A Compound Approach for Monthly Runoff Forecasting Based on Multiscale Analysis and Deep Network with Sequential Structure

Accurate runoff forecasting is of great significance for the optimization of water resource management and regulation. Given such a challenge, a novel compound approach combining time-varying filtering-based empirical mode decomposition (TVFEMD), sample entropy (SE)-based subseries recombination, an...

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Main Authors: Shi Chen, Shuning Dong, Zhiguo Cao, Junting Guo
Format: Article
Language:English
Published: MDPI AG 2020-08-01
Series:Water
Subjects:
Online Access:https://www.mdpi.com/2073-4441/12/8/2274
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spelling doaj-b3c078fcdf3c4e36b429ba94c328a9492020-11-25T03:03:33ZengMDPI AGWater2073-44412020-08-01122274227410.3390/w12082274A Compound Approach for Monthly Runoff Forecasting Based on Multiscale Analysis and Deep Network with Sequential StructureShi Chen0Shuning Dong1Zhiguo Cao2Junting Guo3College of Water Resources and Architectural Engineering, Northwest A&F University, Yanglin 712100, ChinaXi’an Research Institute of China Coal Technology & Engineering Group Corp, Xi’an 70054, ChinaState Key Laboratory of Water Resources Protection and Utilization in Coal Mining, Beijing 100011, ChinaState Key Laboratory of Water Resources Protection and Utilization in Coal Mining, Beijing 100011, ChinaAccurate runoff forecasting is of great significance for the optimization of water resource management and regulation. Given such a challenge, a novel compound approach combining time-varying filtering-based empirical mode decomposition (TVFEMD), sample entropy (SE)-based subseries recombination, and the newly developed deep sequential structure incorporating convolutional neural network (CNN) into a gated recurrent unit network (GRU) is proposed for monthly runoff forecasting. Firstly, the runoff series is disintegrated into a collection of subseries adopting TVFEMD, considering the volatility of runoff series caused by complex environmental and human factors. The subseries recombination strategy based on SE and recombination criterion is employed to reconstruct the subseries possessing the approximate complexity. Subsequently, the newly developed deep sequential structure based on CNN and GRU (CNNGRU) is applied to predict all the preprocessed subseries. Eventually, the predicted values obtained above are aggregated to deduce the ultimate prediction results. To testify to the efficiency and effectiveness of the proposed approach, eight relevant contrastive models were applied to the monthly runoff series collected from Baishan reservoir, where the experimental results demonstrated that the evaluation metrics obtained by the proposed model achieved an average index decrease of 44.35% compared with all the contrast models.https://www.mdpi.com/2073-4441/12/8/2274monthly runoff forecastingtime-varying filtering-based empirical mode decompositionsubseries recombinationdeep sequential structureconvolutional neural networkgated recurrent unit network
collection DOAJ
language English
format Article
sources DOAJ
author Shi Chen
Shuning Dong
Zhiguo Cao
Junting Guo
spellingShingle Shi Chen
Shuning Dong
Zhiguo Cao
Junting Guo
A Compound Approach for Monthly Runoff Forecasting Based on Multiscale Analysis and Deep Network with Sequential Structure
Water
monthly runoff forecasting
time-varying filtering-based empirical mode decomposition
subseries recombination
deep sequential structure
convolutional neural network
gated recurrent unit network
author_facet Shi Chen
Shuning Dong
Zhiguo Cao
Junting Guo
author_sort Shi Chen
title A Compound Approach for Monthly Runoff Forecasting Based on Multiscale Analysis and Deep Network with Sequential Structure
title_short A Compound Approach for Monthly Runoff Forecasting Based on Multiscale Analysis and Deep Network with Sequential Structure
title_full A Compound Approach for Monthly Runoff Forecasting Based on Multiscale Analysis and Deep Network with Sequential Structure
title_fullStr A Compound Approach for Monthly Runoff Forecasting Based on Multiscale Analysis and Deep Network with Sequential Structure
title_full_unstemmed A Compound Approach for Monthly Runoff Forecasting Based on Multiscale Analysis and Deep Network with Sequential Structure
title_sort compound approach for monthly runoff forecasting based on multiscale analysis and deep network with sequential structure
publisher MDPI AG
series Water
issn 2073-4441
publishDate 2020-08-01
description Accurate runoff forecasting is of great significance for the optimization of water resource management and regulation. Given such a challenge, a novel compound approach combining time-varying filtering-based empirical mode decomposition (TVFEMD), sample entropy (SE)-based subseries recombination, and the newly developed deep sequential structure incorporating convolutional neural network (CNN) into a gated recurrent unit network (GRU) is proposed for monthly runoff forecasting. Firstly, the runoff series is disintegrated into a collection of subseries adopting TVFEMD, considering the volatility of runoff series caused by complex environmental and human factors. The subseries recombination strategy based on SE and recombination criterion is employed to reconstruct the subseries possessing the approximate complexity. Subsequently, the newly developed deep sequential structure based on CNN and GRU (CNNGRU) is applied to predict all the preprocessed subseries. Eventually, the predicted values obtained above are aggregated to deduce the ultimate prediction results. To testify to the efficiency and effectiveness of the proposed approach, eight relevant contrastive models were applied to the monthly runoff series collected from Baishan reservoir, where the experimental results demonstrated that the evaluation metrics obtained by the proposed model achieved an average index decrease of 44.35% compared with all the contrast models.
topic monthly runoff forecasting
time-varying filtering-based empirical mode decomposition
subseries recombination
deep sequential structure
convolutional neural network
gated recurrent unit network
url https://www.mdpi.com/2073-4441/12/8/2274
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