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Robustness of the EWMA control chart for individual observations

机译:EWMA控制图对于个别观察的稳健性

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摘要

The traditional exponentially weighted moving average (EWMA) chart is one of the most popular control charts used in practice today. The in-control robustness is the key to the proper design and implementation of any control chart, lack of which can render its out-of-control shift detection capability almost meaningless. To this end, Borror et al. [5] studied the performance of the traditional EWMA chart for the mean for i.i.d. data. We use a more extensive simulation study to further investigate the in-control robustness (to non-normality) of the three different EWMA designs studied by Borror et al. [5]. Our study includes a much wider collection of non-normal distributions including light- and heavy-tailed and symmetric and asymmetric bi-modal as well as the contaminated normal, which is particularly useful to study the effects of outliers. Also, we consider two separate cases: (i) when the process mean and standard deviation are both known and (ii) when they are both unknown and estimated from an in-control Phase I sample. In addition, unlike in the study done by Borror et al. [5], the average run-length (ARL) is not used as the sole performance measure in our study, we consider the standard deviation of the run-length (SDRL), the median run-length (MDRL), and the first and the third quartiles as well as the first and the 99th percentiles of the in-control run-length distribution for a better overall assessment of the traditional EWMA chart's in-control performance. Our findings sound a cautionary note to the (over) use of the EWMA chart in practice, at least with some types of non-normal data. A summary and recommendations are provided.%Department of Statistics, University of Pretoria, Lynnwood Road, Pretoria 0002, South Africa;Department of Statistics, University of Pretoria, Lynnwood Road, Pretoria 0002, South Africa;Department of Information Systems, Statistics and Management Science, University of Alabama,Tuscaloosa, AL 35487, USA;
机译:传统的指数加权移动平均值(EWMA)图表是当今实践中使用的最受欢迎的控制图之一。控制中的鲁棒性是正确设计和实施任何控制图的关键,缺少控制图会使它的失控移位检测功能几乎毫无意义。为此,Borror等人。 [5]研究了传统EWMA图表的i.i.d均值性能。数据。我们使用更广泛的仿真研究来进一步研究Borror等人研究的三种不同EWMA设计的控制中鲁棒性(至非正常性)。 [5]。我们的研究包括更广泛的非正态分布集合,包括轻尾和重尾以及对称和不对称双峰以及受污染的正态分布,这对于研究异常值的影响特别有用。此外,我们考虑两种独立的情况:(i)当过程均值和标准差均已知时,以及(ii)当未知且均由对照第一阶段样本估算时。另外,与Borror等人所做的研究不同。 [5],在我们的研究中,平均行程(ARL)并不是唯一的性能指标,我们考虑了行程(SDRL),中值行程(MDRL)和第一个控制行进长度分布的第三个四分位数以及第一个和第99个百分位,以便更好地总体评估传统EWMA图表的控制内性能。我们的发现对至少在某些类型的非正态数据中实际使用(过度)使用EWMA图表发出警告。提供摘要和建议。%南非比勒陀利亚大学Lynnwood路统计局,比勒陀利亚0002;南非比勒陀利亚大学统计部门Lynnwood Road,比勒陀利亚0002,南非;信息系统,统计和管理系美国阿拉巴马大学,塔斯卡卢萨分校,科学,美国35487;

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