Pyle Richard J, Bevan Rhodri L T, Hughes Robert R, Rachev Rosen K, Ali Amine Ait Si, Wilcox Paul D
IEEE Trans Ultrason Ferroelectr Freq Control. 2021 May;68(5):1854-1865. doi: 10.1109/TUFFC.2020.3045847. Epub 2021 Apr 26.
Machine learning for nondestructive evaluation (NDE) has the potential to bring significant improvements in defect characterization accuracy due to its effectiveness in pattern recognition problems. However, the application of modern machine learning methods to NDE has been obstructed by the scarcity of real defect data to train on. This article demonstrates how an efficient, hybrid finite element (FE) and ray-based simulation can be used to train a convolutional neural network (CNN) to characterize real defects. To demonstrate this methodology, an inline pipe inspection application is considered. This uses four plane wave images from two arrays and is applied to the characterization of cracks of length 1-5 mm and inclined at angles of up to 20° from the vertical. A standard image-based sizing technique, the 6-dB drop method, is used as a comparison point. For the 6-dB drop method, the average absolute error in length and angle prediction is ±1.1 mm and ±8.6°, respectively, while the CNN is almost four times more accurate at ±0.29 mm and ±2.9°. To demonstrate the adaptability of the deep learning approach, an error in sound speed estimation is included in the training and test set. With a maximum error of 10% in shear and longitudinal sound speed, the 6-dB drop method has an average error of ±1.5 mmm and ±12°, while the CNN has ±0.45 mm and ±3.0°. This demonstrates far superior crack characterization accuracy by using deep learning rather than traditional image-based sizing.
用于无损检测(NDE)的机器学习由于其在模式识别问题上的有效性,有潜力在缺陷特征描述准确性方面带来显著提升。然而,现代机器学习方法在无损检测中的应用受到用于训练的真实缺陷数据稀缺的阻碍。本文展示了如何使用高效的、混合的有限元(FE)和基于射线的模拟来训练卷积神经网络(CNN)以表征真实缺陷。为了演示这种方法,考虑了一种在线管道检测应用。该应用使用来自两个阵列的四张平面波图像,并应用于表征长度为1 - 5毫米、与垂直线倾斜角度高达20°的裂纹。一种基于图像的标准尺寸测量技术,即6分贝下降法,用作比较点。对于6分贝下降法,长度和角度预测的平均绝对误差分别为±1.1毫米和±8.6°,而CNN的精度几乎高四倍,分别为±0.29毫米和±2.9°。为了演示深度学习方法的适应性,在训练和测试集中包含了声速估计误差。在剪切波和纵波声速的最大误差为10%的情况下,6分贝下降法的平均误差为±1.5毫米和±12°,而CNN为±0.45毫米和±3.0°。这表明通过使用深度学习而非传统的基于图像的尺寸测量方法,裂纹特征描述的准确性有了极大提高。