Reduced Training Data for Laser Ultrasound Signal Interpretation by Neural Networks

IF 2.6 3区 材料科学 Q2 MATERIALS SCIENCE, CHARACTERIZATION & TESTING
Janez Rus, Romain Fleury
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引用次数: 0

Abstract

The performance of machine learning algorithms is conditioned by the availability of training datasets, which is especially true for the field of nondestructive evaluation. Here we propose one reconfigurable specimen instead of numerous reference specimens with known, unchangeable defect properties, which are usually complicated to fabricate. It consist of a shape memory polymer foil with temperature-dependent Young’s modulus and ultrasound attenuation. This open a possibility to generate a reconfigurable defect by projecting a heating laser in the form of a short line on the specimen surface. Ultrasound is generated by a laser pulse at one fixed position and detected by a laser vibrometer at another fixed position for 64 different defect positions and 3 different configurations of the specimen. The obtained diversified datasets are used to optimize the neural network architecture for the interpretation of ultrasound signals. We study the performance of the model in cases of reduced and dissimilar training datasets. In our first study, we classify the specimen configurations with the defect position being the disturbing parameter. The model shows high performance on a dataset of signals obtained at all the defect positions, even if trained on a completely different dataset containing signals obtained at only few defect positions. In our second study, we perform precise defect localization. The model becomes robust to the changes in the specimen configuration when a reduced dataset, containing signals obtained at two different specimen configurations, is used for the training process. This work highlights the potential of the demonstrated machine learning algorithm for industrial quality control. High-volume products (simulated by a reconfigurable specimen in our work) can be rapidly tested on the production line using this single-point and contact-free laser ultrasonic method.

Abstract Image

减少神经网络解读激光超声信号的训练数据
机器学习算法的性能取决于训练数据集的可用性,这在无损评估领域尤其如此。在这里,我们提出了一种可重新配置的试样,而不是众多具有已知的、不可改变的缺陷特性的参考试样,后者通常制作复杂。它由具有随温度变化的杨氏模量和超声衰减的形状记忆聚合物箔组成。这为通过在试样表面投射短线形式的加热激光来生成可重新配置的缺陷提供了可能性。激光脉冲在一个固定位置产生超声波,激光测振仪在另一个固定位置检测 64 个不同缺陷位置和 3 种不同结构的试样。获得的多样化数据集用于优化解读超声波信号的神经网络架构。我们研究了模型在训练数据集减少和不同的情况下的性能。在第一项研究中,我们对以缺陷位置为干扰参数的试样配置进行了分类。该模型在包含所有缺陷位置信号的数据集上表现出很高的性能,即使在包含仅在少数缺陷位置获得的信号的完全不同的数据集上进行训练也是如此。在第二项研究中,我们进行了精确的缺陷定位。在训练过程中使用了一个包含在两种不同试样配置下获得的信号的缩减数据集,该模型对试样配置的变化具有鲁棒性。这项工作凸显了所展示的机器学习算法在工业质量控制方面的潜力。使用这种单点、非接触式激光超声波方法,可以在生产线上快速测试大批量产品(在我们的工作中使用可重新配置的试样进行模拟)。
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来源期刊
Journal of Nondestructive Evaluation
Journal of Nondestructive Evaluation 工程技术-材料科学:表征与测试
CiteScore
4.90
自引率
7.10%
发文量
67
审稿时长
9 months
期刊介绍: Journal of Nondestructive Evaluation provides a forum for the broad range of scientific and engineering activities involved in developing a quantitative nondestructive evaluation (NDE) capability. This interdisciplinary journal publishes papers on the development of new equipment, analyses, and approaches to nondestructive measurements.
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