The Proceedings of Mechanical Engineering Congress, Japan
Online ISSN : 2424-2667
ISSN-L : 2424-2667
2022
Session ID : J041p-07
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Estimation of fracture mode of CFRP by machine learning of AE features in frequency domain
*Hiroya MISAWAHideo CHOKojro NISIMIYA
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Abstract

The aim of this study is to classify the damages in a Carbon Fiber Reinforced Plastics (CFRP) plate under tensile loading with a machine learning technique for acoustic emission (AE) waveforms. AE waveforms originate from micro cracks inside a material and their features are characterized by fracture mode. In this study, waveform energy in each frequency band obtained with the wavelet transform were used as features for classifying AE waveform using self-organization map(SOM) and k-means. Furthermore, the validity of the classification was evaluated by cross-sectional observation and by AE in unidirectional CFRP samples.

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© 2022 The Japan Society of Mechanical Engineers
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