提供一种预测和检测破坏性过程以防止废品和缺陷产品产生的模型:一种数据挖掘方法

N. Safaie, M. Saadatmand, S. A. Nasri
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引用次数: 1

摘要

今天,大多数行业使用统计质量控制工具来提高质量,减少有缺陷的产品和浪费,但是大量的数据需要强大的工具来帮助控制过程。本研究的目的之一是利用数据挖掘工具预测不良产品并防止其产生,因为数据挖掘工具具有高功率的数据分析和预测特性,而数据挖掘工具在工业中很少使用。在本研究中,Shabrun公司2017年生产的所有零部件的统计人口。统计样本为从生产线上随机抽取的2400件散热器。在数据挖掘的操作阶段,使用了三种决策树算法:C&R树、任务树和Chaid树。利用这些算法,确定了影响质量控制的最重要准则和导致零件质量的规则。对比结果表明,尽管三种算法都是有效的,但C&R树算法的准确率最高。遵守执行这些算法所产生的规则导致发现和防止产生废物,从而提高了效率,防止了该生产单位的时间和成本损失。
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Providing A Model for Predicting and Detecting Destructive Processes to Prevent the Production of Waste and Defective Products: A Data Mining Approach
Today, most industries use statistical quality control tools to improve quality and reduce the defective products and waste, but the high volume of data requires the help of a powerful tool to control processes. One of the objectives of the present study is to predict defective products and prevent their production using data mining tools due to the high power in data analysis and its predictive nature, which is less used in the industry. In this study, the statistical population of all parts produced in 2017 by Shabrun Company. The statistical sample is 2400 pieces of radiators that were randomly selected from the production line. In the operational phases of data mining, three decision tree algorithms were used: C&R Tree, Quest Tree and Chaid Tree. Using these algorithms, the most important criteria affecting quality control and rules leading to the quality of parts were determined. Comparative results showed that despite the validity of all three algorithms, the C&R Tree algorithm had the highest accuracy. Adherence to the rules resulting from the implementation of these algorithms has led to the detection and prevention of waste generation, which has increased efficiency and prevented the loss of time and cost in this production unit.
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