Publication | Closed Access
Deep-learning-based crack detection with applications for the structural health monitoring of gas turbines
83
Citations
11
References
2019
Year
Fault DiagnosisConvolutional Neural NetworkEngineeringMachine LearningMechanical EngineeringFault ForecastingImage Recognition (Computer Vision)Fracture MechanicsStructural IdentificationCondition MonitoringImage ClassificationImage AnalysisPattern RecognitionImage-based ModelingGas TurbinesMachine VisionImage Classification (Visual Culture Studies)Image Recognition (Visual Culture Studies)Deep Learning MethodologiesStructural Health MonitoringCracked Surface ImagesGas Turbine MaintenanceDeep LearningAutomatic Fault DetectionAutomated InspectionComputer VisionDeep Neural NetworksCategorizationDeep-learning-based Crack DetectionImage Classification (Electrical Engineering)
Gas turbine maintenance requires consistent inspections of cracks and other structural anomalies. The inspections provide information regarding the overall condition of the structures and yield information for estimating structural health and repair costs. Various image processing techniques have been used in the past to address the problem of automated visual crack detection with varying degrees of success. In this work, we propose a novel crack detection framework that utilizes techniques from both classical image processing and deep learning methodologies. The main contribution of this work is demonstrating that applying filters to image data in the pre-processing phase can significantly boost the classification performance of a convolutional neural network–based model. The developed architecture outperforms compared works by yielding a 96.26% classification accuracy on a data set of cracked surface images collected from gas turbines.
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