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Current Characteristics Estimation of Si PV Modules Based on Artificial Neural Network Modeling

机译:基于人工神经网络建模的硅光伏组件电流特性估计

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摘要

In the photovoltaic (PV) field, the outdoor evaluation of a PV system is quite complex, due to the variations of temperature and irradiance. In fact, the diagnosis of the PV modules is extremely required in order to maintain the optimum performance. In this paper, an artificial neural network (ANN) is proposed to build and train the model, and evaluate the PV module performance by mean bias error, mean square error and the regression analysis. We take temperature, irradiance and a specific voltage for input, and a specific current value for output, repeat several times in order to obtain an I-V curve. The main feature lies to the data-driven black-box method, with the ignorance of any analytical equations and hence the conventional five parameters (serial resistance, shunt resistance, non-ideal factor, reverse saturation current, and photon current). The ANN is able to predict the I-V curves of the Si PV module at arbitrary irradiance and temperature. Finally, the proposed algorithm has proved to be valid in terms of comparison with the testing dataset.
机译:在光伏(PV)领域中,由于温度和辐照度的变化,光伏系统的室外评估非常复杂。实际上,为了保持最佳性能,非常需要对PV模块进行诊断。本文提出了一种人工神经网络(ANN)来构建和训练该模型,并通过均值偏差,均方误差和回归分析来评估光伏组件的性能。我们将温度,辐照度和特定的电压作为输入,并将特定的电流值作为输出,重复几次以获得I-V曲线。主要特征在于数据驱动的黑盒方法,它对任何分析方程式都一无所知,因此对常规的五个参数(串行电阻,分流电阻,非理想因子,反向饱和电流和光子电流)一无所知。人工神经网络能够在任意辐照度和温度下预测Si PV模块的I-V曲线。最后,在与测试数据集进行比较方面,该算法被证明是有效的。

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