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Published in: Soft Computing 22/2020

28-05-2020 | Methodologies and Application

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

Authors: Jingmiao Li, Jun Wang

Published in: Soft Computing | Issue 22/2020

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Abstract

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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Literature
go back to reference Cen ZP, Wang J (2018) Forecasting neural network model with novel CID learning rate and EEMD algorithms on energy market. Neurocomputing 317:168–178 Cen ZP, Wang J (2018) Forecasting neural network model with novel CID learning rate and EEMD algorithms on energy market. Neurocomputing 317:168–178
go back to reference Chen J, Wang YL (2018) A resource demand prediction method based on EEMD in cloud computing. Procedia Comput Sci 131:116–123 Chen J, Wang YL (2018) A resource demand prediction method based on EEMD in cloud computing. Procedia Comput Sci 131:116–123
go back to reference Chen SB, Ding CHQ, Luo B (2018) Linear regression based projections for dimensionality reduction. Inf Sci 467:74–86MathSciNetMATH Chen SB, Ding CHQ, Luo B (2018) Linear regression based projections for dimensionality reduction. Inf Sci 467:74–86MathSciNetMATH
go back to reference Chen JL, Jing HJ, Chang YH, Liu Q (2019a) Gated recurrent unit based recurrent neural network for remaining useful life prediction of nonlinear deterioration process. Reliab Eng Syst Saf 185:372–382 Chen JL, Jing HJ, Chang YH, Liu Q (2019a) Gated recurrent unit based recurrent neural network for remaining useful life prediction of nonlinear deterioration process. Reliab Eng Syst Saf 185:372–382
go back to reference Chen Y, Zhang S, Zhang WY, Peng JJ, Cai YS (2019b) 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 185:783–799 Chen Y, Zhang S, Zhang WY, Peng JJ, Cai YS (2019b) 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 185:783–799
go back to reference Chen YT, Chang HB, Meng J, Zhang DX (2019c) Ensemble neural networks (ENN): a gradient-free stochastic method. Neural Netw 110:170–185 Chen YT, Chang HB, Meng J, Zhang DX (2019c) Ensemble neural networks (ENN): a gradient-free stochastic method. Neural Netw 110:170–185
go back to reference Dai HZ, Zheng ZB, Wang W (2017) A new fractional wavelet transform. Commun Nonlinear Sci Numer Simul 44:19–36MathSciNetMATH Dai HZ, Zheng ZB, Wang W (2017) A new fractional wavelet transform. Commun Nonlinear Sci Numer Simul 44:19–36MathSciNetMATH
go back to reference Gafarov FM (2018) Neural electrical activity and neural network growth. Neural Netw 101:15–24 Gafarov FM (2018) Neural electrical activity and neural network growth. Neural Netw 101:15–24
go back to reference Guo QJ, Qi XN, Wei Z, Yin Q, Sun P, Guo PJ, Liu JC (2019) Modeling and characteristic analysis of fouling in a wet cooling tower based on wavelet neural networks. Appl Therm Eng 152:907–916 Guo QJ, Qi XN, Wei Z, Yin Q, Sun P, Guo PJ, Liu JC (2019) Modeling and characteristic analysis of fouling in a wet cooling tower based on wavelet neural networks. Appl Therm Eng 152:907–916
go back to reference Hawinkel P, Swinnen E, Lhermitte S, Verbist B, Van Orshoven J, Muys B (2015) A time series processing tool to extract climate-driven interannual vegetation dynamics using ensemble empirical mode decomposition (EEMD). Remote Sens Environ 169:375–389 Hawinkel P, Swinnen E, Lhermitte S, Verbist B, Van Orshoven J, Muys B (2015) A time series processing tool to extract climate-driven interannual vegetation dynamics using ensemble empirical mode decomposition (EEMD). Remote Sens Environ 169:375–389
go back to reference He CB, Niu P, Yang R, Wang CG, Li ZX, Li HK (2019) Incipient rolling element bearing weak fault feature extraction based on adaptive second-order stochastic resonance incorporated by mode decomposition. Measurement 145:687–701 He CB, Niu P, Yang R, Wang CG, Li ZX, Li HK (2019) Incipient rolling element bearing weak fault feature extraction based on adaptive second-order stochastic resonance incorporated by mode decomposition. Measurement 145:687–701
