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Chemical processes monitoring based on weighted principal component analysis and its application

机译:基于加权主成分分析的化学过程监测及其应用

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Conventional principal component analysis (PCA)-based methods employ the first several principal components (PCs) which indicate the most variances information of normal observations for process monitoring. Nevertheless, fault information has no definite mapping relationship to a certain PC and useful information might be submerged under the retained PCs. A new version of weighted PCA (WPCA) for process monitoring is proposed to deal with the situation of useful information being submerged and reduce missed detection rates of T~2 statistic. The main idea of WPCA is building conventional PCA model and then using change rate of T~2 statistic along every PC to capture the most useful information in process, and setting different weighting values for PCs to highlight useful information when online monitoring. Case studies on Tennessee Eastman process demonstrate the effectiveness of the proposed scheme and monitoring results are compared with conventional PCA method.
机译:基于常规主成分分析(PCA)的方法采用前几个主成分(PC),它们指示正常观察值的最大差异信息以进行过程监视。但是,故障信息与某个PC没有明确的映射关系,有用的信息可能会淹没在保留的PC下。提出了一种新的用于过程监控的加权PCA(WPCA),以处理有用信息被淹没的情况,并降低T〜2统计信息的漏检率。 WPCA的主要思想是建立传统的PCA模型,然后使用每台PC的T〜2统计变化率来捕获过程中最有用的信息,并为PC设置不同的权重值以在在线监视时突出显示有用的信息。田纳西州伊士曼过程的案例研究证明了该方案的有效性,并将监测结果与常规PCA方法进行了比较。

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