基于进化规划的单隐层神经网络优化设计

S. Sulaiman, T.K. Abdul Rahman, I. Musirin
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引用次数: 11

摘要

本文介绍了使用进化规划(EP)优化一隐层人工神经网络(ANN)设计,用于预测安装在马来西亚邦宜的马来西亚能源中心(PTM)的并网光伏系统的能量输出。在优化多层前馈反向传播神经网络模型的结构和训练参数的同时,最大限度地提高了神经网络的预测性能。提出的进化规划-人工神经网络(EPANN)模型采用太阳辐射和环境温度作为输入,唯一输出是并网光伏系统产生的千瓦时能量输出。利用平均相关系数对预测性能进行量化,并通过在进化训练中确定隐含层节点数、动量率和学习率的最优值来实现预测性能的最大化。除了寻找每个模型的最优节点数和最优训练参数外,还研究了EPANN预测所需的最高相关系数。结果表明,EPANN训练得到的最大平均相关系数为0.9962。此外,测试过程产生了足够高的相关系数值0.9976。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing one-hidden layer neural network design using Evolutionary Programming
This paper presents the optimization of one-hidden layer Artificial Neural Network (ANN) design using Evolutionary Programming (EP) for predicting the energy output of a grid-connected photovoltaic system installed at Malaysian Energy Centre (PTM), Bangi, Malaysia. In this study, the architecture and training parameters of the multi-layer feedforward back-propagation ANN model had been optimized while the prediction performance of the ANN was maximized. The proposed Evolutionary Programming-ANN (EPANN) model employs solar radiation and ambient temperature as its inputs while the sole output is the kilowatt-hour energy output produced from the grid connected PV system. The prediction performance was quantified using the average correlation coefficient and it was maximized by determining the optimum values for the number of nodes in the hidden layer, momentum rate and learning rate during an evolutionary training. Besides searching for the optimal number of nodes and optimal training parameters for each model, the highest correlation coefficient for the prediction required for the EPANN was investigated. It was found that the maximum average correlation coefficient obtained for the EPANN training is 0.9962. Besides that, the testing process produced sufficiently high correlation coefficient value of 0.9976.
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