum power point (MPP) voltage, there may be limited to the local maximum power point(LMPP). The traditional algorithms cannot solve the multi-peak GMPPT problem, so the emergence of artificial intelligence algorithm. Many artificial intelligence algorithms have been invented according to the animal's life phenomenon, such as particle swarm optimization, ant colony algorithm, simulated annealing method, fuzzy control algorithm, and so on. These algorithms can solve the multi-peak GMPPT problem, but the single algorithm still has the problems with insufficient tracking precision and slow tracking speed. This paper proposes a hybrid simulated annealing algorithm and particle swarm optimization(SA-PSO) algorithm based on MPPT algorithm which is used for photovoltaic systems under mu conditions. The proposed algorithm can reduce the tracking time and increase tracking accuracy, continuously tracking GMPP. Compared with existing SA MPPT algorithm and PSO MPPT algorithm, the proposed novel technique performs better under shading conditions.
机译:近年来,光伏发电因其具有许多优点,清洁能源和广泛分布而越来越受到欢迎。但是,在发展过程中,光伏发电也遇到了很多障碍,例如跟踪全球最大功率点(GMPPT)。由于光伏系统将被光伏面板阻塞而出现多个峰值,在这种情况下,光伏面板无法在最大功率点(MPP)电压下工作,因此可能会局限于本地最大功率点(LMPP)。传统算法无法解决多峰GMPPT问题,因此出现了人工智能算法。根据动物的生命现象,发明了许多人工智能算法,例如粒子群优化,蚁群算法,模拟退火方法,模糊控制算法等。这些算法可以解决多峰GMPPT问题,但是单一算法仍然存在跟踪精度不足,跟踪速度慢的问题。提出了一种基于MPPT算法的混合模拟退火算法和粒子群优化算法(SA-PSO),用于mu条件下的光伏系统。该算法可以减少跟踪时间,提高跟踪精度,可以连续跟踪GMPP。与现有的SA MPPT算法和PSO MPPT算法相比,该新技术在阴影条件下性能更好。

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