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Statistical Process Control for Unimodal Distribution Based on Maximum Entropy Distribution Approximation

机译:基于最大熵分布近似的单峰分布统计过程控制

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In statistical process control, the control chart utilizing the idea of maximum entropy distribution density level sets has been proven to perform well for monitoring the quantity with multimodal distribution. However, it is too complicated to implement for the quantity with unimodal distribution. This article proposes a simplified method based on maximum entropy for the control chart design when the quantity being monitored is unimodal distribution. First, we use the maximum entropy distribution to approximate the unknown distribution of the monitored quantity. Then we directly take the value of the quantity as the monitoring statistic. Finally, the Lebesgue measure is applied to estimate the acceptance regions and the one with minimum volume is chosen as the optimal in-control region of the monitored quantity. The results from two cases show that the proposed method in this article has a higher detection capability than the conventional control chart techniques when the monitored quantity is asymmetric unimodal distribution.
机译:在统计过程控制中,使用最大熵分布密度水平集的思想的控制图已被证明可以很好地监视多峰分布的数量。但是,对于具有单峰分布的数量实施该方法太复杂了。当被监视的数量为单峰分布时,本文提出了一种基于最大熵的简化方法,用于控制图设计。首先,我们使用最大熵分布来近似估计监视量的未知分布。然后,我们直接将数量的值作为监视统计量。最后,采用勒贝格测度估计接受区域,并选择体积最小的区域作为监测数量的最佳控制区域。两种情况的结果表明,当监测量为非对称单峰分布时,本文提出的方法具有比常规控制图技术更高的检测能力。

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