基于人工神经网络的裂纹起裂热分析

M. Selek, O. Sahin, S. Kahramanli
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引用次数: 6

摘要

本研究采用热成像红外成像系统对AISI37钢试样在反向弯曲疲劳下的温升进行了检测。金属的疲劳行为表现出三个阶段的温度分布:试样的初始平均温升区,恒定(平衡)温升区,突然温升区,最终试样失效,温度瞬间下降。为了识别临界第三区,有必要观察被测试件的耐久状态。在本研究中,被测试样的温度分布由热像仪记录,并传输到图像处理程序。人工神经网络利用被测试样的温度曲线获得其点温度。通过分析获得的数据值,我们发现温度最高的点是暴露在最强烈变形中的点。这些区域被认为是可能的裂纹起始点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Thermographical Investigation of Crack Initiation Using Artificial Neural Networks
In this study, a thermographic infrared imaging system was used to detect the temperature rise of AISI37 steel specimen under reverse bending fatigue. Fatigue behavior of metals shows temperature profiles with three stages: an initial increase of the specimen mean temperature region, a constant (equilibrium) temperature region, an abrupt temperature increase region at end of which the specimen fails and its temperature falls instantly. In order to recognize critical third region, it is necessary to observe endurance state of the specimen being tested. In this study, the temperature profiles of the specimen under testing are recorded by thermal camera and transferred to the image processing program. The artificial neural networks obtain spot temperatures of the inspected specimen by using its temperature profiles. By analyzing the values of obtained data, we detect spots of highest temperatures as ones that are exposed to most intensive deformation. These regions considered to be probable crack initiation sites.
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