Intelligent detection of dynamic cracking along an interface of brittle material using high-speed photography assisted by data augmentation and machine learning

Dynamic cracking along an interface of brittle material is a fundamental knowledge of rock faulting but remain largely enigmatic. Laboratory investigation of the extremely fast process requires the use of advanced high-speed photography, which limits wide participation in this research. This study a...

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Bibliographic Details
Main Authors: Tie, Jiahao, Wu, Wei
Other Authors: School of Civil and Environmental Engineering
Format: Article
Language:English
Published: 2024
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Online Access:https://hdl.handle.net/10356/179148
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Institution: Nanyang Technological University
Language: English
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Summary:Dynamic cracking along an interface of brittle material is a fundamental knowledge of rock faulting but remain largely enigmatic. Laboratory investigation of the extremely fast process requires the use of advanced high-speed photography, which limits wide participation in this research. This study applies image data augmentation and Convolutional Neural Network (CNN) to assist high-speed photography for detection of crack tip location, extending the capability of high-speed photography with a low frame rate to achieve a high prediction accuracy. The prediction accuracy generally increases with a smaller kernel size to produce more image slices for model training, but the kernel size exists a lower limit for reasonable prediction, which is 0.8 × 30 mm in our study. The selection of kernel size is particularly important for a less advanced camera with a frame rate lower than 70,000 frame-per-second. Additionally, the digital image correlation technique can assist the identification of crack tip location on low-resolution images to provide image slices with precise information of crack tip for model training. Robust CNN models can be built with multiple static and dynamic loadings, different image resolutions, and various heterogeneous rock materials and used to construct a graphic reference for researchers to evaluate the best performance of high-speed photography and machine learning-assisted performance improvement.