基于脉冲热成像的缺陷检测的物理信息神经网络

tung-Yu Hsiao, Y. Yao
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引用次数: 0

摘要

脉冲热成像无损检测技术以其成本低、检测面积大、实现速度快等优点在材料缺陷检测中得到了广泛的应用。实验完成后,往往需要对数据进行处理,以减少噪声和不均匀背景的影响,突出缺陷信息。然而,在分析过程中,物理信息通常被忽略。除了热成像数据分析外,数值模拟在基于物理信息的分析研究中也很流行,但它们并没有充分利用实验数据。为了解决这个问题,提出了一种使用物理信息神经网络(PINN)进行热成像数据处理的新方法。PINN将深度神经网络的预测能力与以偏微分方程和边界条件表示的物理定律相结合,允许在建模中使用实验数据和物理信息。在脉冲热成像中,三维系统的传热受傅里叶热传导定律的支配。然而,缺乏深度方向的温度测量。该方法利用拉丁超立方体采样产生的配点来解决这一问题。PINN模型可以很好地估计热图中的背景,并且通过从原始热图中减去估计的背景来突出表面/亚表面缺陷的特征。实例分析表明,该方法是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Physics-informed Neural Network for Pulsed Thermography- Based Defect Detection
The non-destructive testing technique of pulsed thermography has been widely used in materials to detect defects due to its low cost, large detection area, and rapid implementation. After conducting experiments, data processing is often necessary to reduce the influences of noise and non-uniform backgrounds and highlight defect information. However, during the analysis, physical information is usually ignored. In addition to thermographic data analysis, numerical simulations are also popular for analytical studies based on physical information, but they don’t fully utilize the experimental data. To address this, a new method was proposed using a physics-informed neural network (PINN) for thermographic data processing. PINN combines the prediction capabilities of deep neural networks with physical laws presented as partial differential equations and boundary conditions, allowing for both experimental data and physics information to be utilized in modelling. In pulsed thermography, the heat transfer is governed by Fourier's law of heat conduction in a three-dimensional system. However, there is a lack of temperature measurements in the depth direction. The proposed method solves this problem by using collocation points generated from Latin hypercube sampling. The PINN model provides a good estimation of the backgrounds in the thermograms, and the features of surface/subsurface defects are highlighted by subtracting the estimated backgrounds from the original thermograms. In the case study, the performance of the proposed method was found to be effective.
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