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A missing data processing method for dam deformation monitoring data using spatiotemporal clustering and support vector machine model

Yantao Zhu, Chongshi Gu, Mihai Diaconeasa

2024Water Science and Engineering10 citationsDOIOpen Access PDF

Abstract

Deformation monitoring is a critical measure for intuitively reflecting the operational behavior of a dam. However, the deformation monitoring data are often incomplete due to environmental changes, monitoring instrument faults, and human operational errors, thereby often hindering the accurate assessment of actual deformation patterns. This study proposed a method for quantifying deformation similarity between measurement points by recognizing the spatiotemporal characteristics of concrete dam deformation monitoring data. It introduces a spatiotemporal clustering analysis of the concrete dam deformation behavior and employs the support vector machine model to address the missing data in concrete dam deformation monitoring. The proposed method was validated in a concrete dam project, with the model error maintaining within 5%, demonstrating its effectiveness in processing missing deformation data. This approach enhances the capability of early-warning systems and contributes to enhanced dam safety management.

Topics & Concepts

Cluster analysisData processingSupport vector machineDeformation monitoringComputer scienceData miningMissing dataDeformation (meteorology)Artificial intelligencePattern recognition (psychology)GeologyMachine learningDatabaseOceanographyDam Engineering and SafetyLandslides and related hazardsGeotechnical Engineering and Analysis