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Data-driven Weld Nugget Width Prediction with Decision Tree Algorithm

机译:数据驱动焊接掘核宽度预测决策树算法

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This paper presents the capability of a decision tree algorithm to realize a data-driven resistance spot welding (RSW) weldability prediction. Although RSW provides commendable advantages, such as low cost and high speed/high volume operations, the RSW processes are often inconsistent and these significant inconsistencies are a well-known reliability issue. RSW process and data challenges including inconsistency often hinder the utilization of the data-driven weldability prediction. In this paper, we apply a decision tree algorithm on the RSW dataset collected from an automotive OEM to plot regression trees and to extract decision rules for the weld nugget width prediction. With three RSW test datasets, we conclude that the decision trees help in predicting the nugget width and in determining the impact of design and process parameters to the nugget width response variable.
机译:本文介绍了决策树算法实现了数据驱动电阻点焊(RSW)可焊性预测的能力。虽然RSW提供了值得称道的优点,例如低成本和高速/高批量操作,但RSW过程通常不一致,这些显着的不一致是一个知名的可靠性问题。 RSW过程和数据挑战包括不一致的经常妨碍数据驱动焊接预测的利用。在本文中,我们在从汽车OEM收集的RSW数据集上应用决策树算法,以绘制回归树,并提取焊缝宽度预测的决策规则。使用三个RSW测试数据集,我们得出结论,决策树有助于预测掘金宽度以及确定设计和过程参数对核宽度响应变量的影响。

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