混沌时间序列的递归神经网络预测

J. Kuo, J.C. Principle, B. de Vries
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引用次数: 15

摘要

作者提出训练并使用递归人工神经网络(ANN)来预测混沌时间序列。而不是像通常那样用时间序列中的下一个样本来训练网络,而是利用当前样本之后的一系列样本。从时间序列中提取的动态参数提供了设置这些训练序列长度的信息。该方法已被应用于周期和混沌时间序列的预测,并优于传统的人工神经网络方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of chaotic time series using recurrent neural networks
The authors propose to train and use a recurrent artificial neural network (ANN) to predict a chaotic time series. Instead of training the network with the next sample in the time series as is normally done, a sequence of samples that follows the present sample will be utilized. Dynamical parameters extracted from the time series provide the information to set the length of these training sequences. The proposed method has been applied to predict both periodic and chaotic time series, and is superior to the conventional ANN approach.<>
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