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云南省教育厅基础设施智能运维科技创新团队

Automated seismic event detection considering faulty data interference using deep learning and Bayesian fusion

发表于 2024-10-01
Anomaly DetectionStructural Health MonitoringExtreme EventsBayesian FusionSeismic Event DetectionData AnomaliesFaulty Data InterferenceSHMDeep LearningDLBF

Abstract: Structural health monitoring (SHM) aims to assess civil infrastructures’ performance and ensure safety. Automated detection of in situ events of interest, such as earthquakes, from extensive continuous monitoring data, is important to ensure the timeliness of subsequent data analysis. To overcome the poor timeliness of manual identification and the inconsistency of sensors, this paper proposes an automated seismic event detection procedure with interpretability and robustness. The sens

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期刊Computer-Aided Civil and Infrastructure Engineering

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云南省教育厅基础设施智能运维科技创新团队

Intelligent Infrastructure Operation and Maintenance Technology Innovation Team of the Yunnan Provincial Department of Education

滇ICP备2023005791

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昆明理工大学 昆明理工大学建筑工程学院