A neural fuzzy based maximum power point tracker for a photovoltaic system

Christopher A. Otieno, G. Nyakoe, C. Wekesa
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引用次数: 57

Abstract

The global electrical energy consumption is steadily rising and therefore there is need to increase the power generation capacity. The required capacity increase can be based on renewable energy. Photovoltaic energy remains a largely unexploited renewable energy source due to low conversion efficiency of the photovoltaic modules. To maximize the power derived from the PV systems it is important to operate the panel at its optimal power point by use of a maximum power point tracker (MPPT). MPPTs find and maintain operation at the maximum power point, using an MPPT algorithm. This paper presents a high performance tracking of maximum power delivered from photovoltaic systems using adaptive neural fuzzy inference systems (ANFIS). This method combines the learning abilities of artificial neural networks and the ability of fuzzy logic to handle imprecise data. It is therefore able to handle non linear and time varying problems hence making it suitable for this work. It is expected that this method will be able to accurately track the maximum power point. This will ensure efficient use of PV systems and therefore leading to reduced cost of electricity. The performance of the proposed method was compared to that of a fuzzy logic based MPPT to demonstrate its effectiveness over other previously used MPPT techniques.
基于神经模糊的光伏系统最大功率跟踪系统
全球电力能源消耗正在稳步上升,因此有必要增加发电能力。所需的容量增加可以基于可再生能源。由于光伏组件的转换效率较低,光伏能源在很大程度上仍然是一种未开发的可再生能源。为了最大限度地利用光伏发电系统产生的功率,重要的是要使用最大功率点跟踪器(MPPT)在其最佳功率点上操作面板。MPPT找到并维持运行在最大功率点,使用最大功率点算法。提出了一种利用自适应神经模糊推理系统(ANFIS)对光伏发电系统输出的最大功率进行高性能跟踪的方法。该方法结合了人工神经网络的学习能力和模糊逻辑处理不精确数据的能力。因此,它能够处理非线性和时变问题,因此使其适合于这项工作。预计该方法将能够准确地跟踪最大功率点。这将确保光伏系统的有效利用,从而降低电力成本。将该方法的性能与基于模糊逻辑的MPPT进行了比较,以证明其优于其他先前使用的MPPT技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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