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Structural performance assessment considering both observed and latent environmental and operational conditions: A Gaussian process and probability principal component analysis method

Yichen Zhu, Wen Xiong, Xiaodong Song

2022Structural Health Monitoring12 citationsDOI

Abstract

Structural faults like damage and degradations will cause changes in structure response data. Performance assessment can be conducted by investigating such changes. In real implementations however, structural responses are affected by environmental and operational variations (EOVs) as well. Such variation should be well captured by the assessment model when detecting structural changes. It should be noted that not all EOVs can be measured by the monitoring system. When both observed and latent EOVs have significant effects on the monitored structural responses, these two effects should be considered properly. Furthermore, uncertainties can be significant for the monitoring data since loads and EOVs cannot be directly controlled under working conditions. To address these problems, this work proposes a performance assessment method considering both observed and latent EOVs. A Gaussian process is used to model the functional behaviour between structural response and observed EOVs whilst principal component analysis is used to eliminate the effect of latent EOVs. These two methods are combined using a Bayesian formulation and the effect of both observed and latent EOVs are modelled. The associated model parameters are inferred through probability density functions to account for the uncertainties. A synthetic data example is presented to validate the proposed method. It is also applied to the monitoring data of a long-span cable-stayed bridge with different damage scenarios considered, illustrating its capability of real implementations in structural health monitoring.

Topics & Concepts

Principal component analysisStructural health monitoringComputer scienceBayesian probabilityGaussian processProcess (computing)Reliability engineeringStructural equation modelingGaussianBridge (graph theory)Latent variableData miningComponent (thermodynamics)EngineeringMachine learningArtificial intelligenceStructural engineeringInternal medicinePhysicsThermodynamicsMedicineOperating systemQuantum mechanicsStructural Health Monitoring TechniquesInfrastructure Maintenance and MonitoringProbabilistic and Robust Engineering Design
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