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Average Run Length performance of CuSum Control Chart using Neural Network

机译:使用神经网络的CuSum控制图的平均游程长度性能

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In a manufacturing or industrial process, reducing the variability of a systems and products is essential to increase yield and quality of the products. Statistical process control is a power collection of problem-solving tools useful to increase yield and quality of products through the reduction of variability. Traditionally average run length (ARL) is used to measure for the performance of statistical process control charts using integral equation, Markov chain approach and simulation studies. In this paper, an alternative to these methods a neural network approach for monitoring the process mean were proposed to examined the ARL performance of cumulative sum (CuSum) control chart. The results showed that the average run length (ARL) performance of CuSum control charts using neural network slightly outperforms than traditional ARL performance of CuSum control charts.
机译:在制造或工业过程中,减少系统和产品的可变性对于提高产品的产量和质量至关重要。统计过程控制是解决问题的工具的集合,可用于通过减少可变性来提高产品的产量和质量。传统上,平均游程长度(ARL)用于使用积分方程,马尔可夫链方法和模拟研究来衡量统计过程控制图的性能。本文提出了一种替代这些方法的神经网络方法来监视过程均值,以检查累积总和(CuSum)控制图的ARL性能。结果表明,使用神经网络的CuSum控制图的平均游程长度(ARL)性能略优于传统CuSum控制图的ARL性能。

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