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Truncated normal distribution-based EWMA control chart for monitoring the process mean in the presence of outliers

机译:基于截断的正态分布的EWMA控制图表,用于监测过程中的意义在异常值的情况下

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摘要

In many applications, it is very important to detect outliers during the analysis of normal data. Many existing methods preprocess the data to remove the outliers and then analyse the data accordingly when the data are contaminated by different unexpected outliers; however, it is difficult to use this method for applications where the data must be analysed online. In this article, we present an online monitoring approach for statistical process control (SPC) that is robust with respect to the presence of outliers. The Monte Carlo simulation results show that the proposed control chart is quite robust under the standard normally distributed data and, moreover, the control limit is not be affected by the number and sizes of the outliers. Furthermore, a real data example from a foetal heart rate (FHR) process is used to illustrate an application of our proposed procedure.
机译:在许多应用中,在分析正常数据期间检测异常值非常重要。 许多现有方法预处理数据以删除异常值,然后在数据被不同意外异常值污染时相应地分析数据; 但是,很难使用此方法进行在线分析数据的应用程序。 在本文中,我们提出了一种用于统计过程控制(SPC)的在线监测方法,这对异常值的存在具有强大。 Monte Carlo仿真结果表明,在标准的正常分布数据下,所提出的控制图在标准的数据下非常强大,而且,控制限制不受异常值的数量和尺寸的影响。 此外,来自胎儿心率(FHR)过程的真实数据示例用于说明我们所提出的程序的应用。

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