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On-line Identification and Quantification of Mean Shifts in Bivariate Processes using a Neural Network-based Approach

机译:使用基于神经网络的方法在线识别和量化双变量过程中的均值漂移

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摘要

Many statistical process control (SPC) problems are multivariate in nature because the quality of a given process or product is determined by several interrelated variables. Various multivariate control charts (e.g. Hotelling's T2, multivariate cumulative sum and multivariate exponentially weighted moving average charts) have been designed for detecting mean shifts. However, the main shortcoming of such charts is that they can detect an unusual event but do not directly provide the information required by a practitioner to determine which variable or group of variables has caused the out-of-control signal. In addition, these charts cannot provide more detailed shift information, for example the shift magnitude, which would be very useful for quality practitioners to search the assignable causes that give rise to the out-of-control situation. This work proposes a neural network-based model that can identify and quantify the mean shifts in bivariate processes on-line. The performance evaluation performed by the simulation demonstrates that the proposed model outperforms the conventional multivariate control schemes in terms of average run length, and can accurately estimate the magnitude of the shift of each of the shifted variables in a real-time mode. Extensive simulation is also carried out to examine the effects of correlation on the performance of the proposed model. A numerical example is presented to illustrate the usage of the proposed model. Although a mean shift identification and quantification tool for bivariate SPC is the particular application presented here, the proposed neural network-based methodology can be applied to multivariate SPC in general.
机译:本质上,许多统计过程控制(SPC)问题是多变量的,因为给定过程或产品的质量由几个相互关联的变量确定。已经设计了各种多元控制图(例如,Hotelling的T2,多元累积和和多元指数加权移动平均图)来检测均值漂移。但是,这种图表的主要缺点是它们可以检测到异常事件,但不能直接提供从业人员确定哪个变量或一组变量导致失控信号所需的信息。此外,这些图表无法提供更详细的班次信息,例如班次大小,这对于质量从业人员搜索导致失控情况的可分配原因非常有用。这项工作提出了一个基于神经网络的模型,该模型可以识别和量化在线双变量过程中的均值漂移。通过仿真进行的性能评估表明,所提出的模型在平均行程长度方面优于传统的多变量控制方案,并且可以在实时模式下准确估计每个移位变量的移位幅度。还进行了广泛的仿真,以检验相关性对所提出模型的性能的影响。给出了一个数值示例来说明所提出模型的用法。尽管这里介绍的是用于双变量SPC的均值漂移识别和量化工具,但所提出的基于神经网络的方法通常可以应用于多变量SPC。

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