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Parameter selection guidelines for adaptive PCA-based control charts

机译:基于自适应PCA的控制图的参数选择准则

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Methods based on principal component analysis (PCA) are widely used for statistical process monitoring of high-dimensional processes. Allowing the monitoring model to update as new observations are acquired extends this class of approaches to non-stationary processes. The updating procedure is governed by a weighting parameter that defines the rate at which older observations are discarded, and therefore, it greatly affects model quality and monitoring performance. Additionally, monitoring non-stationary processes can require adjustments to the parameters defining the control limits of adaptive PCA in order to achieve the intended false detection rate. These two aspects require careful consideration prior the implementation of adaptive PCA. Towards this end, approaches are given in this paper for both parameter selection challenges. Results are presented for a simulation and two real-life industrial process examples. Copyright (c) 2016 John Wiley & Sons, Ltd.
机译:基于主成分分析(PCA)的方法被广泛用于高维过程的统计过程监视。允许监视模型在获取新观测值时进行更新,从而将此类方法扩展到非平稳过程。更新过程由权重参数控制,该权重参数定义了丢弃旧观测值的速率,因此,它极大地影响了模型质量和监视性能。另外,监视非平稳过程可能需要对定义自适应PCA的控制限制的参数进行调整,以实现预期的错误检测率。这两个方面需要在实施自适应PCA之前仔细考虑。为此,本文针对两种参数选择挑战给出了方法。给出了模拟结果和两个实际工业过程示例的结果。版权所有(c)2016 John Wiley&Sons,Ltd.

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