利用人工神经网络对MEWMA控制图进行阶跃变化时间的识别

F. Ahmadzade, R. Noorosana, Iran Syahrood
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引用次数: 24

摘要

质量控制图已被证明在检测失控信号方面非常有效。对于从业者来说,确定信号在过去的哪个点被启动是非常重要的。如果控制图显示工艺参数的变化,确定变化的时间将极大地帮助信号诊断程序,因为它简化了对特殊原因的搜索。本文提出了多元正态分布的观察结果。他们使用多元指数加权移动平均(MEWMA)控制图来检测信号。本研究提供了两种检测变化点的方法,第一种是MLE,然后使用神经网络识别过去参数(平均值)变化的时间。研究人员打算评估两种方法的性能,并通过计算机模拟实验对它们进行比较。结果表明,神经网络在整个过程维度上都具有良好的效果。因此,神经网络为过程工程师提供了对过程均值变化的实际时间的准确而有用的估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying the time of a step change with MEWMA control charts by artificial neural network
Quality control charts have proven to be very effective in detecting out of control signals. It is very important to practitioners to determine at what point in the past the signal was initiated. If a control chart signals a change in the process parameter, identifying the time of the change will substantially help the signal diagnostics procedure since it simplifies the search for special causes. In this paper the researchers propose the observations following multivariate normal distribution. They have used multivariate exponentially weighted moving average (MEWMA) control chart to detect signals. This research provides two ways to detect the change point, first MLE, and then neural network is used to identify the time of the change in the parameters (mean) in the past. The researchers intended to assess the performance of two approaches and compare them through computer simulation experiments. The results show that neural network performs effectively and equally well for the whole process dimensions. Thus, the neural network provides process engineers with an accurate and useful estimate of the actual time of the change in the process mean.
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