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Defects detection based on sparse regularization method for electromagnetic tomography (EMT)

机译:基于稀疏正则化方法的电磁层析成像(EMT)缺陷检测

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In this paper, we propose a new metal defect detection method using electromagnetic tomography (EMT) technique, which is used to measure the alternating magnetic signal modulated by defects in the metal, and then the distribution of defects is reconstructed. Due to the sparsity of the defect distribution, the l regularization method for EMT reconstruction is presented to solve the sparse problem. As a result, the l regularization can be over-smoothing effect of traditional avoided effectively. A simulation model is designed and the forward problem of the model is calculated using electromagnetic finite-element method. Furthermore, the laboratory experiment and simulation results indicate that the sizes and positions of defects can be effectively distinguished by the new method.
机译:在本文中,我们提出了一种新的利用电磁层析成像技术检测金属缺陷的方法,该方法用于测量由金属中的缺陷调制的交变磁信号,然后重建缺陷的分布。由于缺陷分布的稀疏性,提出了一种用于EMT重构的正则化方法来解决稀疏问题。结果,l正则化可以有效避免传统的过度平滑效果。设计了一个仿真模型,并使用电磁有限元方法计算了模型的正向问题。此外,实验室实验和仿真结果表明,该新方法可以有效地区分缺陷的大小和位置。

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