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Enhanced monitoring using PCA-based GLR fault detection and multiscale filtering

机译:使用基于PCA的GLR故障检测和多尺度过滤的增强监控

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One of the most popular multivariate statistical methods used for data-based process monitoring is Principal Component Analysis (PCA). In the absence of a process model, PCA has been successfully used as a data-based FD technique for highly correlated process variables. Some of the PCA detection indices include the T2 or Q statistics, which have their advantages and disadvantages. When a process model is available, however, the generalized likelihood ratio (GLR) test, which is a statistical hypothesis testing method, has shown good fault detection abili ties. In this work, a PCA-based GLR fault detection algorithm is developed to exploit the advantages of the GLR test in the absence of a process model. In fact, PCA is used to provide a modeling framework for the develop fault detection algorithm. The PCA-based GLR fault detection algorithm provides optimal properties by maximizing the detection probability of faults for a given false alarm rate. However, the presence of measurement noise and modeling errors increase the rate of false alarms. Therefore, to further improve the quality of fault detection, multiscale filtering is utilized to filter the residuals obtained from the PCA model, which helps suppress the effect on errors, and thus decrease the false alarm rate. The proposed fault detection methodology is demonstrated through its application to monitor the ozone level in the Upper Normandy region, France, and it is shown to effectively reduce the rate of false alarms whilst retaining the capability of detecting process faults.
机译:用于基于数据的流程监视的最受欢迎的多变量统计方法之一是主要成分分析(PCA)。在没有过程模型的情况下,PCA已成功用作基于数据的FD技术,用于高度相关的过程变量。一些PCA检测指标包括T2或Q统计数据,其具有它们的优缺点。然而,当工艺模型可用时,通常是统计假设检测方法的广义似然比(GLR)测试,显示出良好的故障检测Abili Ties。在这项工作中,开发了一种基于PCA的GLR故障检测算法,以利用GLR测试在没有过程模型的情况下的优势。实际上,PCA用于为开发故障检测算法提供建模框架。基于PCA的GLR故障检测算法通过为给定的误报率的故障的检测概率最大化而提供最佳性质。但是,测量噪声和建模误差的存在增加了误报的速率。因此,为了进一步提高故障检测的质量,利用多尺度过滤来过滤从PCA模型获得的残差,这有助于抑制对误差的影响,从而降低误报率。通过其应用证明了所提出的故障检测方法,以监测法国上诺曼底地区的臭氧水平,并且显示在保留检测过程故障的能力时有效地降低误报的速率。

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