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Optimized database for training neural networks used in non-destructive testing

机译:优化的数据库,用于训练无损检测中使用的神经网络

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摘要

Neural network is applied for the non-destructive evaluation of in-material defects based on the measured or simulated data of an eddy-current testing experiment. The network is trained with the data measured for suitably selected defect prototypes, so that this selection constitute a consistent representation of the forward problem. This network performs in defect reconstruction better, than those networks trained with randomly or regularly selected defect prototypes of about the same number.
机译:基于涡流测试实验的测量或模拟数据,将神经网络应用于材料内缺陷的无损评估。用为适当选择的缺陷原型测量的数据来训练网络,以便这种选择构成正向问题的一致表示。与那些使用随机或定期选择的大约相同数量的缺陷原型训练的网络相比,该网络在缺陷重建中的性能更好。

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