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Sensitivity and Calibration of Non-Destructive Evaluation Method That Uses Neural-Net Processing of Characteristic Fringe Patterns

机译:使用特征条纹图案的神经网络处理的非破坏性评估方法的灵敏度和校准

摘要

This paper answers some performance and calibration questions about a non-destructive-evaluation (NDE) procedure that uses artificial neural networks to detect structural damage or other changes from sub-sampled characteristic patterns. The method shows increasing sensitivity as the number of sub-samples increases from 108 to 6912. The sensitivity of this robust NDE method is not affected by noisy excitations of the first vibration mode. A calibration procedure is proposed and demonstrated where the output of a trained net can be correlated with the outputs of the point sensors used for vibration testing. The calibration procedure is based on controlled changes of fastener torques. A heterodyne interferometer is used as a displacement sensor for a demonstration of the challenges to be handled in using standard point sensors for calibration.
机译:本文回答了有关无损评估(NDE)程序的一些性能和校准问题,该程序使用人工神经网络从子采样特征模式中检测结构损伤或其他变化。随着子样本数量从108增加到6912,该方法显示出越来越高的灵敏度。这种强大的NDE方法的灵敏度不受第一振动模式的噪声激发的影响。提出并演示了校准程序,其中可将经过训练的网络的输出与用于振动测试的点传感器的输出关联起来。校准过程基于紧固件扭矩的受控变化。外差式干涉仪用作位移传感器,以演示使用标准点传感器进行校准时要应对的挑战。

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