首页> 外文会议>International Conference on Artificial Intelligence(IC-AI'04) vol.1; 20040621-24; Las Vegas,NV(US) >NEURAL-FUZZY STATISTICAL PROCESS CONTROL (NF-SPC) APPLICATION FOR MANUFACTURING QUALITY MANAGEMENT
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NEURAL-FUZZY STATISTICAL PROCESS CONTROL (NF-SPC) APPLICATION FOR MANUFACTURING QUALITY MANAGEMENT

机译:神经模糊统计过程控制(NF-SPC)在制造质量管理中的应用

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摘要

An alternative approach to the manufacturing process quality control traditional methods, such as X-R charts, is presented in this paper extending the results of S.I Chang and C.A. Aw1. By using both Artificial Neural Networks and Fuzzy Methodology, we have built up a system capable of achieving two fundamental goals regarding process quality control. On one hand, this system immediately detects inadmissible deviation of the mean and the process variability, and on the other hand, it allows to interpret correctly signals that may be misunderstood with the X-R chart. That is the case in certain situations in which however the process is working with the appropriate quality level, measures indicate the contrary.
机译:本文提出了制造过程质量控制传统方法的另一种方法,例如X-R图,扩展了S.I Chang和C.A的结果。 Aw1。通过同时使用人工神经网络和模糊方法,我们建立了一个能够实现有关过程质量控制的两个基本目标的系统。一方面,该系统立即检测出均值和过程变异性的不允许偏差,另一方面,它允许正确解释可能被X-R图误解的信号。在某些情况下就是这种情况,但是过程以适当的质量水平运行,而措施表明情况恰恰相反。

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