A hybrid annual runoff prediction model using echo state network and gated recurrent unit based on sand cat swarm optimization with Markov chain error correction method

IF 2.2 3区 工程技术 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Journal of Hydroinformatics Pub Date : 2024-05-16 DOI:10.2166/hydro.2024.038
Jun Wang, Wenchuan Wang, Xiao-xue Hu, Miao Gu, Yang-hao Hong, Hong-fei Zang
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Abstract

Reliable annual runoff prediction is crucial for efficient water resource planning. Therefore, this study proposes a hybrid model based on the combination of sand cat swarm optimization (SCSO), echo state network (ESN), gated recurrent unit (GRU), least squares method (LSM), and Markov chain (MC) models to improve the accuracy of annual runoff prediction. First, correlation analysis is conducted on multifactor data related to runoff to determine the input of the model. Second, the SCSO algorithm is used to optimize the parameters of the ESN and GRU models, and the SCSO-ESN and SCSO-GRU models are established. Next, the LSM is used to couple the prediction results of the SCSO-ESN and SCSO-GRU models to obtain the initial prediction results of the SCSO-ESN-GRU model. Finally, the initial prediction results are corrected for errors using MC to get the final prediction results. Two stations are selected as experimental stations, and five evaluation indicators are chosen to reflect the model's predictive performance at the experimental stations. The results show that the combined prediction model corrected by the MC achieved the optimal prediction performance at both experimental stations. This study emphasizes that using a combination prediction model based on MC correction can significantly improve the accuracy of prediction.
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基于马尔科夫链误差修正法的沙猫群优化,使用回波状态网络和门控递归单元的混合年径流预测模型
可靠的年径流预测对于高效的水资源规划至关重要。因此,本研究提出了一种基于沙猫群优化(SCSO)、回声状态网络(ESN)、门控循环单元(GRU)、最小二乘法(LSM)和马尔可夫链(MC)模型组合的混合模型,以提高年径流预测的精度。首先,对与径流相关的多因素数据进行相关性分析,以确定模型的输入。其次,利用 SCSO 算法优化 ESN 和 GRU 模型的参数,建立 SCSO-ESN 和 SCSO-GRU 模型。接着,利用 LSM 将 SCSO-ESN 和 SCSO-GRU 模型的预测结果耦合起来,得到 SCSO-ESN-GRU 模型的初始预测结果。最后,利用 MC 对初始预测结果进行误差修正,得到最终预测结果。选取两个站点作为实验站,选取五个评价指标来反映模型在实验站的预测性能。结果表明,经 MC 修正的组合预测模型在两个实验站都达到了最佳预测性能。本研究强调,使用基于 MC 修正的组合预测模型可以显著提高预测精度。
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来源期刊
Journal of Hydroinformatics
Journal of Hydroinformatics 工程技术-工程:土木
CiteScore
4.80
自引率
3.70%
发文量
59
审稿时长
3 months
期刊介绍: Journal of Hydroinformatics is a peer-reviewed journal devoted to the application of information technology in the widest sense to problems of the aquatic environment. It promotes Hydroinformatics as a cross-disciplinary field of study, combining technological, human-sociological and more general environmental interests, including an ethical perspective.
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