Tae-Hyun Kim, Dong-Chul Park, Dong-Min Woo, Woong Huh, Chung-Hwa Yoon, Hyen-Ug Kim, Yunsik Lee
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引用次数: 6
摘要
提出了一种基于多尺度双线性递归神经网络(M-BRNN)的太阳黑子序列预测方案。本方案采用的递归神经网络为双线性递归神经网络。M-BRNN是几种双线性递归神经网络(BRNN)模型的组合。每个BRNN对小波变换得到的一定分辨率的信号进行预测。为了评估基于m - brnn的预测器的性能,在Wolf太阳黑子序列数数据上进行了实验,并与基于传统多层感知器类型神经网络(MultiLayer Perceptron Type Neural Network, MLPNN)和基于brnn的预测器进行了预测精度比较。结果表明,基于m - brnn的预测器在归一化均方误差(NMSE)方面优于基于mlpnn和基于brnn的预测器。
Sunspot series prediction using a Multiscale Recurrent Neural Network
A prediction scheme for sunspot series using a Multiscale Bilinear Recurrent Neural Network (M-BRNN) is proposed in this paper. The recurrent neural network adopted in this scheme is the Bilinear recurrent neural network. The M-BRNN is a combination of several Bilinear Recurrent Neural Network (BRNN) models. Each BRNN predicts a signal at a certain resolution level obtained by the wavelet transform. In order to evaluate the performance of the proposed M-BRNN-based predictor, experiments are conducted on the Wolf sunspot series number data and the resulting prediction accuracy is compared with those of conventional MultiLayer Perceptron Type Neural Network (MLPNN)-based and BRNN-based predictors. The results show that the proposed M-BRNN-based predictor outperforms the MLPNN-based and BRNN-based predictors in terms of the Normalized Mean Squared Error (NMSE).