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Forecasting reservoir monthly runoff via ensemble empirical mode decomposition and extreme learning machine optimized by an improved gravitational search algorithm

机译:通过改进的重力搜索算法优化的集合经验模式分解和极端学习机预测储层每月径流

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Monthly streamflow prediction plays a significant role in reservoir operation and water resource management. Hence, this research tries to develop a hybrid model for accurate monthly streamflow prediction, where the ensemble empirical mode decomposition (EEMD) is firstly used to decompose the original streamflow data into a finite amount of intrinsic mode functions (IMFs) and a residue; and then the extreme learning machine (ELM) is employed to forecast each IMFs and the residue, while an improved gravitational search algorithm (IGSA) based on elitist-guide evolution strategies, selection operator and mutation operator is used to select the parameters of all the ELM models; finally, the summarized predicated results for all the subcomponents are treated as the final forecasting result. The hybrid method is applied to forecast the monthly runoff of Three Gorges in China, while four quantitative indexes are used to test the performances of the developed forecasting models. The results show that EEMD can effectively separate the internal characteristics of the original monthly runoff, and the hybrid model is able to make an obvious improvement over other models in hydrological time series prediction. (C) 2019 Elsevier B.V. All rights reserved.
机译:每月流流预测在储层运营和水资源管理中起着重要作用。因此,该研究试图开发用于准确的每月流流预测的混合模型,其中集合经验模式分解(EEMD)首先用于将原始流流数据分解为有限量的内在模式功能(IMF)和残留物;然后,使用极端学习机(ELM)来预测每个IMF和残留物,而基于Elitist-Guide演进策略,选择操作员和突变运算符的改进的重力搜索算法(IGSA)用于选择所有的参数榆树模型;最后,对所有子组件的总结预测结果被视为最终的预测结果。杂交方法适用于预测中国的三峡径流,而四种量化指标用于测试发达的预测模型的性能。结果表明,EEMD可以有效地分离原始月度径流的内部特征,混合模型能够在水文时间序列预测中的其他模型中显着改善。 (c)2019年Elsevier B.V.保留所有权利。

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