A weighted EMD-based prediction model based on TOPSIS and feed forward neural network for noised time series

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摘要

In line with the decomposition-and-reconstitution principle, the empirical mode decomposition (EMD)-based modeling framework has been a widely used alternative for non-linear, non-stationary time series prediction to decompose an original time series into different sub-series that can be identified, separately predicted, and then recombined for aggregate forecasting. However, in many cases, recombination has been found to adversely affect prediction accuracy. To address this problem, this study incorporates a feed forward neural network (FNN) into the EMD-based forecasting framework and brings forward the weighted recombination strategy to allow for one step ahead forward prediction. To justify and compare the effectiveness of the proposed model, four non-linear, non-stationary data series are applied and benchmarked using four well-established prediction model recombination methods. The results show that the proposed weighted EMD-based forecasting model observably improves forecast validity. This approach also has great promise for intricate and noise disturbed irregular and highly volatile time series predictions.

论文关键词:Empirical mode decomposition (EMD),Feed forward neural network (FNN),Technique for order preference by similarity to an ideal solution (TOPSIS),Combination weights

论文评审过程:Received 2 February 2016, Revised 10 June 2017, Accepted 14 June 2017, Available online 22 June 2017, Version of Record 24 July 2017.

论文官网地址:https://doi.org/10.1016/j.knosys.2017.06.022