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Artificial neural networks to interpret acoustic emission signals to detect early delamination during carbonization of pre-fabricated components of carbon-carbon composite material

机译:人工神经网络解释声发射信号以检测碳-碳复合材料预制组件碳化期间的早期分层

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This study applies Artificial Neural Network Systems (ANN) to identify the features in the acoustic emission signals that may be used to predict delamination defects. Processing time and temperature are known to be strong influences in the pyrolysis process. Gas evolution and flow rates, and mass change data were available from testing providing additional process characterization. In this paper we propose the use of Acoustic Emission (AE) to detect early delamination, and Artificial Neural Network (ANN) techniques to interpret in-situ AE signals and to control fabrication parameters. Results of six carbonization runs are presented including those for components with and without delamination. The overall results of the preliminary research are very encouraging and demonstrate the benefit of combined Acoustic Emission and Artificial Neural Network techniques.
机译:这项研究应用了人工神经网络系统(ANN)来识别声发射信号中可能用于预测分层缺陷的特征。已知处理时间和温度对热解过程有很大的影响。可以从测试中获得气体逸出量和流速以及质量变化数据,从而提供了额外的过程特征。在本文中,我们建议使用声发射(AE)来检测早期分层,并使用人工神经网络(ANN)技术来解释原位AE信号并控制制造参数。列出了六次碳化运行的结果,包括带有和不带有分层的组件的碳化结果。初步研究的总体结果令人鼓舞,并证明了声发射与人工神经网络技术相结合的好处。

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