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Canonical Variate Analysis Based Regression for Monitoring of Process Correlation Structure

机译:基于典型变量分析的回归来监控过程相关结构

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In the process of practical application, it is found that the typical method of process monitoring using the process data covariance matrix cannot effectively monitor the changes of the underlying structure of the system. In order to accurately detect and identify the faults caused by process structure changes, a state-space model based on canonical variable analysis (CVA) is proposed in this paper, which has good performance on the representation of process dynamics and the properties of global identifiability. In addition, our approach not only has a strong ability to capture potential connection configuration information, but also greatly simplifies and improves fault monitoring performance because it is more sensitive to fault monitoring in the regression subspace of unrelated variables (acquired CVA status) Is orthogonal). Applying the method proposed in this paper to the simulation study of the four-tank system, the effectiveness of detecting and identifying structural changes is proved by multiple faults.
机译:在实际应用过程中,发现使用过程数据协方差矩阵进行过程监视的典型方法不能有效地监视系统底层结构的变化。为了准确地检测和识别过程结构变化引起的故障,提出了一种基于规范变量分析(CVA)的状态空间模型,该模型在过程动力学表示和全局可识别性方面具有良好的表现。 。另外,我们的方法不仅具有强大的捕获潜在连接配置信息的能力,而且还大大简化和提高了故障监视性能,因为它对无关变量的回归子空间中的故障监视更加敏感(获取的CVA状态为正交)。 。将本文提出的方法应用于四罐系统的仿真研究中,通过多个故障证明了结构变化的检测和识别效果。

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