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Data mining model adjustment control charts for cascade processes

机译:级联过程的数据挖掘模型调整控制图

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Control charts have been widely recognised as important tools in system monitoring of abnormal behaviour and quality improvement. Traditional control charts have a major assumption that successive observations are uncorrelated and normally distributed. When this assumption is violated, the traditional control charts do not perform well, but instead show increased false alarm rates. In this study, we propose a data mining model adjustment control chart to address autocorrelation problems for cascade processes. The basic idea of the proposed control chart is to monitor the residuals obtained by data mining models. The data mining models used in this study include support vector regression and artificial neural networks. A simulation study was conducted to evaluate the performance of the proposed control chart and compare it with the standard regression adjustment control chart and the observations-based control chart in terms of average run length performance. The results showed that the proposed data mining model adjustment control charts yielded better performance than the two other methods considered in this study. [Received 8 December 2010; Revised 19 June 2011; Revised 9 September 2011; Accepted 29 November 2011]
机译:控制图已被广泛认为是系统监视异常行为和改善质量的重要工具。传统的控制图主要假设连续观测值不相关且呈正态分布。当违反此假设时,传统的控制图将无法很好地执行,而是会显示出更高的误报率。在这项研究中,我们提出了一个数据挖掘模型调整控制图来解决级联过程的自相关问题。提出的控制图的基本思想是监视通过数据挖掘模型获得的残差。本研究中使用的数据挖掘模型包括支持向量回归和人工神经网络。进行了仿真研究,以评估所提出的控制图的性能,并将其与标准回归调整控制图和基于观测值的控制图的平均游程长度性能进行比较。结果表明,与本研究中考虑的其他两种方法相比,提出的数据挖掘模型调整控制图产生了更好的性能。 [2010年12月8日收到; 2011年6月19日修订; 2011年9月9日修订; 2011年11月29日接受]

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