Optimization of Artificial Neural Network for Power Quality Disturbances Detection

Kubra Nur Akpinar, O. Ozgonenel
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引用次数: 1

Abstract

In this study, the number of neurons and activation function in layers, back propagation algorithm variables' effects on artificial neural network design were investigated by Box-Behnken experimental design method. The aim of the study is to find the optimal levels by testing the number of neurons, functions and algorithm structures for the dependent variables that form the neural network for power quality disturbances. Different artificial neural network architectures have been designed and tested during the training phase. The performance of the network trained with purelin as the output layer transfer function, logsig as input layer transfer function, trainlm as training algorithm and one hidden layer with neuron number eight on the hidden layer has a more successful result compared to other designed structures. At the end of the study, variance analysis, regression coefficients, graphical results and optimal level results were calculated and shown for each dependent variable. At the end of the study, it has been shown that the parameters which maximize the predictive ability of the artificial neural network are chosen correctly in a shorter time compared to the trial and error method.
电能质量扰动检测的人工神经网络优化
本研究采用Box-Behnken实验设计方法,研究了神经元数、层间激活函数、反向传播算法变量对人工神经网络设计的影响。本研究的目的是通过测试构成电能质量干扰的神经网络的因变量的神经元数量、函数和算法结构来找到最佳水平。在训练阶段,已经设计并测试了不同的人工神经网络架构。以purelin作为输出层传递函数,logsig作为输入层传递函数,trainlm作为训练算法,隐藏层上有8个神经元的一个隐藏层,与其他设计的结构相比,网络的性能更成功。研究结束时,计算并显示各因变量的方差分析、回归系数、图形结果和最优水平结果。研究的最后表明,与试错法相比,在较短的时间内正确选择了使人工神经网络预测能力最大化的参数。
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