Journal of Hydroelectric Engineering ›› 2023, Vol. 42 ›› Issue (7): 56-68.doi: 10.11660/slfdxb.20230706
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Abstract: Accurate deformation prediction is of great significance to safe operation and long-term maintenance of dams, but previous methods have low prediction accuracy and lack sufficient information extraction from monitoring data. This paper constructs a relationship of dam deformation components versus their influencing factors through variational mode decomposition on the deformation series, and constructs Long Short-Term Memory neural networks with different structural parameters. Then, we develop a dam deformation analysis model that can realize optimal modeling through integrating the Grey Wolf Optimizer algorithm, the Minimum Redundancy Maximum Relevance method, and other strategies to improve its accuracy from three aspects-front-end decomposition, information extraction, and time series prediction. A case study shows that compared with the conventional monitoring model, this new model is more accurate in the simulations of dam deformation time variations and better in generalization performance, thus useful for dam deformation safety analysis.
Key words: dam deformation monitoring model, feature screening, variational mode decomposition, Long Short-Term Memory neural network, Minimum-Redundancy Maximum-Relevance
QI Yining, SU Huaizhi, YAO Kefu, YANG Jiaquan, XU Weinan. Dam deformation analysis model based on characteristic decomposition screening of coupling time series[J].Journal of Hydroelectric Engineering, 2023, 42(7): 56-68.
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URL: http://www.slfdxb.cn/EN/10.11660/slfdxb.20230706
http://www.slfdxb.cn/EN/Y2023/V42/I7/56
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