go back to reference Huang LL, Wang J (2018) Forecasting energy fluctuation model by wavelet decomposition and stochastic recurrent wavelet neural network. Neurocomputing 309:70–82 Huang LL, Wang J (2018) Forecasting energy fluctuation model by wavelet decomposition and stochastic recurrent wavelet neural network. Neurocomputing 309:70–82
go back to reference Huang JW, Xiao QT, Liu JJ, Wang H (2019) Modeling heat transfer properties in an ORC direct contact evaporator using RBF neural network combined with EMD. Energy 173:306–316 Huang JW, Xiao QT, Liu JJ, Wang H (2019) Modeling heat transfer properties in an ORC direct contact evaporator using RBF neural network combined with EMD. Energy 173:306–316
go back to reference Izonin I, Kryvinska N, Tkachenko R, Zub K (2019) An approach towards missing data recovery within IoT smart system. Procedia Comput Sci 155:11–18 Izonin I, Kryvinska N, Tkachenko R, Zub K (2019) An approach towards missing data recovery within IoT smart system. Procedia Comput Sci 155:11–18
go back to reference Jiang DZ, Hu B, Wu ZJ (2017) Prediction of acute hypotensive episodes using EMD, statistical method and multi GP. Soft Comput 21(17):5123–5132 Jiang DZ, Hu B, Wu ZJ (2017) Prediction of acute hypotensive episodes using EMD, statistical method and multi GP. Soft Comput 21(17):5123–5132
go back to reference Kuo RJ, Wu P, Wang CP (2002) An intelligent sales forecasting system through integration of artificial neural networks and fuzzy neural networks with fuzzy weight elimination. Neural Netw 15(7):909–925 Kuo RJ, Wu P, Wang CP (2002) An intelligent sales forecasting system through integration of artificial neural networks and fuzzy neural networks with fuzzy weight elimination. Neural Netw 15(7):909–925
go back to reference Lei Z (2019) An upper limb movement estimation from electromyography by using BP neural network. Biomed Signal Process Control 49:434–439 Lei Z (2019) An upper limb movement estimation from electromyography by using BP neural network. Biomed Signal Process Control 49:434–439
go back to reference Lei YG, He ZJ, Zi YY (2009) Application of the EEMD method to rotor fault diagnosis of rotating machinery. Mech Syst Signal Process 23(4):1327–1338 Lei YG, He ZJ, Zi YY (2009) Application of the EEMD method to rotor fault diagnosis of rotating machinery. Mech Syst Signal Process 23(4):1327–1338
go back to reference Li MS, Chen WC (2012) Application of BP neural network algorithm in sustainable development of highway construction projects. Phys Procedia 25:1212–1217 Li MS, Chen WC (2012) Application of BP neural network algorithm in sustainable development of highway construction projects. Phys Procedia 25:1212–1217
go back to reference Li Z, Yan LT (2019) Stochastic averaging for two-time-scale stochastic partial differential equations with fractional Brownian motion. Nonlinear Anal Hybrid Syst 31:317–333MathSciNetMATH Li Z, Yan LT (2019) Stochastic averaging for two-time-scale stochastic partial differential equations with fractional Brownian motion. Nonlinear Anal Hybrid Syst 31:317–333MathSciNetMATH
go back to reference Li C, Tao Y, Ao WG, Yang S, Bai Y (2018) Improving forecasting accuracy of daily enterprise electricity consumption using a random forest based on ensemble empirical mode decomposition. Energy 165:1220–1227 Li C, Tao Y, Ao WG, Yang S, Bai Y (2018) Improving forecasting accuracy of daily enterprise electricity consumption using a random forest based on ensemble empirical mode decomposition. Energy 165:1220–1227
go back to reference Liao Z, Wang J (2010) Forecasting model of global stock index by stochastic time effective neural network. Expert Syst Appl 37(1):834–841 Liao Z, Wang J (2010) Forecasting model of global stock index by stochastic time effective neural network. Expert Syst Appl 37(1):834–841
go back to reference Lin CJ, Xu YJ (2006) A novel evolution learning for recurrent wavelet-based neuro-fuzzy networks. Soft Comput 10(3):193–205 Lin CJ, Xu YJ (2006) A novel evolution learning for recurrent wavelet-based neuro-fuzzy networks. Soft Comput 10(3):193–205
