Modern data collecting methods and computation tools have made it possible to monitor high-dimensional processes. In this article, Phase II monitoring of high-dimensional processes is investigated when the available number of samples collected in Phase I is limitted in comparison to the number of variables. A new charting statistic for high-dimensional multivariate processes based on the diagonal elements of the underlying covariance matrix is introduced and a unified procedure for Phase I and II by employing a self-starting control chart is proposed. To remedy the effect of outliers, we adopt a robust procedure for parameter estimation in Phase I and introduce the appropriate consistent estimators. The statistical performance of the proposed method is evaluated in Phase II through average run length (ARL) criterion in the absence and presence of outliers and reveals that the proposed control chart scheme effectively detects various kinds of shifts in the process mean. Finally, we illustrate the applicability of our proposed method via a real-world example.
翻译:现代数据收集方法和计算工具使监测高维过程成为可能。在本条中,当第一阶段收集的样品数量与变量数量相比受到限制时,将调查对高维过程的第二阶段监测。根据基本共变矩阵的对数元素,引入了新的高维多变量过程图表统计,并提议采用自我启动的控制图表,对第一阶段和第二阶段采用统一程序。为了纠正外部线的影响,我们在第一阶段采用严格的参数估计程序,并采用适当的一致估计数据。在外部线不存在和存在的情况下,第二阶段通过平均运行长度标准对拟议方法的统计性能进行评估,并表明拟议的控制图表计划有效地检测了进程中的各种变化。最后,我们通过真实世界的例子说明我们拟议方法的适用性。