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应用梯度提升回归树预测金属板料成形中拉深筋的摩擦系数

Application of the Gradient-Boosting with Regression Trees to Predict the Coefficient of Friction on Drawbead in Sheet Metal Forming.

作者信息

Najm Sherwan Mohammed, Trzepieciński Tomasz, Laouini Salah Eddine, Kowalik Marek, Fejkiel Romuald, Kowalik Rafał

机构信息

Kirkuk Technical Engineering College, Northern Technical University, Kirkuk 36001, Iraq.

Department of Manufacturing Science and Engineering, Budapest University of Technology and Economics, Műegyetemrkp 3, 1111 Budapest, Hungary.

出版信息

Materials (Basel). 2024 Sep 15;17(18):4540. doi: 10.3390/ma17184540.

Abstract

Correct design of the sheet metal forming process requires knowledge of the friction phenomenon occurring in various areas of the drawpiece. Additionally, the friction at the drawbead is decisive to ensure that the sheet flows in the desired direction. This article presents the results of experimental tests enabling the determination of the coefficient of friction at the drawbead and using a specially designed tribometer. The test material was a DC04 carbon steel sheet. The tests were carried out for different orientations of the samples in relation to the sheet rolling direction, different drawbead heights, different lubrication conditions and different average roughnesses of the countersamples. According to the aim of this work, the Features Importance analysis, conducted using the Gradient-Boosted Regression Trees algorithm, was used to find the influence of several parameter features on the coefficient of friction. The advantage of gradient-boosted decision trees is their ability to analyze complex relationships in the data and protect against overfitting. Another advantage is that there is no need for prior data processing. According to the best of the authors' knowledge, the effectiveness of gradient-boosted decision trees in analyzing the friction occurring in the drawbead in sheet metal forming has not been previously studied. To improve the accuracy of the model, five MinLeafs were applied to the regression tree, together with 500 ensembles utilized for learning the previously learned nodes, noting that the MinLeaf indicates the minimum number of leaf node observations. The least-squares-boosting technique, often known as LSBoost, is used to train a group of regression trees. Features Importance analysis has shown that the friction conditions (dry friction of lubricated conditions) had the most significant influence on the coefficient of friction, at 56.98%, followed by the drawbead height, at 23.41%, and the sample width, at 11.95%. The average surface roughness of rollers and sample orientation have the smallest impact on the value of the coefficient of friction at 6.09% and 1.57%, respectively. The dispersion and deviation observed for the testing dataset from the experimental data indicate the model's ability to predict the values of the coefficient of friction at a coefficient of determination of = 0.972 and a mean-squared error of = 0.000048. It was qualitatively found that in order to ensure the optimal (the lowest) coefficient of friction, it is necessary to control the friction conditions (use of lubricant) and the drawbead height.

摘要

钣金成形工艺的正确设计需要了解拉深件各个区域中发生的摩擦现象。此外,拉延筋处的摩擦对于确保板材沿所需方向流动起着决定性作用。本文介绍了通过使用专门设计的摩擦计来测定拉延筋处摩擦系数的实验测试结果。测试材料为DC04碳钢薄板。针对样品相对于板材轧制方向的不同取向、不同的拉延筋高度、不同的润滑条件以及对磨样品的不同平均粗糙度进行了测试。根据这项工作的目标,使用梯度提升回归树算法进行特征重要性分析,以找出几个参数特征对摩擦系数的影响。梯度提升决策树的优点在于它们能够分析数据中的复杂关系并防止过拟合。另一个优点是无需进行事先的数据处理。据作者所知,此前尚未研究过梯度提升决策树在分析钣金成形中拉延筋处发生的摩擦方面的有效性。为了提高模型的准确性,对回归树应用了五个最小叶节点数,并使用500个集成来学习先前学习的节点,需要注意的是,最小叶节点数表示叶节点观测的最小数量。常被称为LSBoost的最小二乘提升技术用于训练一组回归树。特征重要性分析表明,摩擦条件(润滑条件下的干摩擦)对摩擦系数的影响最为显著,为56.98%,其次是拉延筋高度,为23.41%,样品宽度为11.95%。滚轮的平均表面粗糙度和样品取向对摩擦系数值的影响最小,分别为6.09%和1.57%。测试数据集与实验数据之间观察到的离散度和偏差表明,该模型能够在决定系数为 = 0.972且均方误差为 = 0.000048的情况下预测摩擦系数值。定性地发现,为了确保最佳(最低)摩擦系数,有必要控制摩擦条件(使用润滑剂)和拉延筋高度。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/807a/11433607/ec8c8377ab92/materials-17-04540-g001.jpg

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