4.7 Article

Dynamic early-warning model of dam deformation based on deep learning and fusion of spatiotemporal features

Journal

KNOWLEDGE-BASED SYSTEMS
Volume 233, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.knosys.2021.107537

Keywords

Deformation dynamic early warning; Spatiotemporal features; Dynamic updating of early-warning indicator; Robust deep learning; Time-domain feature fusion; Randomness and fuzziness

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The study proposes a novel dynamic early-warning model for dam deformation, utilizing deep learning and spatiotemporal features fusion. The model integrates POD and improved DKELM to extract spatial principal components and enhance dynamic updating ability through robust deep nonlinear mapping, while also formulating and updating deformation early-warning indicators considering randomness and fuzziness with the help of the cloud model's concept transformation and fusion rule.
The reasonable formulation of early warning indicators is essential for dam deformation safety assessment. Previous studies on dam deformation early warning, however, failed to consider the spatiotemporal features, especially the spatial deep nonlinearity between the multiple environmental factors and multipoint displacements, and the randomness and fuzziness in the description of deformation time-domain distribution, limiting the updating ability of models and the reliability of early-warning indicators. To solve these issues, based on proper orthogonal decomposition (POD), the deep kernel extreme learning machine (DKELM) and a cloud model, a novel dynamic early-warning model using deep learning and spatiotemporal features fusion is proposed for dam deformation. In which, the POD and the correntropy-improved DKELM are coupled to extract the spatial principal component (SPC) of the deformation and to restrain the interference of outliers, and robust deep nonlinear mapping is established to enhance the dynamic updating ability. Moreover, embedding the concept transformation and fusion rule of the cloud model, the deformation early-warning indicator considering the randomness and fuzziness can be formulated and updated, and its reliability can be improved by the time-domain feature fusion of the SPC distribution. Hence, the dynamic warning of dam deformation is achieved by comparing the forecasted SPC and the early-warning indicators. A real dam application and model comparison demonstrate that the proposed model performs well in deformation SPC prediction and gives global and local early-warning indicators with the advantage of dynamic updating, which provides a more abundant and reliable basis for the dynamic safety warning of dam deformation. (c) 2021 Elsevier B.V. All rights reserved.

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