go back to reference Liu H, Mi XW, Li YF (2018a) Wind speed forecasting method based on deep learning strategy using empirical wavelet transform, long short term memory neural network and Elman neural network. Energy Convers Manag 156:498–514 Liu H, Mi XW, Li YF (2018a) Wind speed forecasting method based on deep learning strategy using empirical wavelet transform, long short term memory neural network and Elman neural network. Energy Convers Manag 156:498–514
go back to reference Liu J, Lin L, Ren HL, Gu MH, Wang J, Youn G, Kim JU (2018b) Building neural network language model with POS-based negative sampling and stochastic conjugate gradient descent. Soft Comput 22(20):6705–6717 Liu J, Lin L, Ren HL, Gu MH, Wang J, Youn G, Kim JU (2018b) Building neural network language model with POS-based negative sampling and stochastic conjugate gradient descent. Soft Comput 22(20):6705–6717
go back to reference Liu MF, Guan WL, Yan J, Hu HJ (2019) Correlation identification in multimodal weibo via back propagation neural network with genetic algorithm. J Vis Commun Image Represent 60:312–318 Liu MF, Guan WL, Yan J, Hu HJ (2019) Correlation identification in multimodal weibo via back propagation neural network with genetic algorithm. J Vis Commun Image Represent 60:312–318
go back to reference Lu KH, Hong CM, Xu QQ (2019) Recurrent wavelet-based Elman neural network with modified gravitational search algorithm control for integrated offshore wind and wave power generation systems. Energy 170:40–52 Lu KH, Hong CM, Xu QQ (2019) Recurrent wavelet-based Elman neural network with modified gravitational search algorithm control for integrated offshore wind and wave power generation systems. Energy 170:40–52
go back to reference Lyu JC, Zhang J (2019) BP neural network prediction model for suicide attempt among Chinese rural residents. J Affect Disord 246:465–473 Lyu JC, Zhang J (2019) BP neural network prediction model for suicide attempt among Chinese rural residents. J Affect Disord 246:465–473
go back to reference Naganathan H, Chong WK, Huang Z, Cheng Y (2016) A non-stationary analysis using ensemble empirical mode decomposition to detect anomalies in building energy consumption. Procedia Eng 145:1059–1065 Naganathan H, Chong WK, Huang Z, Cheng Y (2016) A non-stationary analysis using ensemble empirical mode decomposition to detect anomalies in building energy consumption. Procedia Eng 145:1059–1065
go back to reference Niu HL, Wang J (2013) Volatility clustering and long memory of financial time series and financial price model. Digit Signal Process 23(2):489–498MathSciNet Niu HL, Wang J (2013) Volatility clustering and long memory of financial time series and financial price model. Digit Signal Process 23(2):489–498MathSciNet
go back to reference Ong P, Zainuddin Z (2019) Optimizing wavelet neural networks using modified cuckoo search for multi-step ahead chaotic time series prediction. Appl Soft Comput 80:374–386 Ong P, Zainuddin Z (2019) Optimizing wavelet neural networks using modified cuckoo search for multi-step ahead chaotic time series prediction. Appl Soft Comput 80:374–386
go back to reference Ozoegwu CG (2019) Artificial neural network forecast of monthly mean daily global solar radiation of selected locations based on time series and month number. J Clean Prod 216:1–13 Ozoegwu CG (2019) Artificial neural network forecast of monthly mean daily global solar radiation of selected locations based on time series and month number. J Clean Prod 216:1–13
go back to reference Pati YC, Krishnaprasad PS (1993) Analysis and synthesis of feedforward neural networks using discrete affine wavelet transformations. IEEE Trans Neural Netw 4(1):73–85 Pati YC, Krishnaprasad PS (1993) Analysis and synthesis of feedforward neural networks using discrete affine wavelet transformations. IEEE Trans Neural Netw 4(1):73–85
go back to reference Puchalsky W, Ribeiro GT, Veiga CP, Freire RZ, Coelho LS (2018) Agribusiness time series forecasting using Wavelet neural networks and metaheuristic optimization: an analysis of the soybean sack price and perishable products demand. Int J Prod Econ 203:174–189 Puchalsky W, Ribeiro GT, Veiga CP, Freire RZ, Coelho LS (2018) Agribusiness time series forecasting using Wavelet neural networks and metaheuristic optimization: an analysis of the soybean sack price and perishable products demand. Int J Prod Econ 203:174–189
