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Hybrid Neural Network Approach Based Tool for the Modelling of Photovoltaic Panels

机译:基于混合神经网络方法的光伏电池板建模工具

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摘要

A hybrid neural network approach based tool for identifying the photovoltaic one-diode model is presented. The generalization capabilities of neural networks are used together with the robustness of the reduced form of one-diode model. Indeed, from the studies performed by the authors and the works present in the literature, it was found that a direct computation of the five parameters via multiple inputs and multiple outputs neural network is a very difficult task. The reduced form consists in a series of explicit formulae for the support to the neural network that, in our case, is aimed at predicting just two parameters among the five ones identifying the model: the other three parameters are computed by reduced form. The present hybrid approach is efficient from the computational cost point of view and accurate in the estimation of the five parameters. It constitutes a complete and extremely easy tool suitable to be implemented in a microcontroller based architecture. Validations are made on about 10000 PV panels belonging to the California Energy Commission database.
机译:提出了一种基于混合神经网络方法的光伏单二极管模型识别工具。神经网络的泛化能力与一二极管模型的简化形式的鲁棒性一起使用。实际上,从作者进行​​的研究和文献中的工作来看,发现通过多个输入和多个输出神经网络直接计算五个参数是一项非常困难的任务。简化形式包含一系列支持神经网络的显式公式,在我们的案例中,该公式旨在仅预测识别模型的五个参数中的两个参数:其他三个参数由简化形式计算。从计算成本的角度来看,本混合方法是有效的,并且在五个参数的估计中是准确的。它构成了一个完整且极其容易的工具,适合在基于微控制器的架构中实施。在属于加利福尼亚能源委员会数据库的约10000个光伏面板上进行了验证。

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