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Kernel k-means clustering based local support vector domain description fault detection of multimodal processes

机译:基于核k均值聚类的局部支持向量域描述多模态过程故障检测

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摘要

The multimodal and nonlinear structure of a system makes process modeling and control quite complex. To monitor processes that have these characteristics, this paper presents a procedure based on kernel techniques for unsupervised learning that are able to separate different nonlinear process modes and to effectively detect faults. These techniques are named Kernel k-means (KK-means) clustering and support vector domain description (SVDD). In order to assess this monitoring strategy two different simulation studies as well as a real case study of an Etch Metal process are performed. Results show that the proposed control chart provides efficient fault detection performance with reduced false alarm rates.
机译:系统的多峰非线性结构使过程建模和控制变得相当复杂。为了监视具有这些特征的过程,本文提出了一种基于内核技术的无监督学习过程,该过程能够分离不同的非线性过程模式并有效地检测故障。这些技术称为内核k均值(KK-means)聚类,并支持矢量域描述(SVDD)。为了评估此监视策略,执行了两个不同的模拟研究以及蚀刻金属工艺的实际案例研究。结果表明,所提出的控制图可提供有效的故障检测性能,并降低误报率。

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