go back to reference Qu ZX, Mao WQ, Zhang KQ, Zhang WY, Li ZP (2019) Multi-step wind speed forecasting based on a hybrid decomposition technique and an improved back-propagation neural network. Renew Energy 133:919–929 Qu ZX, Mao WQ, Zhang KQ, Zhang WY, Li ZP (2019) Multi-step wind speed forecasting based on a hybrid decomposition technique and an improved back-propagation neural network. Renew Energy 133:919–929
go back to reference Ribeiro GT, Mariani VC, Coelho LS (2019) Enhanced ensemble structures using wavelet neural networks applied to short-term load forecasting. Eng Appl Artif Intell 82:272–281 Ribeiro GT, Mariani VC, Coelho LS (2019) Enhanced ensemble structures using wavelet neural networks applied to short-term load forecasting. Eng Appl Artif Intell 82:272–281
go back to reference Ruan GC, Tan Y (2010) A three-layer back-propagation neural network for spam detection using artificial immune concentration. Soft Comput 14(2):139–150 Ruan GC, Tan Y (2010) A three-layer back-propagation neural network for spam detection using artificial immune concentration. Soft Comput 14(2):139–150
go back to reference Sharma A (2018) Guided stochastic gradient descent algorithm for inconsistent datasets. Appl Soft Comput 73:1068–1080 Sharma A (2018) Guided stochastic gradient descent algorithm for inconsistent datasets. Appl Soft Comput 73:1068–1080
go back to reference Szu H, Telfer B, Garcia J (1996) Wavelet transforms and neural networks for compression and recognition. Neural Netw 9(4):695–708 Szu H, Telfer B, Garcia J (1996) Wavelet transforms and neural networks for compression and recognition. Neural Netw 9(4):695–708
go back to reference Tan QF, Lei XH, Wang X, Wang H, Wen X, Ji Y, Kang AQ (2018) An adaptive middle and long-term runoff forecast model using EEMD-ANN hybrid approach. J Hydrol 567:767–780 Tan QF, Lei XH, Wang X, Wang H, Wen X, Ji Y, Kang AQ (2018) An adaptive middle and long-term runoff forecast model using EEMD-ANN hybrid approach. J Hydrol 567:767–780
go back to reference Wang J, Li X (2018) A combined neural network model for commodity price forecasting with SSA. Soft Comput 22(16):5323–5333 Wang J, Li X (2018) A combined neural network model for commodity price forecasting with SSA. Soft Comput 22(16):5323–5333
go back to reference Wang J, Wang J (2015) Forecasting stock market indexes using principle component analysis and stochastic time effective neural networks. Neurocomputing 156:68–78 Wang J, Wang J (2015) Forecasting stock market indexes using principle component analysis and stochastic time effective neural networks. Neurocomputing 156:68–78
go back to reference Wang JZ, Wang JJ, Zhang ZJ, Guo SP (2011) Forecasting stock indices with back propagation neural network. Expert Syst Appl 38(11):14346–14355 Wang JZ, Wang JJ, Zhang ZJ, Guo SP (2011) Forecasting stock indices with back propagation neural network. Expert Syst Appl 38(11):14346–14355
go back to reference Wang L, Yang Y, Min R, Chakradhar S (2017) Accelerating deep neural network training with inconsistent stochastic gradient descent. Neural Netw 93:219–229MATH Wang L, Yang Y, Min R, Chakradhar S (2017) Accelerating deep neural network training with inconsistent stochastic gradient descent. Neural Netw 93:219–229MATH
go back to reference Wang L, Wang ZG, Qu H, Liu S (2018) Optimal forecast combination based on neural networks for time series forecasting. Appl Soft Comput 66:1–17 Wang L, Wang ZG, Qu H, Liu S (2018) Optimal forecast combination based on neural networks for time series forecasting. Appl Soft Comput 66:1–17
go back to reference Wang WY, Chen QJ, Yan DL, Geng DZ (2019a) A novel comprehensive evaluation method of the draft tube pressure pulsation of Francis turbine based on EEMD and information entropy. Mech Syst Signal Process 116:772–786 Wang WY, Chen QJ, Yan DL, Geng DZ (2019a) A novel comprehensive evaluation method of the draft tube pressure pulsation of Francis turbine based on EEMD and information entropy. Mech Syst Signal Process 116:772–786
