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Operator Knowledge Inclusion in Data-Mining Approaches for Product Quality Assurance using Cause-Effect Graphs

机译:使用因果图将操作员知识包含在产品质量保证的数据挖掘方法中

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Product quality is one of the crucial factors influencing customer satisfaction and loyalty, and of course, a company’s reputation in general. A high quantity of non-conforming products increases risks and costs of production. For certain types of products, it is difficult to measure quality during production, therefore it is assessed afterwards in a laboratory. We propose to determine the relationship between process and quality parameters. The identified process parameters can then be used in future to estimate and predict quality. In this paper we present a method to develop a Cause-Effect Graph (CEG) based on expert knowledge (qualitative part) to provide visualization of the causes and effects to support machine operators. To validate the CEG we used data mining methods (quantitative part). We apply our approach to an industrial use case (stretch film production), collecting the expert knowledge through interviews and card-sorting techniques, and performing a logistic regression and decision tree analysis in the data-mining part. The validity of the proposed method is proven for continuous technical processes with certain important criteria of classification, e.g. availability of process variables, their amount, relationship between process and quality relevant variables. Thus, the main contribution of this paper is presented by the matching of experts’ knowledge with results of data mining in order to improve the production process understanding and visual support of causes and effects of production process for operators.
机译:产品质量是影响客户满意度和忠诚度的关键因素之一,当然也影响着公司的声誉。大量不合格产品会增加生产的风险和成本。对于某些类型的产品,很难在生产过程中测量质量,因此需要在实验室中进行评估。我们建议确定过程和质量参数之间的关系。所识别的过程参数可在将来用于估计和预测质量。在本文中,我们提出了一种基于专家知识(定性部分)来开发因果图(CEG)的方法,以提供因果图的可视化,以支持机器操作员。为了验证CEG,我们使用了数据挖掘方法(定量部分)。我们将我们的方法应用于工业用例(拉伸膜生产),通过采访和卡片分类技术收集专家知识,并在数据挖掘部分进行逻辑回归和决策树分析。对于具有某些重要分类标准的连续技术过程,证明了所提出方法的有效性。过程变量的可用性,其数量,过程与质量相关变量之间的关系。因此,本文的主要贡献在于将专家的知识与数据挖掘的结果相匹配,以提高对生产过程的理解,并为操作员提供对生产过程因果关系的直观支持。

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