Modelling Anisotropic Phenomena of Friction of Deep-Drawing Quality Steel Sheets Using Artificial Neural Networks

IF 1 Q4 MATERIALS SCIENCE, MULTIDISCIPLINARY Advances in Materials Science Pub Date : 2021-09-01 DOI:10.2478/adms-2021-0016
T. Trzepieciński, H. Lemu, Łukasz Chodoła, Daniel Ficek, Ireneusz Szczęsny
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引用次数: 1

Abstract

Abstract This paper presents a method of determining the coefficient of friction in metal forming using multilayer perceptron based on experimental data obtained from the pin-on-disk tribometer. As test material, deep-drawing quality DC01, DC03 and DC05 steel sheets were used. The experimental results show that the coefficient of friction depends on the measured angle from the rolling direction and corresponds to the surface topography. The number of input variables of the artificial neural network was optimized using genetic algorithms. In this process, surface parameters of the sheet, sheet material parameters, friction conditions and pressure force were used as input parameters to train the artificial neural network. Some of the obtained results have pointed out that genetic algorithm can successfully be applied to optimize the training set. The trained multilayer perceptron predicted the value of the friction coefficient for the DC04 sheet. It was found that the tested steel sheet exhibits anisotropic tribological properties. The highest values of the coefficient of friction under dry friction conditions were registered for sheet DC05, which had the lowest value of the yield stress. Prediction results of coefficient of friction by multilayer perceptron were in qualitative and quantitative agreement with the experimental ones.
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用人工神经网络模拟深拉优质钢板摩擦各向异性现象
摘要本文提出了一种基于针盘式摩擦计实验数据,利用多层感知器确定金属成形摩擦系数的方法。试验材料选用深拉优质的DC01、DC03、DC05钢板。实验结果表明,摩擦系数取决于与滚动方向的测量角度,并与表面形貌相对应。采用遗传算法对人工神经网络的输入变量数量进行优化。在此过程中,以板材表面参数、板材材料参数、摩擦条件和压力作为输入参数,训练人工神经网络。已有的一些结果表明,遗传算法可以成功地应用于训练集的优化。训练后的多层感知器预测了DC04薄片的摩擦系数值。结果表明,试验钢板具有各向异性的摩擦学性能。干摩擦条件下,DC05板的摩擦系数最大,屈服应力最小。多层感知器对摩擦系数的预测结果在定性和定量上与实验结果基本一致。
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Advances in Materials Science
Advances in Materials Science MATERIALS SCIENCE, MULTIDISCIPLINARY-
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