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Shewhart control chart for monitoring the mean of Poisson mixed integer autoregressive processes via Monte Carlo simulation

机译:Shewhart控制图,用于通过蒙特卡洛模拟监测泊松混合整数自回归过程的平均值

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摘要

Most control charts for process monitoring assume independence among observations and that the nature of the characteristics of interest is continuous. However, these assumptions are often violated in practice, include industrial engineering applications. For integer-valued autocorrelated processes, usual control charts have a poor performance. Time-series modeling and modified control limits play a fundamental role in such circumstances. In this paper, we propose a Shewhart control chart for monitoring the mean when observations can be modeled as a first order Poisson mixed integer autoregressive model - POMINAR(l) process. The performance of the proposed approach is investigated based on in-control and out-of-control average run lengths (ARL_0 and ARL_1, respectively) in different scenarios. Both the determination of the control limits and the evaluation of the chart are done through computational studies using Monte Carlo simulations. Practical use of the proposed approach is illustrated with two real examples for monitoring crime data and network traffic.
机译:大多数用于过程监控的控制图假定观察值之间是独立的,并且所关注特征的性质是连续的。但是,这些假设在实践中经常被违反,包括工业工程应用。对于整数值自相关过程,常规控制图的性能较差。在这种情况下,时间序列建模和修改后的控制限制起着至关重要的作用。在本文中,我们提出了一个Shewhart控制图,用于监控可以将观测值建模为一阶Poisson混合整数自回归模型-POMINAR(l)过程的平均值。基于在不同情况下的控制内和控制外平均行程长度(分别为ARL_0和ARL_1),研究了所提出方法的性能。控制极限的确定和图表的评估都是通过使用蒙特卡洛模拟的计算研究来完成的。通过两个用于监视犯罪数据和网络流量的真实示例,说明了该方法的实际使用。

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