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Development of Artificial Neural Network based MPPT for Photovoltaic System during Shading Condition

机译:基于人工神经网络的光伏系统MPPT的开发

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This paper presents Feedforward Neural network (FFNN) and Elman network controllers to control the maximum power point tracking (MPPT) of photovoltaic (PV). MPPT is a method used to extract the maximum available power from photovoltaic module by designs them to operate efficiently. Thus, cell temperatures and solar irradiances are two critical variable factors to determine PV output powers. The performances of the controller is analyzed in four conditions which are i) constant irradiation and temperature, ii) constant irradiation and variable temperature, iii) constant temperature and variable irradiation and iv) variable temperature and irradiation. The proposed systems are simulated by using MATLAB-SIMULINK. Based on the results, FFNN controller has shown the better performance compare to the Elman network controller during partial shading conditions.
机译:本文介绍了前馈神经网络(FFNN)和ELMAN网络控制器,以控制光伏(PV)的最大功率点跟踪(MPPT)。 MPPT是一种用于通过设计它们有效地操作的光伏模块的最大可用电源的方法。 因此,细胞温度和太阳能辐射是确定PV输出功率的两个关键可变因素。 在I)恒定辐照和温度,II)恒定辐照和温度,III)恒温和可变辐照和IV)中的四个条件下分析了控制器的性能。 通过使用MATLAB-SIMULINK模拟所提出的系统。 基于结果,FFNN控制器已经显示到部分着色条件期间与ELMAN网络控制器更好的性能。

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