Integrated forecasting method of medium-and long-term runoff by ridge regression based on optimal sub-model selection

Water Supply Pub Date : 2024-02-24 DOI:10.2166/ws.2024.033
Binbin Chen, Zhengdong Chen, Chuping Song, Yanhong Song
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Abstract

Numerous studies have demonstrated that the combination models can improve the runoff forecast performance compared to individual forecasts. However, some models do not take into account the effects of inappropriate sub-models on the combination models. Based on this, a medium-and long-term runoff integrated forecasting method based on optimal sub-models selection was proposed. Firstly, the sub-models, including linear regression (MLR), BP neural network (BPNN), wavelet neural network (WNN), and support vector regression (SVR), are optimally selected based on the nearness degree. Secondly, RR is used to combine the optimal sub-models to predict runoff. Finally, the Guandi hydropower station is taken as an example to verify the effect of the integrated forecasting model. The results show that SVR, BPNN, and WNN are the optimal sub-models, and RR-3 is the optimal integrated forecasting model composed of the optimal sub-models. In addition, compared with the other two combination models, the RR-3 performs better.
基于优化子模型选择的脊回归中长期径流综合预报方法
大量研究表明,与单独预测相比,组合模型可以提高径流预测性能。然而,有些模型没有考虑到不合适的子模型对组合模型的影响。在此基础上,提出了一种基于子模型优化选择的中长期径流综合预报方法。首先,根据近似度优化选择子模型,包括线性回归(MLR)、BP 神经网络(BPNN)、小波神经网络(WNN)和支持向量回归(SVR)。其次,使用 RR 组合最优子模型来预测径流。最后,以官厅水电站为例验证了综合预报模型的效果。结果表明,SVR、BPNN 和 WNN 是最优子模型,RR-3 是由最优子模型组成的最优综合预报模型。此外,与其他两个组合模型相比,RR-3 的性能更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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