Explainable boosted combining global and local feature multivariate regression model for deformation prediction during braced deep excavations
Wenchao Zhang,
Peixin Shi,
Zhansheng Wang
et al.
Abstract:PurposeAn accurate prediction of the deformation of retaining structures is critical for ensuring the stability and safety of braced deep excavations, while the high nonlinear and complex nature of the deformation makes the prediction challenging. This paper proposes an explainable boosted combining global and local feature multivariate regression (EB-GLFMR) model with high accuracy, robustness and interpretability to predict the deformation of retaining structures during braced deep excavations.Design/methodo… Show more
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