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Principal component analysis-based control charts using support vector machines for multivariate non-normal distributions

机译:基于主组件分析的控制图,使用支持向量机用于多变量非正常分布

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The growing demand for statistical process monitoring has led to the vast utilization of multivariate control charts. Complicated structure of the measured variables associated with highly correlated characteristics, has given rise to daily increasing urge for reliable substitutes of conventional methods. In this regard, projection methods have been developed to address the issue of high correlation among characteristics by transforming them to an uncorrelated set of variables. Principal component analysis (PCA)-based control charts are widely used to overcome the issue of correlation among measured variables by defining linear transformations of the existing variables to a new uncorrelated space. Newly transformed variables explain different amount of variations in the measured variables with the first PC explaining the highest amount, the second PC explains the second highest one, and so on. PCA, also gives the opportunity of dimension reduction to the researcher, in cost of losing a part of information extracted from observed variation, yet using all the original measured variables. In spite of the mentioned strength of the PCA based methods, the underlying assumption of observations to be normally distributed, has limited the applicability of PCA-based schemes, as the normality assumption is widely violated in real practices. With this in regard, a distribution-free method to establish the limits of PCA-based control charts can be a good modification to keep the scheme reliable when the normality assumption is not met. The proposed method presented in this article is based on support vector machines (SVM) as a substitute for conventional methods to construct control limits for PCA-based control charts. As SVM uses real-world observations of the process, no distributional assumption is required to construct control limits. Extensive simulation experiments are conducted using normal and non-normal datasets to compare the performance of the proposed method with those of the conventional and some non-parametric methods existing in the literature. The results show a relatively good performance of the proposed method compared to others in terms of the average and the standard deviation of run lengths.
机译:越来越大的统计过程监测的需求导致了多元控制图的广泛利用。与高度相关特性相关的测量变量的复杂结构使得每天增加常规方法的可靠替代品的日益增加的冲动。在这方面,已经开发出投影方法来解决特征之间的高相关问题,通过将它们转换为不相关的变量集。基于主成分分析(PCA)的控制图,广泛用于通过将现有变量的线性变换定义为新的不相关空间来克服测量变量之间的相关问题。新转换的变量解释了测量变量的不同变化,第一台PC解释了最高量,第二个PC解释了第二个最高的电脑等。 PCA还为研究人员提供了尺寸减少的机会,成本丢失了从观察到的变化中提取的一部分信息,尚未使用所有原始测量变量。尽管提到了基于PCA的方法的强度,但是通常分布的观察结果的潜在假设限制了基于PCA的方案的适用性,因为正常假设在实际实践中被广泛侵犯。通过这方面,可以将基于PCA的控制图的限制的无分布方法可以是一种很好的修改,以便在不满足正常性假设时保持方案可靠。本文中提出的所提出的方法基于支持向量机(SVM)作为构建基于PCA的控制图的控制限制的传统方法的替代方法。随着SVM使用实际观察过程,不需要分布假设来构建控制限制。使用正常和非正常数据集进行广泛的模拟实验,以比较所提出的方法的性能与文献中存在的传统和一些非参数方法的性能。结果表明,与其他人的平均值和运行长度的标准偏差相比,该方法的表现相对较好。

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