Online defect detection on metallic plates using electromagnetic tomography

Pu Huang, Xiaofei Huang, Gao Peng, Shuliang Wang, Yuedong Xie
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Abstract

Metallic samples are widely applied in modern industrial production. Due to non-uniformities in the stress load, such samples may become damaged and produce defects, which can cause unnecessary economic losses. In this paper, an online defect detection method is proposed for the quality monitoring of metallic plates. The research involves the design and optimisation of an electromagnetic tomography (EMT) sensor and the development of a fast tomography algorithm. Specifically, a planar array eddy current sensor is designed for in-situ structural health monitoring of metallic specimens. The parameters of the sensor are optimised using an orthogonal methodology and a response surface methodology to improve the uniformity of the sensitivity field. In addition, a second-order iterative Bregman reconstruction algorithm is investigated to reconstruct the defect image, which can improve the reconstruction speed for this ill-posed problem. Simulation and experimental results indicate that the proposed method can be applied to effectively evaluate the locations and sizes of defects in metallic specimens. The correlation coefficients of the reconstructed images using the proposed method are larger than 0.8. Compared with traditional reconstruction algorithms, the method proposed in this paper shows fast convergence speed and smaller estimation errors.
利用电磁断层扫描技术在线检测金属板上的缺陷
金属样品广泛应用于现代工业生产中。由于应力载荷的不均匀性,这类样品可能会损坏并产生缺陷,从而造成不必要的经济损失。本文提出了一种在线缺陷检测方法,用于金属板的质量监测。研究涉及电磁层析成像 (EMT) 传感器的设计和优化,以及快速层析成像算法的开发。具体而言,设计了一种平面阵列涡流传感器,用于金属试样的原位结构健康监测。使用正交方法和响应面方法对传感器的参数进行了优化,以提高灵敏度场的均匀性。此外,还研究了一种用于重建缺陷图像的二阶迭代 Bregman 重建算法,该算法可提高这一问题的重建速度。仿真和实验结果表明,所提出的方法可用于有效评估金属试样中缺陷的位置和大小。使用所提方法重建的图像的相关系数大于 0.8。与传统重建算法相比,本文提出的方法收敛速度快,估计误差小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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