Comparison of multilayer perceptron neural network architecture in photovoltaic plants fault classification
Hugo Everaldo Salvador Bezerra Bezerra,
Paulo Jorge Ferreira,
Paulo Sérgio Brito
et al.
Abstract:The goal of this study is to assess the application of Multilayer Perceptron Artificial Neural Networks in fault classification within photovoltaic panels, focusing on key characteristics such as the number of neurons and layers, activation functions, training techniques, and the resulting accuracy. The study employs a comparative analysis approach, examining various characteristics and hyperparameters applied to Multilayer Perceptron Artificial Neural Networks for fault classification in photovoltaic panels. … Show more
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