An LSTM-based anomaly detection model for the deformation of concrete dams
Changwei Liu,
Jianwen Pan,
Jinting Wang
Abstract:Anomaly detection in deformation is important for structural health monitoring and safety evaluation of dams. In this paper, an anomaly detection model for the deformation of arch dams is presented. It combines the long short-term memory network (LSTM)-based behavior model for dam deformation prediction and the small probability method for control limits determination, and thus is called an LSTM-based anomaly detection model. To demonstrate the advantages of the LSTM-based anomaly detection model, the traditio… Show more
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