基于自编码器和LSTM神经网络的混沌时间序列多步超前预测策略的比较研究

Ngoc Phien Nguyen, T. Duong, Platos Jan
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引用次数: 2

摘要

利用深度神经网络对时间序列和混沌时间序列数据进行预测已经有了大量的研究。然而,利用深度神经网络对混沌时间序列进行多步预测的研究却很少。文献中提出了几种处理多步超前预测问题的策略:递归(或迭代)策略,直接策略,递归和直接策略的组合,称为DirRec,多输入多输出(MIMO)策略,第五种策略,称为DirMO,结合了直接和MIMO策略。本文旨在提出一种新的混沌时间序列预测深度学习模型:基于lstm的堆叠自编码器,并回答研究问题:使用基于lstm的堆叠自编码器进行多步超前预测,哪种策略对混沌时间序列的预测效果最好?我们根据两个性能标准进行评估和比较:均方根误差(RMSE)和平均绝对百分比误差(MAPE)。在合成混沌时间序列数据集和实际混沌时间序列数据集上的实验结果表明,MIMO策略对基于lstm的堆叠自编码器的混沌时间序列预测具有最佳的预测精度。
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Strategies of Multi-Step-ahead Forecasting for Chaotic Time Series using Autoencoder and LSTM Neural Networks: A Comparative Study
There has been a lot of research on the use of deep neural networks in forecasting time series and chaotic time series data. However, there exist very few works on multi-step ahead forecasting in chaotic time series using deep neural networks. Several strategies that deal with multi-step-ahead forecasting problem have been proposed in literature: recursive (or iterated) strategy, direct strategy, a combination of both the recursive and direct strategies, called DirRec, the Multiple-Input Multiple-Output (MIMO) strategy, and the fifth strategy, called DirMO which combines Direct and MIMO strategies. This paper aims to propose a new deep learning model for chaotic time series forecasting: LSTM-based stacked autoencoder and answer the research question: which strategy for multi-step ahead forecasting using LSTM-based stacked autoencoder yields the best performance for chaotic time series. We evaluated and compared in terms of two performance criteria: Root-Mean-Square Error (RMSE) and Mean-Absolute-Percentage Error (MAPE). The experimental results on synthetic and real-world chaotic time series datasets reveal that MIMO strategy provides the best predictive accuracy for chaotic time series forecasting using LSTM-based stacked autoencoder.
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