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云南省教育厅基础设施智能运维科技创新团队

Data anomaly detection for structural health monitoring by multi-view representation based on local binary patterns

发表于 2023-12-01
SHMData AnomaliesLBPAnomaly DetectionMulti-View RepresentationRandom ForestsRFLocal Binary PatternsStructural Health Monitoring

Abstract: Structural health monitoring (SHM) systems provide opportunities to understand the structural behaviors remotely in real-time. However, anomalous measurement data are frequently collected from structures, which greatly affect the results of further analyses. Hence, detecting anomalous data is crucial for SHM systems. In this article, we present a simple yet efficient approach that incorporates complementary information obtained from multi-view local binary patterns (LBP) and random for

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期刊Measurement

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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

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昆明理工大学 昆明理工大学建筑工程学院