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Integration of Multivariate Control Charts and Neural Networks to Determine the Faults of Quality Characteristic(s) in a Multivariate Process

机译:集成多元控制图和神经网络以确定多元过程中质量特征的故障

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Because of advanced technology, there are many aspects of quality characteristics in a product. Typical univariate statistical process control (SPC) charts may not be suitable for monitoring processes that have multiple quality characteristics. As a consequence, the multivariate control charts are developed to simultaneously monitor multiple quality characteristics of a process. Like the function of a univariate SPC chart, the process is hypothesized to be out of control when a signal is triggered by a multivariate SPC chart. The problem is that, it is difficult to interpret the signal for a multivariate SPC chart due to the multiple quality characteristics of a process That is, which quality characteristic(s) is (are) attributed to this out-of-control signal. If the characteristic(s) that is (are) at fault can be quickly and correctly determined, the corresponding remedial actions can be taken to tune the process in time. Therefore, this identification is a very important issue for industry processes.
机译:由于先进的技术,产品的质量特性有很多方面。典型的单变量统计过程控制(SPC)图可能不适合监视具有多个质量特征的过程。结果,开发了多元控制图以同时监视过程的多个质量特征。像单变量SPC图表的功能一样,假设当信号由多变量SPC图表触发时,该过程将失去控制。问题在于,由于过程的多个质量特征,很难为多变量SPC图解释信号,也就是说,哪个质量特征归因于该失控信号。如果可以快速且正确地确定出故障的特征,则可以采取相应的补救措施来及时调整过程。因此,对于行业流程而言,这种识别是一个非常重要的问题。

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