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Outlier Detection Based on Multivariable Panel Data and K‐Means Clustering for Dam Deformation Monitoring Data

Jintao Song, Shengfei Zhang, Fei Tong, Jie Yang, Zhiquan Zeng, Shuai Yuan

2021Advances in Civil Engineering16 citationsDOIOpen Access PDF

Abstract

A dam is a super‐structure widely used in water conservancy engineering fields, and its long‐term safety is a focus of social concern. Deformation is a crucial evaluation index and comprehensive reflection of the structural state of dams, and thus there are many research papers on dam deformation data analysis. However, the accuracy of deformation data is the premise of dam safety monitoring analysis, and original deformation data may have some outliers caused by manual errors or instruments aging after long‐time running. These abnormal data have a negative impact on the evaluation of dam structural safety. In this study, an analytical method for detecting outliers of dam deformation data was established based on multivariable panel data and K‐means clustering theory. First, we arranged the original spatiotemporal monitoring data into the multivariable panel data format. Second, the correlation coefficients between the deformation signals of different measuring points were studied based on K‐means clustering theory. Third, the outlier detection rules were established through the changes of the correlation coefficients. Finally, the proposed model was applied to the Jinping‐I Arch Dam in China which is the highest dam in the world, and results indicate that the detection method has high accuracy detection ability, which is valuable in dam safety monitoring applications.

Topics & Concepts

Anomaly detectionDeformation monitoringCluster analysisOutlierMultivariable calculusData miningDeformation (meteorology)Structural health monitoringk-means clusteringComputer scienceArtificial intelligenceEngineeringStructural engineeringMaterials scienceComposite materialControl engineeringDam Engineering and SafetyLandslides and related hazardsFlood Risk Assessment and Management