go back to reference Wen XB, Zhang H, Xu XQ, Quan JJ (2009) A new watermarking approach based on probabilistic neural network in wavelet domain. Soft Comput 13(4):355–360 Wen XB, Zhang H, Xu XQ, Quan JJ (2009) A new watermarking approach based on probabilistic neural network in wavelet domain. Soft Comput 13(4):355–360
go back to reference Wu WY, Liao WL, Miao J, Du GL (2019a) Using gated recurrent unit network to forecast short-term load considering impact of electricity price. Energy Procedia 158:3369–3374 Wu WY, Liao WL, Miao J, Du GL (2019a) Using gated recurrent unit network to forecast short-term load considering impact of electricity price. Energy Procedia 158:3369–3374
go back to reference Wu YX, Wu QB, Zhu JQ (2019b) Improved EEMD-based crude oil price forecasting using LSTM networks. Phys A 516:114–124 Wu YX, Wu QB, Zhu JQ (2019b) Improved EEMD-based crude oil price forecasting using LSTM networks. Phys A 516:114–124
go back to reference Xu DP, Li ZX, Wu W (2010) Convergence of gradient method for a fully recurrent neural network. Soft Comput 14(3):245–250MATH Xu DP, Li ZX, Wu W (2010) Convergence of gradient method for a fully recurrent neural network. Soft Comput 14(3):245–250MATH
go back to reference Yang JH, Xiong W, Li SJ, Xu C (2019) Learning structured and non-redundant representations with deep neural networks. Pattern Recognit 86:224–235 Yang JH, Xiong W, Li SJ, Xu C (2019) Learning structured and non-redundant representations with deep neural networks. Pattern Recognit 86:224–235
go back to reference Yu Y, Wang J (2012) Lattice-oriented percolation system applied to volatility behavior of stock market. J Appl Stat 39(4):785–797MathSciNet Yu Y, Wang J (2012) Lattice-oriented percolation system applied to volatility behavior of stock market. J Appl Stat 39(4):785–797MathSciNet
go back to reference Yuan CS, Sun XM, Wu QMJ (2019) Difference co-occurrence matrix using BP neural network for fingerprint liveness detection. Soft Comput 23(13):5157–5169 Yuan CS, Sun XM, Wu QMJ (2019) Difference co-occurrence matrix using BP neural network for fingerprint liveness detection. Soft Comput 23(13):5157–5169
go back to reference Zhang S, Cheng L (2016) On the efficacy of the wavelet decomposition for high frequency vibration analyses. J Sound Vib 380:213–223 Zhang S, Cheng L (2016) On the efficacy of the wavelet decomposition for high frequency vibration analyses. J Sound Vib 380:213–223
go back to reference Zhang B, Wu JL, Chang PC (2018) A multiple time series-based recurrent neural network for short-term load forecasting. Soft Comput 22(12):4099–4112 Zhang B, Wu JL, Chang PC (2018) A multiple time series-based recurrent neural network for short-term load forecasting. Soft Comput 22(12):4099–4112
go back to reference Zhang SH, Wang JY, Guo ZH (2019) Research on combined model based on multi-objective optimization and application in time series forecast. Soft Comput 23(22):11493–11521 Zhang SH, Wang JY, Guo ZH (2019) Research on combined model based on multi-objective optimization and application in time series forecast. Soft Comput 23(22):11493–11521
go back to reference Zhou ZB, Lin L, Li SX (2018) International stock market contagion: a CEEMDAN wavelet analysis. Econ Model 72:333–352 Zhou ZB, Lin L, Li SX (2018) International stock market contagion: a CEEMDAN wavelet analysis. Econ Model 72:333–352
go back to reference Zollanvari A, Dougherty ER (2014) Moments and root-mean-square error of the Bayesian MMSE estimator of classification error in the Gaussian model. Pattern Recognit 47(6):2178–2192MATH Zollanvari A, Dougherty ER (2014) Moments and root-mean-square error of the Bayesian MMSE estimator of classification error in the Gaussian model. Pattern Recognit 47(6):2178–2192MATH
Metadata
Title
Stochastic recurrent wavelet neural network with EEMD method on energy price prediction
Authors
Jingmiao Li
Jun Wang
Publication date
28-05-2020
Publisher
Springer Berlin Heidelberg
Published in
Soft Computing / Issue 22/2020
Print ISSN: 1432-7643
Electronic ISSN: 1433-7479
DOI
https://doi.org/10.1007/s00500-020-05007-2

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