2024
DOI: 10.1155/stc/3330769
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A Robust Displacement Monitoring Model for High‐Arch Dams Integrating Signal Dimensionality Reduction and Deep Learning‐Based Residual Correction

Yantao Zhu,
Xinqiang Niu,
Tianyou Yan
et al.

Abstract: Deformation is a critical indicator for the safety control of high‐arch dams, yet traditional statistical regression methods often exhibit poor predictive performance when applied to long‐sequence time series data. In this study, we develop a robust predictive model for deformation behavior in high‐arch dams by integrating signal dimensionality reduction with deep learning (DL)‐based residual correction techniques. First, the fast Fourier transform is employed to decompose air and water temperature sequences, … Show more

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