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首页> 外文期刊>Nondestructive Testing and Evaluation >Non-destructive determination of microstructural/mechanical properties and thickness variations in API X65 steel using magnetic hysteresis loop and artificial neural networks
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Non-destructive determination of microstructural/mechanical properties and thickness variations in API X65 steel using magnetic hysteresis loop and artificial neural networks

机译:使用磁滞回路和人工神经网络的非破坏性测定API X65钢的微观结构/机械性能和厚度变化

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摘要

In this paper, a combination of non-destructive magnetic technique and artificial neural networks is introduced, firstly, to ensure that the heat treatment process applied to a given API X65 steel sample results in desired microstructure and mechanical properties and secondly, to determine thickness variation which may occurs as a result of corrosion effect. To evaluate the effects of microstructure/mechanical properties and thickness variations on magnetic parameters, the magnetic hysteresis loop method has been applied on API X65 steel specimens with the thicknesses of 1-4 mm, each subjected to four different heat-treating cycles (austenitised samples were cooled in furnace, air, oil and water). It was found that the magnetic parameters extracted from hysteresis loop are strongly dependent on both the cooling rate of the applied heat treatment (which varies the morphology and grain size of ferrite phase), and thickness of the sample. In the proposed method, probabilistic and radial-basis function neural networks have been used to simultaneously determine the microstructure, mechanical properties and thickness with high reliability and accuracy. Experimental results show that using a simple probabilistic neural network, the type of heat-treatment process applied to the sample under test could be perfectly determined. Moreover, thickness estimation of the sample, with a radial basis neural network, has an error less than 0.05 mm, which is actually outstanding.
机译:本文介绍了非破坏性磁技术和人工神经网络的组合,以确保施加到给定API X65钢样的热处理过程导致所需的微观结构和机械性能,其次是确定厚度变化这可能发生由于腐蚀效应。为了评估微观结构/机械性能和厚度变化对磁性参数的影响,磁滞回路方法已施加在API X65钢样品上,厚度为1-4毫米,各自进行四个不同的热处理循环(奥氏体化样品在炉子,空气,油和水中冷却)。发现从滞后回路提取的磁性参数强烈取决于所施加的热处理的冷却速率(改变铁氧体相的形态和晶粒尺寸),以及样品的厚度。在所提出的方法中,概率和径向基函数神经网络已经用于同时确定具有高可靠性和精度的微结构,机械性能和厚度。实验结果表明,使用简单的概率神经网络,可以完全确定施加到检测样品的热处理过程的类型。此外,样品的厚度估计,具有径向基神经网络的误差小于0.05mm,其实际上是出色的。

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