基于关联规则挖掘的质量缺陷分析与预测模型研究

Xianlin Ren, Chengrui Han, Yiduo Tian, Laixian Chen, B. Liu
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引用次数: 0

摘要

针对产品制造质量控制与诊断过程中多个质量数据之间的耦合性和模糊性,提出了一种基于关联规则挖掘的质量缺陷分析与预测方法。它克服了传统质量缺陷分析方法只能从单链上跟踪质量的缺点,可以同时分析和预测导致输出质量缺陷的具体质量特征数据和对其产生影响的制造过程的多个输入参数。通过K-means划分质量特征数据区间,利用Apriori算法探索质量特征数据之间的相关性,构建判定产品质量损失的规则。采用云服务器+本地终端的技术结构,建立了基于GA-SVR的制造过程质量缺陷预测模型。最后,通过算例分析,验证了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on quality defect analysis and prediction model based on association rule mining
A quality defect analysis and prediction method based on association rule mining is proposed to address the coupling and ambiguity between multiple quality data in the process of product manufacturing quality control and diagnosis. It overcomes the shortcomings of the traditional quality defect analysis method which can only trace the quality from a single chain and can simultaneously analyze and predict the specific quality characteristics data that lead to the output quality defects and the multiple input parameters of the manufacturing process that have an impact on it. By dividing the quality characteristics data intervals through K-means and using the Apriori algorithm to explore the correlation between the quality characteristics data, we can construct the rules to judge the loss of product quality. A GA-SVR based manufacturing process quality defect prediction model is built using the cloud server plus local terminal technology structure. Finally, through example analysis, it is proved the effectiveness of the proposed method.
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