Gaussian Process Regression for Active Sensing Probabilistic Structural Health Monitoring: Experimental Assessment Across Multiple Damage and Loading Scenarios
Ahmad Amer, Fotis Kopsaftopoulos

TL;DR
This paper introduces a probabilistic damage quantification framework using Gaussian Process Regression Models for structural health monitoring, capable of assessing damage under varying conditions and providing probabilistic decision support.
Contribution
It presents a novel damage quantification method based on GPRMs that estimates damage probability and handles unknown damage size and loading conditions.
Findings
GPRMs effectively predict damage states across different scenarios.
The probabilistic approach improves damage assessment robustness.
Variational heteroscedastic GPRMs show promising performance.
Abstract
In the near future, Structural Health Monitoring (SHM) technologies will be capable of overcoming the drawbacks in the current maintenance and life-cycle management paradigms, namely: cost, increased downtime, less-than-optimal safety management paradigm and the limited applicability of fully-autonomous operations. In the context of SHM, one of the most challenging tasks is damage quantification. Current methods face accuracy and/or robustness issues when it comes to varying operating and environmental conditions. In addition, the damage/no-damage paradigm of current frameworks does not offer much information to maintainers on the ground for proper decision-making. In this study, a novel structural damage quantification framework is proposed based on widely-used Damage Indices (DIs) and Gaussian Process Regression Models (GPRMs). The novelty lies in calculating the probability of an…
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Taxonomy
TopicsStructural Health Monitoring Techniques · Fault Detection and Control Systems · Non-Destructive Testing Techniques
MethodsGaussian Process
