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Identification of significant variables using random forest, in a process of injection moulding : A case study of yield reduction analysis in changing plastic injection moulds for auto parts products.

机译:在注塑过程中使用随机森林识别重要变量:以更换汽车零件产品的塑料注塑模具中的减产分析为例。

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This paper describes the application of a data mining method for the identification of significant variables in a manufacturing process. A practical case is analysed, where is needed a reduction of yield due to a production delay. This case is developed in an auto parts injection moulding company. The problem lies in the assembly and disassembly process of the moulds, which is a step prior to the injection of the pieces. When there is a delay in this process, yield and delivery to the customer are affected. The purpose of this analysis is to find the root causes of the delays and take actions in this regard. To reach the goal, first, the data is extracted, then prepared, afterwards analysed and finally interpreted. In the data analysis, the algorithm "random forest" is used to find the most significant factors. The efficiency of the algorithm is evaluated with the Area under the Receiver Operating Characteristic (AUROC) method. It was determined that time, machines, and operators are the main causes of the delays with almost 70% accuracy, in addition, these results were compared with the possible root causes provided by production management.
机译:本文介绍了一种数据挖掘方法在制造过程中识别重要变量的应用。分析了实际情况,由于生产延迟而需要降低产量。这种情况是在一家汽车零件注塑公司开发的。问题在于模具的组装和拆卸过程,这是在注射零件之前的步骤。如果此过程有延迟,则会影响产量和向客户的交付。该分析的目的是找出造成延误的根本原因并采取相应的措施。为了达到目标,首先要提取数据,然后进行准备,然后进行分析和最终解释。在数据分析中,使用“随机森林”算法来查找最重要的因素。使用接收器工作特征(AUROC)方法下的面积评估算法的效率。确定时间,机器和操作员是延迟的主要原因,其准确性几乎达到70%,此外,还将这些结果与生产管理提供的可能根本原因进行了比较。

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