Automated crack identification in structures using acoustic waveforms and deep learning
Mohamed Barbosh,
Liangfu Ge,
Ayan Sadhu
Abstract:Structural elements undergo multiple levels of damage at various locations due to environments and critical loading conditions. The level of damage and its location can be predicted using acoustic emission (AE) waveforms that are captured from the generation of inherent microcracks. Existing AE methods are reliant on the feature selection of the captured waveforms and may be subjective in nature. To automate this process, this paper proposes a deep-learning model to predict the damage severity and its expected… Show more
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