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Online monitoring and fault identification of mean shifts in bivariate processes using decision tree learning techniques

机译:使用决策树学习技术对二元过程中均值漂移进行在线监控和故障识别

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摘要

With modern data collection system and computers used for on-line process monitoring and fault identification in manufacturing processes, it is common to monitor more than one correlated process variables simultaneously. The main problems in most multivariate control charts (e.g., T~2 charts, MCUSUM charts, MEWMA charts) are that they cannot give direct information on which variable or subset of variables caused the out-of-control signals. A Decision Tree (DT) learning based model for bivariate process mean shift monitoring and fault identification is proposed in this paper under the assumption of constant variance-covariance matrix. Two DT classifiers based on the C5.0 algorithm are built, one for process monitoring and the other for fault identification. Simulation results show that the proposed model can not only detect the mean shifts but also give information on the variable or subset of variables that cause the out-of-control signals and its/their deviate directions. Finally a bivariate process example is presented and compared with the results of an existing model.
机译:借助现代数据收集系统和用于在线过程监控以及制造过程中故障识别的计算机,通常需要同时监视多个相关的过程变量。大多数多变量控制图(例如T〜2图,MCUSUM图,MEWMA图)的主要问题是它们无法直接提供有关哪个变量或变量子集导致失控信号的直接信息。在恒定方差-协方差矩阵的假设下,提出了一种基于决策树学习的双变量过程均值漂移监测和故障识别模型。建立了两个基于C5.0算法的DT分类器,一个用于过程监控,另一个用于故障识别。仿真结果表明,所提出的模型不仅可以检测均值漂移,而且还可以给出导致失控信号及其偏离方向的变量或变量子集的信息。最后,给出了一个双变量过程示例,并将其与现有模型的结果进行比较。

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