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Comparison of data mining tools for significance analysis of process parameters in applications to process fault diagnosis

机译:数据挖掘工具在过程故障诊断中的过程参数重要性分析的比较

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This paper presents an evaluation of various methodologies used to determine relative significances of input variables in data-driven models. Significance analysis applied to manufacturing process parameters can be a useful tool in fault diagnosis for various types of manufacturing processes. It can also be applied to building models that are used in process control. The relative significances of input variables can be determined by various data mining methods, including relatively simple statistical procedures as well as more advanced machine learning systems. Several methodologies suitable for carrying out classification tasks which are characteristic of fault diagnosis were evaluated and compared from the viewpoint of their accuracy, robustness of results and applicability. Two types of testing data were used: synthetic data with assumed dependencies and real data obtained from the foundry industry. The simple statistical method based on contingency tables revealed the best overall performance, whereas advanced machine learning models, such as ANNs and SVMs, appeared to be of less value.
机译:本文对用于确定数据驱动模型中输入变量的相对重要性的各种方法进行了评估。应用于制造过程参数的重要性分析可能是各种类型制造过程故障诊断中的有用工具。它也可以应用于在过程控制中使用的构建模型。输入变量的相对重要性可以通过各种数据挖掘方法来确定,包括相对简单的统计程序以及更高级的机器学习系统。从它们的准确性,结果的鲁棒性和适用性的角度,评估并比较了几种适合执行分类任务的方法,这些方法是故障诊断的特征。使用了两种类型的测试数据:具有假定依赖性的合成数据和从铸造行业获得的真实数据。基于列联表的简单统计方法显示出最佳的整体性能,而高级的机器学习模型(如ANN和SVM)似乎价值较低。

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