人民珠江2025,Vol.46Issue(11):44-54,11.DOI:10.3969/j.issn.1001-9235.2025.11.006
基于二次分解技术与十种"鸟"群算法优化的OSELM月径流预测
Improved Monthly Runoff Prediction of OSELM Based on Secondary Decomposition Technique and Optimization of Ten"Bird"Swarm Algorithms
摘要
Abstract
To improve the accuracy of monthly runoff time series prediction and enhance the performance of online sequential extreme learning machine(OSELM)prediction,ten"bird"swarm algorithms were compared and validated for optimization,including satin bowerbird optimizer(SBO)/Harris hawks optimization(HHO)/seagull optimization algorithm(SOA)/African vultures optimization algorithm(AVOA)/coot optimization algorithm(COOT)/pelican optimization algorithm(POA)/eagle perching optimization(EPO)/osprey optimization algorithm(OOA).The time varying filtering based empirical mode decomposition(TVFEMDII)-ten"bird"swarm algorithms-monthly runoff time series prediction models of OSELM were proposed.Firstly,TVFEMDⅠ was used to decompose the monthly runoff time series,obtaining three decomposition components:TVFEMD1~TVFEMD3.By using approximate entropy(ApEn)to calculate the approximate entropy values of each component in the initial decomposition,the TVFEMD3 component with a larger approximate entropy value was subjected to secondary decomposition using TVFEMDII,resulting in TVFEMDII3-1~TVFEMDII3-3 components.Secondly,based on the training sets of each component,six OSELM hyperparameter optimization instance objective functions were constructed,and ten"bird"swarm algorithms were used to optimize the hyperparameters of the six instance objective functions.Finally,the TVFEMDII-ten"bird"swarm algorithms-OSELM model was established,and various models were validated through a monthly runoff prediction example at Dishui Station in Yunnan Province.The results show that:① The overall ranking of the ten"bird"swarm algorithms for optimizing the instance objective function is completely consistent with the overall ranking of the TVFEMDII-RBMO/PKO/SBOA/HHO/SOA/AVOA/COOT/POA/EPO/OOA-OSELM model prediction accuracy,indicating that a better optimization effect of the ten"bird"swarm algorithms means a higher accuracy of monthly runoff prediction.② Comparatively speaking,the TVFEMDII-RBMO/POA/OOA/AVOA-OSELM model performs better,with predicted EMAP,EMA,and ERMS ranging from 0.233%to 0.397%,0.005 m3/s to 0.008 m3/s,and 0.006 m3/s to 0.013 m3/s,respectively.The prediction error is lower than in other comparative models.③ The decomposition effect of TVFEMDII is better than that of TVFEMDI.While considering the computational scale,it has a good decomposition effect and is the key to improving the accuracy of monthly runoff prediction.关键词
月径流预测/时变滤波器经验模态分解/二次分解/十种"鸟"群算法/在线惯序极限学习机Key words
monthly runoff prediction/time varying filtering based empirical mode decomposition/secondary decomposition/ten"bird"swarm algorithms/online sequential extreme learning machine分类
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邓智予,崔东文..基于二次分解技术与十种"鸟"群算法优化的OSELM月径流预测[J].人民珠江,2025,46(11):44-54,11.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)