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Mechanical Performance Prediction for Friction Riveting Joints of Dissimilar Materials via Machine Learning

机译:通过机器学习对不同材料摩擦铆接接头的机械性能预测

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Solid-state joining techniques have become increasingly attractive for joining similar and dissimilar materials because it enables further optimization of lightweight components. In contrast to fusion-based joining processes, solid-state joining prevents the occurrence of typical defects such as pores or hot cracking. Machine learning algorithms are powerful tools to identify and quantify relationships between essential features along the process-property chain. In particular, different supervised machine learning algorithms can be used to perform regression analyses and establish correlations between process parameters as well as resulting properties. This can help to circumvent the demand for conducting a vast number of additional experiments to determine optimized process parameters for desired material properties. Additionally, this knowledge can be utilized to obtain a deeper understanding of the underlying mechanisms. In this study, a number of regression algorithms, such as support vector machines, decision trees, random forest and 2nd-order polynomial regression have been applied to correlate process parameters and materials properties for the solid-state joining process of force-controlled friction riveting. Experimental data generated via a central-composite Design of Experiments, serves as source of two separate data sets: one for training and one for testing the machine learning algorithms. The performances of the different algorithms are evaluated based on the determination coefficientR2and the standard deviation of the predictions on the test data set. The trained algorithms with the best performance measures can be used as predictive models to forecast specific influences of process parameters on mechanical properties. Through the application of these models, optimized process parameters can be determined that lead to desired properties.
机译:固态连接技术对于加入类似和不同的材料越来越有吸引力,因为它能够进一步优化轻质部件。与基于融合的连接过程相比,固态连接可防止发生典型缺陷,例如孔或热裂纹。机器学习算法是强大的工具,可以识别和量化沿流程链的基本特征之间的关系。特别地,可以使用不同的监督机器学习算法来执行回归分析并在处理参数之间建立相关性以及产生的属性。这有助于规避导致大量额外实验的需求,以确定所需材料特性的优化工艺参数。另外,可以利用这些知识来获得对底层机制的更深刻理解。在该研究中,已经应用了许多回归算法,例如支持向量机,决策树,随机森林和2nd阶多项式回归,以相关的方法参数和材料特性,用于力控制的摩擦铆接的固态连接过程。通过实验的中央复合设计产生的实验数据,作为两个单独的数据集的来源:一个用于训练,一个用于测试机器学习算法。基于确定COEFFITER2和测试数据集的预测的标准偏差来评估不同算法的性能。具有最佳性能措施的训练算法可用作预测模型,以预测过程参数对机械性能的特定影响。通过应用这些模型,可以确定优化的过程参数,导致所需的属性。

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