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Artificial neural network in applying multi attribute control chart for AR processes

机译:人工神经网络将多属性控制图应用于AR过程

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Quality characteristics are subject of both manufacturing and service industries, which include not only the variables but the attributes as well. In Quality Control area substantial research has been done for Auto-correlated variables; however, no attempt was done for Auto-correlated attributes. Ignoring the autocorrelation structure in constructing control charts cause the in-control run length to decrease, and the false alarms to increase as such. In this article we develop a new methodology based upon the modified Elman neural network capabilities to overcome this problem. Moreover, instead of back propagation, simulated annealing is suggested as an alternative training technique that is able to search globally and in order to generate random AR vector we develop another artificial neural network based on ARTA algorithm. We present a simulation experiments and compare the performance of the proposed methodology with the other control methods of multi-attribute processes. The result of the simulation study is encouraging.
机译:质量特征是制造业和服务行业的主题,不仅包括变量,而且包括属性。在质量控制区域中,对自动相关变量进行了实质性研究;但是,没有尝试进行自相关属性。忽略构建控制图中的自相关结构导致控制运行长度减小,并且误报增加。在本文中,我们基于修改的Elman神经网络功能来克服此问题的新方法。此外,代替反向传播,模拟退火被建议作为能够在全局搜索的替代训练技术,并且为了生成随机AR向量,我们基于ARTA算法开发另一个人工神经网络。我们提出了一种模拟实验,并将提出方法与多属性过程的其他控制方法进行了比较。模拟研究的结果是令人鼓舞的。

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