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Advanced Integration of Neural Networks for Characterizing Voids in Welded Strips

机译:神经网络的高级集成,用于表征带钢中的空隙

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Within the framework of aging materials inspection, one of the most important aspects regards defects detection in metal welded strips. In this context, it is important to plan a method able to distinguish the presence or absence of defects within welds as well as a robust procedure able to characterize the defect itself. In this paper an innovative solution that exploits a rotating magnetic field is presented. This approach has been carried out by a Finite Element Model. Within this framework, it is necessary to consider techniques able to offer advantages in terms of sensibility of analysis, strong reliability, speed of carrying out, low costs: its implementation can be a useful support for inspectors. To this aim, it is necessary to solve inverse problems which are mostly ill-posed: in this case, the main problems consist on both the accurate formulation of the direct problem and the correct regulariza-tion of the inverse electromagnetic problem. In the last decades, a useful and very performing way to regularize ill-posed inverse electromagnetic problems is based on the use of a Neural Network approach, the so called "learning by sample techniques".
机译:在时效材料检查的框架内,最重要的方面之一是金属焊接带材中的缺陷检测。在这种情况下,重要的是规划一种能够区分焊缝中缺陷存在与否的方法,以及能够表征缺陷本身的可靠过程。在本文中,提出了一种利用旋转磁场的创新解决方案。此方法已通过有限元模型执行。在此框架内,有必要考虑能够在分析的敏感性,强大的可靠性,执行速度,低成本方面提供优势的技术:其实施可以为检查员提供有用的支持。为了这个目的,有必要解决大多是不适的逆问题:在这种情况下,主要问题包括直接问题的准确表述和逆电磁问题的正确正则化。在最近的几十年中,一种有用的且非常有效的方式来规整不适定的逆电磁问题是基于神经网络方法的使用,即所谓的“通过样本技术学习”。

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