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Improving Monitoring Performance of On-Line Process Based on PCA Method

机译:基于PCA方法的基于PCA方法的在线过程的监测性能

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Principal component analysis (PCA) is very suitable for complex process monitoring and diagnosis, but it suffers many limitations such as great calculation load, poor real-time performance and lacking of on-line monitoring. Here, this paper presents a new method for multi-variable statistical process monitoring. Based on this new method, the principal component monitoring model can be generated in the principal component subspace, and the error monitoring model can be set up in the residual subspace. The method provides a human-machine monitoring interface and related fault-diagnosis interface for integrating Principal/Error/Multi-variable. This will change the real-time data of the multi-variable into the monitoring information of an integrated process, and present them effectively to the operators. With this method, on-line monitoring system was designed for the distillation process as an example, and the effectiveness of this method was illustrated.
机译:主成分分析(PCA)非常适合复杂的过程监测和诊断,但它存在许多限制,如大量计算负荷,较差的实时性能和缺乏在线监控。这里,本文提出了一种用于多变量统计过程监控的新方法。基于此新方法,可以在主成分子空间中生成主成分监视模型,并且可以在残余子空间中设置错误监控模型。该方法提供了一种用于集成主/错误/多变量的人机监控接口和相关的故障诊断界面。这将使多变量的实时数据更改为集成过程的监视信息,并有效地呈现给运营商。利用这种方法,设计用于蒸馏过程的在线监测系统,示出了该方法的有效性。

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