Detecting Multiple Change Points in Distributional Sequences Derived from Structural Health Monitoring Data: An Application to Bridge Damage Detection
Xinyi Lei, Zhicheng Chen

TL;DR
This paper introduces a scalable, distributional change-point detection method using Wasserstein space embedding for structural health monitoring, effectively identifying damage in bridge systems through statistical analysis of damage-sensitive features.
Contribution
It proposes a novel Wasserstein space-based MOSUM change-point detection method with theoretical guarantees, tailored for damage detection in large DSF datasets.
Findings
Outperforms existing methods in simulation studies
Successfully detects damage in bridge cable tension data
Provides insights into cable system damage patterns
Abstract
Detecting damage in critical structures using monitored data is a fundamental task of structural health monitoring, which is extremely important for maintaining structures' safety and life-cycle management. Based on statistical pattern recognition paradigm, damage detection can be conducted by assessing changes in the distribution of properly extracted damage-sensitive features (DSFs). This can be naturally formulated as a distributional change-point detection problem. A good change-point detector for damage detection should be scalable to large DSF datasets, applicable to different types of changes, and capable of controlling for false-positive indications. This study proposes a new distributional change-point detection method for damage detection to address these challenges. We embed the elements of a DSF distributional sequence into the Wasserstein space and construct a moving sum…
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Taxonomy
TopicsStructural Health Monitoring Techniques · Anomaly Detection Techniques and Applications
