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Empirical Mode Decomposition, Extreme Learning Machine and Long Short-Term Memory for Time Series Prediction: A Comparative Study

机译:时间序列预测的经验模式分解,极限学习机和长短期记忆:比较研究

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The use of models that combine empirical mode decomposition (EMD) and artificial neural networks (ANN) to time series prediction has been attracted much research interest in several areas of great relevance. However, the way the two methods are combined can vary. Thus, a comparison between different combinations of models is presented in this work. The first objective is to verify if the use of EMD improves the prediction results. The second objective is to compare whether it is better to group the intrinsic mode function (IMFs) and then perform the prediction, or predict each IMF separately and then aggregate the results. The methods were tested for six different time series and the results show that EMD improves the prediction for the most of the investigated series, especially if one predictor is used for each IMF separately.
机译:使用模型,将经验模式分解(EMD)和人工神经网络(ANN)与时间序列预测相结合,已经吸引了在众多相关领域的巨大研究兴趣。但是,两种方法组合的方式可以变化。因此,在这项工作中介绍了模型的不同组合之间的比较。第一个目标是验证EMD的使用是否改善了预测结果。第二个目的是比较它是否更好地分组内部模式函数(IMF),然后执行预测,或者单独地预测每个IMF,然后聚合结果。测试方法六种不同的时间序列,结果表明,EMD改善了对大多数研究系列的预测,特别是如果单独使用每个IMF的预测值。

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