实验与计算材料缺陷研究

M. Buonsanti, M. Cacciola, F. Cirianni, G. Leonardi, G. Megali
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引用次数: 0

摘要

铁路轴(即现代火车的基本材料之一)的生产是一个复杂的过程,没有故障和问题。事实上,制造过程中的错误或层的重叠可能会导致最终材料出现特殊缺陷,从而损害其相同的完整性。在此框架内,超声检测可用于表征缺陷的存在,这取决于其尺寸。相反,为了保证运输的可靠性和乘客的安全,对所用材料的完美状态的要求是不可避免的。因此,从有限元模拟超声回波出发,实时识别和分类缺陷的方法在工业应用中是非常有用的。这种定义过程的病态性引出了一种正则化方法。本文提出了一种有限元法和启发式方法。特别地,所提出的方法是基于使用神经网络方法,即所谓的“样本学习技术”,并使用支持向量机来对缺陷进行分类。结果保证了所实现方法的良好性能,具有非常有趣的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Experimental and Computational Materials Defects Investigation
Production of railway axles (i.e., one of the basic material of the modern train) is an elaborate process unfree from faults and problems. Errors during the manufacturing or the plies' overlapping, in fact, can cause particular flaws in the resulting material, so compromising its same integrity. Within this framework, ultrasonic tests could be useful to characterize the presence of defect, depending on its dimensions. On the contrary, the requirement of a perfect state for used materials is unavoidable in order to assure both transport reliability and passenger safety. Therefore, a real-time approach able to recognize and classify the defect starting from the finite element simulated ultrasonic echoes could be very useful in industrial applications. The ill-posedness of the so defined process induces a regularization method. In this paper, a finite element and a heuristic approach are proposed. Particularly, the proposed method is based on the use of a Neural Network approach, the so called "learning by sample techniques", and on the use of Support Vector Machines in order to classify the kind of defect. Results assure good performances of the implemented approach, with very interesting applications.
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