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Chatter Detection and Diagnosis in Hot Strip Mill Process With a Frequency-Based Chatter Index and Modified Independent Component Analysis

机译:热带轧机工艺中的颤动检测与诊断,具有基于频率的抗频率的抗射线指标和改进的独立分量分析

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摘要

In this article, we propose a framework to monitor the chatter phenomenon and to diagnose the cause variables of chatter occurred in the hot strip mill process (HSMP). For monitoring chatter, we develop a chatter index (CI) that quantifies chatter to confirm its occurrence. Based on the data classified as normal by the CI, a multivariate statistical process monitoring model for detecting chatter is constructed using the modified independent component analysis (MICA) method. The monitoring results show that the model based on the MICA outperforms other models based on the principal component analysis and independent component analysis. For the diagnosis of the cause variables of detected chatter, various contribution plots can be used. In this article, we develop a relative contribution plot for a more obvious diagnosis than the existing contribution plot. Using this, we diagnose and analyze the cause variables of the detected chatter in the HSMP.
机译:在本文中,我们提出了一个框架来监测喋喋不休的现象,并诊断热带轧机过程(HSMP)中发生颤动的原因变量。对于监控喋喋不休,我们开发了一个喋喋不休的索引(CI),这些码头(CI)量化了喋喋不休以确认其发生。基于CI作为正常分类的数据,使用修改的独立分量分析(MICA)方法构建用于检测颤振物的多变量统计过程监测模型。监测结果表明,基于云母的模型优于基于主成分分析和独立分量分析的其他模型。对于检测到的喋喋不休的原因变量的诊断,可以使用各种贡献图。在本文中,我们开发了比现有贡献情节更明显的诊断的相对贡献曲线。使用此,我们诊断并分析HSMP中检测到的喋喋不休的原因变量。

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