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EWT多重分解与若干新型元启发式算法优化的多层感知器月径流预测

蔡亮 包艳飞 崔东文

人民珠江2025,Vol.46Issue(9):72-83,12.
人民珠江2025,Vol.46Issue(9):72-83,12.DOI:10.3969/j.issn.1001-9235.2025.09.008

EWT多重分解与若干新型元启发式算法优化的多层感知器月径流预测

Multi-Layer Perceptron Monthly Runoff Prediction Optimized by EWT Multiple Decomposition and Several New Metaheuristic Algorithms

蔡亮 1包艳飞 1崔东文2

作者信息

  • 1. 云南省水文水资源局曲靖分局,云南 曲靖 655000
  • 2. 云南省文山州水务局,云南 文山 663000
  • 折叠

摘要

Abstract

To improve the accuracy of monthly runoff time series prediction,enhance the performance of multi-layer perceptron(MLP),and compare and verify the optimization effects of four new metaheuristic algorithms on benchmarking functions and instance objective functions,including catch fish optimization algorithm(CFOA),flood algorithm(FLA),arctic puffin optimization(APO),educational competition optimization(ECO),and particle swarm optimization(PSO),an EWTIII-CFOA/FLA/APO/ECO/PSO-MLP prediction model was proposed.The model was validated through a monthly runoff time series instance at Mengda Hydrological Station.Firstly,EWTⅠwas used to decompose the monthly runoff time series into fluctuation and trend terms.FuzzyEn was used to determine the complexity.EWTⅡ and EWTⅢ were used to decompose the more complex fluctuation terms.Secondly,based on the training sets of each component,MLP weight and bias(hyperparameter)were constructed to optimize the instance objective function.Six benchmarking functions were selected as comparative verification functions.The CFOA/FLA/APO/ECO/PSO algorithm was used to perform extreme value optimization and comparative analysis on the benchmarking function and instance objective function,respectively.Finally,the EWTⅠ/EWTⅡ/EWTⅢ-CFOA/FLA/APO/ECO/PSO-MLP model was established to train,predict,and reconstruct each decomposed component.The results show that the EWTIII-FLOA/FLA/APO/ECO-MLP model is superior to other comparative models in fitting and prediction accuracy,with better prediction accuracy.The CFOA/FLA/APO/ECO/PSO algorithm has similar overall rankings for benchmarking function optimization,instance objective function optimization,and EWTⅠ/EWTⅡ/EWTⅢ-FLOA/FLA/APO/ECO/PSO-MLP model prediction accuracy.As the optimization performance of the algorithm gets stronger,the MLP hyperparameter obtained through optimization gets better.The prediction accuracy of the EWTⅠ/EWTⅡ/EWTⅢ-FLOA/FLA/APO/ECO/PSO-MLP model improves with the increase of EWT decomposition weight.As a concise and efficient time series decomposition method,EWTIII can decompose the original monthly runoff series into more easily modeled and predictable components with a larger scale.

关键词

月径流预测/经验小波变换/元启发式算法/多层感知器/函数优化/时间序列

Key words

monthly runoff prediction/empirical wavelet transform/metaheuristic algorithm/multi-layer perceptron/function optimization/time series

分类

建筑与水利

引用本文复制引用

蔡亮,包艳飞,崔东文..EWT多重分解与若干新型元启发式算法优化的多层感知器月径流预测[J].人民珠江,2025,46(9):72-83,12.

基金项目

国家自然科学基金项目(41702278) (41702278)

滇池湖泊生态系统云南省野外科学观测研究站(202305AM340008) (202305AM340008)

人民珠江

1001-9235

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