Combination of SOM-RBF for drought code prediction using rainfall and air temperature data

Dwi Marisa Midyanti
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引用次数: 1

Abstract

This study aims to predict Drought Code (DC) in Kabupaten Kubu Raya using a combination of SOM-RBF. The final weight value of SOM was used as a center on the RBF network. The input data variables are rainfall data and air temperature data for three days with three binary outputs to predict DC values. This study also observed the effect of the number of neurons, learning rates, and the number of iterations on the results of the SOM-RBF network training. The smallest MSE of training result from the SOM-RBF network was 0.159933 using 65 neurons in the hidden layer, learning rate 0.007, and epoch 45000. The detection accuracy of SOM-RBF was 91.34 % from 245 test data.
SOM-RBF结合降雨和气温数据进行干旱代码预测
本研究旨在结合SOM-RBF预测Kabupaten Kubu Raya地区的干旱代码(DC)。将SOM的最终权值作为RBF网络的中心。输入数据变量是三天的降雨数据和气温数据,有三个二进制输出来预测直流数值。本研究还观察了神经元数量、学习率和迭代次数对SOM-RBF网络训练结果的影响。SOM-RBF网络的最小MSE为0.159933,在隐含层使用65个神经元,学习率为0.007,epoch为45000。在245份检测数据中,SOM-RBF的检测准确率为91.34%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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