基于人工智能的自主光伏系统最大功率点跟踪建模与控制

Amadou Fousseyni Toure, David Tchoffa, A. El mhamedi, B. Diourte, M. Lamolle
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引用次数: 1

摘要

尽管在文献中进行了大量的研究,但最大功率点跟踪仍然是光伏并网系统中的一个关键问题。本文讨论了一种新的最大功率点跟踪技术,这是我们对解决这一问题的贡献。提出了一种基于人工神经网络的最大功率点跟踪混合控制器。该混合控制器由两个神经网络组成。第一个网络有两个输入和两个输出,输入为太阳辐照度和环境温度,输出为最大功率点对应的参考输出电压和电流。第二网络具有两个输入和一个输出:输入使用第一网络的输出,输出将是控制DC/DC转换器的周期周期。神经网络的训练步骤需要两种模式:离线模式和在线模式。培训所需的数据是从PV组件的大量实时测量中收集的。利用Matlab/Simulink仿真工具分析了该方法在不同工况下的性能。并将该方法与微扰观测方法进行了比较研究。
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Modeling and Control Maximum Power Point Tracking of an Autonomous Photovoltaic System Using Artificial Intelligence
Despite investigative efforts seen in the literature, the maximum power point tracking remains again a crucial problem in photovoltaic system (PV) connected to the power grid. In this paper, a new maximum power point tracking technique which is our contribution to the resolution of this problem is treated. We proposed a hybrid controller of maximum power point tracking based on artificial neural networks. This hybrid controller is composed of two neural networks. The first network has two inputs and two outputs: the inputs are solar irradiation and ambient temperature and the outputs are the reference output voltage and current corresponding at the maximum power point. The second network has two inputs and one output: the inputs use the outputs of the first network and the output will be the periodic cycle which controls the DC/DC converter. The training step of neural networks requires two modes: the offline mode and the online mode. The data necessary for the training are collected from a very large number of real- time measurements of the PV module. The performance of the proposed method is analyzed under different operating conditions using the Matlab/Simulink simulation tool. A comparative study between the proposed method and the perturbation and observation approach was presented.
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