Environmental variation compensated damage classification and localization in ultrasonic guided wave SHM using self-learnt features and Gaussian mixture models
Shruti Sawant, Sheetal Patil, Jeslin Thalapil, Sauvik Banerjee,, Siddharth Tallur

TL;DR
This paper introduces a CNN and GMM-based method for damage detection in ultrasonic guided wave SHM that effectively compensates for environmental variations without relying on physics-defined features.
Contribution
It presents a novel automated feature extraction framework combined with GMM-based environmental compensation for damage classification and localization.
Findings
Effective damage localization under varying environmental conditions
Robust performance with noisy data and different damage types
Validated through FE simulations and experimental tests
Abstract
Conventional damage localization algorithms used in ultrasonic guided wave-based structural health monitoring (GW-SHM) rely on physics-defined features of GW signals. In addition to requiring domain knowledge of the interaction of various GW modes with various types of damages, they also suffer from errors due to variations in environmental and operating conditions (EOCs) in practical use cases. While several machine learning tools have been reported for EOC compensation, they need to be custom-designed for each combination of damage and structure due to their dependence on physics-defined feature extraction. In this work, we propose a CNN-based automated feature extraction framework coupled with Gaussian mixture model (GMM) based EOC compensation and damage classification and localization method. Features learnt by the CNNs are used for damage classification and localization of damage…
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Taxonomy
TopicsUltrasonics and Acoustic Wave Propagation · Non-Destructive Testing Techniques · Structural Health Monitoring Techniques
