蒋成阳, 苏怀智, 徐波. Displacement prediction model for arch dams with cracks integrating feature selection and feature extraction[J]. Journal of Hydroelectric Engineering, 2026, 45(2).
蒋成阳, 苏怀智, 徐波. Displacement prediction model for arch dams with cracks integrating feature selection and feature extraction[J]. Journal of Hydroelectric Engineering, 2026, 45(2). DOI: 10.11660/slfdxb.20260201.
Previous prediction models were limited by their inadequate consideration of temperature hysteresis effects and crack influences of an arch dam
and suffer from overly complex
redundant displacement factors and low prediction accuracy. To achieve accurate predictions of displacement in the arch dams with significant cracks
this paper develops a novel predictive method. First
we construct a displacement monitoring model for the dams
accounting for temperature hysteresis effect and crack influences. Then
a gradient boosting regression tree (GBRT) is used for feature selection among influencing factors
eliminating irrelevant variables; Kernel principal component analysis (KPCA) is applied to extract features from the retained temperature hysteresis and crack factors
so as to construct a displacement prediction dataset. Finally
we construct a displacement prediction model by integrating the salp swarm algorithm with the kernel extreme learning machine (SSA-KELM). Engineering case results demonstrate feature selection and feature extraction effectively mitigate the interference of irrelevant variables and reduce data dimensions
thereby improving prediction accuracy significantly. Compared with other benchmark models
SSA-KELM that presents the highest prediction accuracy and stability is a new viable approach for predicting displacement in arch dams with cracks.