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Towards Interpretable Machine Learning for Automated Damage Detection Based on Ultrasonic Guided Waves

Christopher Schnur, Payman Goodarzi, Yevgeniya Lugovtsova, Jannis Bulling, Jens Prager, Kilian Tschöke, Jochen Moll, Andreas Schütze, Tizian Schneider

2022Sensors24 citationsDOIOpen Access PDF

Abstract

Data-driven analysis for damage assessment has a large potential in structural health monitoring (SHM) systems, where sensors are permanently attached to the structure, enabling continuous and frequent measurements. In this contribution, we propose a machine learning (ML) approach for automated damage detection, based on an ML toolbox for industrial condition monitoring. The toolbox combines multiple complementary algorithms for feature extraction and selection and automatically chooses the best combination of methods for the dataset at hand. Here, this toolbox is applied to a guided wave-based SHM dataset for varying temperatures and damage locations, which is freely available on the Open Guided Waves platform. A classification rate of 96.2% is achieved, demonstrating reliable and automated damage detection. Moreover, the ability of the ML model to identify a damaged structure at untrained damage locations and temperatures is demonstrated.

Topics & Concepts

ToolboxStructural health monitoringComputer scienceFeature extractionArtificial intelligenceUltrasonic sensorGuided wave testingMachine learningFeature selectionFeature (linguistics)Pattern recognition (psychology)Data miningEngineeringAcousticsStructural engineeringPhilosophyPhysicsProgramming languageLinguisticsUltrasonics and Acoustic Wave PropagationStructural Health Monitoring TechniquesAdvanced Fiber Optic Sensors
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