Combined approach between FLC and PSO to find the best MFs to improve the performance of PV system

A. Rahma, M. Khemliche
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引用次数: 5

Abstract

During designing of fuzzy logic controller (FLC), an expert knowledge of the process to be controlled can be used to determine the membership functions (MFs) and the rules. However there is no general procedure for designing a FLc seen that many of errors may be encountered in its implementation, and these FLC can not be adapted to other applications. The difficulties encountered in the design of CLF have guided researchers to move towards the optimization of these controllers. The present paper proposes an approach combined from FLC and particle swarm optimization algorithm (PSO) used to finding the optimum membership functions (MFs) of a fuzzy system with the aim of achieving the accurate and acceptable desired results. For improving and optimizing the performance of a photovoltaic system to deliver the maximum power available. It is clearly proved that the optimized MFs provided better performance than a fuzzy model for the same system, when the MFs were heuristically defined.
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结合FLC和粒子群算法寻找最佳的MFs以提高光伏系统的性能
在模糊控制器的设计过程中,可以利用被控过程的专家知识来确定隶属函数和规则。然而,由于FLc在实现过程中可能会遇到许多错误,并且这些FLc不能适用于其他应用,因此尚无通用的设计程序。在CLF设计中遇到的困难引导研究人员朝着这些控制器的优化方向发展。本文提出了一种结合FLC和粒子群优化算法(PSO)的方法,用于寻找模糊系统的最优隶属函数(MFs),以获得准确和可接受的期望结果。改进和优化光伏系统的性能,以提供最大功率。结果表明,在启发式定义模型时,优化后的模型比模糊模型具有更好的性能。
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