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ROBUSTNESS OF MEASURES OF COMMON CAUSE SIGMA IN PRESENCE OF DATA CORRELATION

机译:存在数据关联时常见原因SIGMA度量的鲁棒性

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Process monitoring in the presence of data correlation is one of the most discussed issues in statistical process control literature over the past decade. However, the attention to retrospective analysis in the presence of data correlation with various common cause sigma estimators is lacking in the literature. Maragah et al. (1992), in an early paper on the retrospective analysis in presence of data correlation, addresses only a single common cause sigma estimator. This paper studies the effect of data correlation on retrospective X-chart with various common cause sigma estimates in stable period of AR(1) Process. This study is carried out with the aim of identifying suitable standard deviation statistic/statistics which is/are robust to the data correlation. This paper also discusses the robustness of common cause sigma estimates for monitoring the data following other time series models, namely ARMA(1,1) and AR(p). Further, the bias characteristics of robust standard deviation estimates have been discussed ,for the above time-series models. This paper further studies the performance of retrospective X-chart on forecast residuals from various forecasting methods of AR(1) process. The above studies were carried out through simulating the stable period of AR(1), AR(2), stable and invertible period of ARMA(1,1) processes. The average number of false alarms have been considered as a measure of performance. The results of simulation studies have been discussed.
机译:存在数据相关性的过程监视是过去十年中统计过程控制文献中讨论最多的问题之一。但是,文献中缺少对与各种常见原因sigma估计量存在数据相关性的回顾性分析的关注。 Maragah等。 (1992年)在有关数据相关性的情况下进行回顾性分析的早期论文中,只讨论了一个单一的共同原因sigma估计量。本文研究了在AR(1)过程稳定期内具有各种常见原因sigma估计值的回顾性X图表上数据关联的影响。进行这项研究的目的是确定对数据相关性很强的合适的标准偏差统计量。本文还讨论了用于监视其他时间序列模型(即ARMA(1,1)和AR(p))的数据的常见原因sigma估计的鲁棒性。此外,对于上述时间序列模型,已经讨论了鲁棒标准偏差估计的偏差特征。本文进一步研究了回顾性X图表对AR(1)过程的各种预测方法的预测残差的性能。通过模拟AR(1),AR(2)的稳定周期,ARMA(1,1)过程的稳定和可逆周期来进行上述研究。错误警报的平均数量已被视为衡量性能的标准。已经讨论了模拟研究的结果。

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