利用多层神经网络分析深冲优质钢板的摩擦系数

Tomasz Trzepieciński, K. Szwajka, Marek Szewczyk
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摘要

本文介绍了摩擦工艺参数对 1.0347 (DC03)、1.0338 (DC04) 和 1.0312 (DC05) 钢板摩擦系数影响的分析结果。设计并制造了一个特殊的摩擦仪,以模拟深拉操作中坯座区域发生的摩擦现象。润滑剂在压力作用下注入接触区。在不同的接触压力和润滑条件下测定了摩擦系数值。多层人工神经网络(ANN)用于预测摩擦系数值。考虑的输入参数包括润滑剂的运动粘度、接触压力、润滑剂压力、选定的机械性能和金属板的基本表面粗糙度参数。根据 1.0347 和 1.0338 钢板的摩擦试验结果,预测了 1.0312 钢板的摩擦系数值。为了找到一个能提供最佳预测性能的神经网络,建立了许多 ANN 模型。结果发现,要确保 ANN 预测的高性能,必须同时考虑到所有考虑过的粗糙度参数(Sa、Ssk 和 Sku)。最佳 "网络的预测性能大于 R2 = 0.98。润滑油压力对摩擦系数的影响最大。该参数值越大,摩擦系数越小。然而,接触压力越大,压力辅助润滑的有利影响就越小。摩擦过程的第三个参数,即油的运动粘度,对摩擦系数的影响最小。
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Analysis of Coefficient of Friction of Deep-Drawing-Quality Steel Sheets Using Multi-Layer Neural Networks
This article presents the results of an analysis of the influence of friction process parameters on the coefficient of friction of steel sheets 1.0347 (DC03), 1.0338 (DC04) and 1.0312 (DC05). A special tribometer was designed and manufactured in order to simulate the friction phenomenon occurring in the blankholder area in deep drawing operations. Lubricant was supplied to the contact zone under pressure. The value of the coefficient of friction was determined under various contact pressures and lubrication conditions. Multi-layer artificial neural networks (ANNs) were used to predict the value of the coefficient of friction. The input parameters considered were the kinematic viscosity of lubricants, contact pressure, lubricant pressure, selected mechanical properties and basic surface roughness parameters of sheet metals. The value of the coefficient of friction of 1.0312 steel sheets was predicted based on the results of friction tests on 1.0347 and 1.0338 steel sheets. Many ANN models were built to find a neural network that will provide the best prediction performance. It was found that to ensure a high performance of ANN prediction, it is necessary to simultaneously take into account all the considered roughness parameters (Sa, Ssk and Sku). The predictive performance of the ‘best’ network was greater than R2 = 0.98. The lubricant pressure had the greatest impact on the coefficient of friction. Increasing the value of this parameter reduces the value of the coefficient of friction. However, the greater the contact pressure, the smaller the beneficial effect of pressure-assisted lubrication. The third parameter of the friction process, the kinematic viscosity of the oil, exhibited the smallest impact on the coefficient of friction.
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