Quasi-Non-Destructive Evaluation of Yield Strength Using Neural Networks

G. Partheepan, D. K. Sehgal, R. Pandey
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引用次数: 4

Abstract

The objective of this paper is to delineate a method for determining the yield strength of a material in a virtually nondestructive manner. Conventional test methods for predicting the yield strength require the removal of large material samples from the inservice component, which is impractical. In this paper, the power of neural networks in predicting the yield strength from the data obtained by conducting tension test on newly developed dumb-bell-shaped miniature specimen is demonstrated using the self-organizing capabilities of the ANN. The input to the neural network is the breakaway load obtained from the miniature test, and the output obtained from the model is yield strength value. The value of the yield strength estimated by neural network is found to be in good agreement (<5% error) with that of the actual value from the standard test. The neural network models are convenient and powerful tools for practical applications in solving various problems in engineering.
基于神经网络的屈服强度准无损评价
本文的目的是描述一种以几乎无损的方式确定材料屈服强度的方法。预测屈服强度的传统测试方法需要从使用部件中去除大量材料样品,这是不切实际的。本文利用神经网络的自组织能力,对新研制的哑铃形微型试样进行拉伸试验,验证了神经网络预测屈服强度的能力。神经网络的输入是微型试验得到的分离载荷,模型的输出是屈服强度值。神经网络估算的屈服强度值与标准试验的实际值吻合较好(误差<5%)。神经网络模型是实际应用中解决各种工程问题的方便而有力的工具。
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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