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Detection and classification mean-shifts in multi-attribute processes by artificial neural networks

机译:人工神经网络在多属性过程中的均值漂移检测和分类

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摘要

To monitor the quality of a multi-attribute process, some issues arise. One of them being the occurrence of a high number of false alarms (type I error) and the other an increase in the probability of not detecting defects when the process is monitored by a set of independent uni-attribute control charts. In this paper, based upon the artificial neural network capabilities we develop a new methodology to overcome this problem. We design a perceptron neural network to monitor either the proportions of several types of product nonconformities (instead of using several np charts) or the number of different types of defects (instead of using several c charts) in a product. Moreover, while the proposed method possesses the ability to be applied for small sample sizes, it is also able to diagnose the mean shift online. We present two simulation experiments in which the proportions of several types of nonconformities are monitored. In addition, we present one more simulation experiment in which the number of different types of defect is controlled. We also compare the performance of the proposed methodology with the ones from the Mnp and T~2 charts for multi-attribute processes. The results of the simulation studies are encouraging.
机译:为了监视多属性过程的质量,出现了一些问题。其中一个是发生大量错误警报(I型错误),另一个是当通过一组独立的单一属性控制图监视过程时,未检测到缺陷的可能性增加。在本文中,基于人工神经网络功能,我们开发了一种新的方法来克服此问题。我们设计了一个感知器神经网络,以监视产品中几种类型的产品不合格品的比例(而不是使用多个np图)或产品中不同类型的缺陷数(而不是使用多个c图)。此外,虽然所提出的方法具有适用于小样本量的能力,但它也能够在线诊断均值漂移。我们提出了两个模拟实验,其中监视了几种类型的不合格品的比例。另外,我们提出了另一种模拟实验,其中控制了不同类型缺陷的数量。我们还将提出的方法的性能与Mnp和T〜2图表中用于多属性过程的性能进行了比较。模拟研究的结果令人鼓舞。

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