Stochastic recurrent wavelet neural network with EEMD method on energy price prediction

被引:0
作者
Jingmiao Li
Jun Wang
机构
[1] Beijing Jiaotong University,School of Science
来源
Soft Computing | 2020年 / 24卷
关键词
Prediction; Stochastic recurrent wavelet neural network; Ensemble empirical mode decomposition; Energy indexes; Error evaluation; Multiscale complexity-invariant distance;
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暂无
中图分类号
学科分类号
摘要
Novel hybrid neural network prediction model (denoted by E-SRWNN) is formed by combining ensemble empirical mode decomposition (EEMD) and stochastic recurrent wavelet neural network (SRWNN), in order to improve the precision of energy indexes price forecasting. Energy index price series are non-stationary, nonlinear and random. EEMD method is utilized to decompose the closing prices of four energy indexes into subsequences with different frequencies, and the SRWNN model is composed by adding stochastic time effective function and recurrent layer to the wavelet neural network (WNN). Stochastic time effective function makes the model assign different weights to the historical data at different times, and the introduction of recurrent layer structure will enhance the data learning. In this paper, E-SRWNN model is compared with other WNN-based models and the deep learning network GRU. In the error evaluation, the general standards, such as linear regression analysis, mean absolute error and theil inequality coefficient, are utilized to compare the predicted effects of different models, and then multiscale complexity-invariant distance is applied for further analysis. Empirical research illustrates that the proposed E-SRWNN model displays strong forecasting ability and accurate forecasting results in energy price series forecasting.
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页码:17133 / 17151
页数:18
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  • [1] Cao JS(2019)Exploration of stock index change prediction model based on the combination of principal component analysis and artificial neural network Soft Comput 317 168-178
  • [2] Wang JH(2018)Forecasting neural network model with novel CID learning rate and EEMD algorithms on energy market Neurocomputing 131 116-123
  • [3] Cen ZP(2018)A resource demand prediction method based on EEMD in cloud computing Procedia Comput Sci 467 74-86
  • [4] Wang J(2018)Linear regression based projections for dimensionality reduction Inf Sci 185 372-382
  • [5] Chen J(2019)Gated recurrent unit based recurrent neural network for remaining useful life prediction of nonlinear deterioration process Reliab Eng Syst Saf 185 783-799
  • [6] Wang YL(2019)Multifactor spatio-temporal correlation model based on a combination of convolutional neural network and long short-term memory neural network for wind speed forecasting Energy Convers Manag 110 170-185
  • [7] Chen SB(2019)Ensemble neural networks (ENN): a gradient-free stochastic method Neural Netw 44 19-36
  • [8] Ding CHQ(2017)A new fractional wavelet transform Commun Nonlinear Sci Numer Simul 101 15-24
  • [9] Luo B(2018)Neural electrical activity and neural network growth Neural Netw 152 907-916
  • [10] Chen JL(2019)Modeling and characteristic analysis of fouling in a wet cooling tower based on wavelet neural networks Appl Therm Eng 169 375-389