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Enhanced dynamic data-driven fault detection approach: Application to a two-tank heater system

机译:增强的动态数据驱动的故障检测方法:应用于二槽式加热器系统

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Principal components analysis (PCA) has been intensively studied and used in monitoring industrial systems. However, data generated from chemical processes are usually correlated in time due to process dynamics, which makes the fault detection based on PCA approach a challenging task. Accounting for the dynamic nature of data can also reflect the performance of the designed fault detection approaches. In PCA-based methods, this dynamic characteristic of the data can be accounted for by using dynamic PCA (DPCA), in which lagged variables are used in the PCA model to capture the time evolution of the process. This paper presents a new approach that combines the DPCA to account for autocorrelation in data and generalized likelihood ratio (GLR) test to detect faults. A DPCA model is applied to perform dimension reduction while appropriately considering the temporal relationships in the data. Specifically, the proposed approach uses the DPCA to generate residuals, and then apply GLR test to reveal any abnormality. The performances of the proposed method are evaluated through a continuous stirred tank heater system.
机译:主成分分析(PCA)已被深入研究并用于监视工业系统。然而,由于过程动力学的原因,从化学过程中产生的数据通常在时间上是相关的,这使得基于PCA的故障检测成为一项艰巨的任务。考虑数据的动态性质也可以反映所设计的故障检测方法的性能。在基于PCA的方法中,可以通过使用动态PCA(DPCA)来解决数据的动态特性,其中在PCA模型中使用了滞后变量来捕获过程的时间演变。本文提出了一种新方法,该方法结合了DPCA来考虑数据中的自相关性和广义似然比(GLR)测试以检测故障。应用DPCA模型执行降维,同时适当考虑数据中的时间关系。具体而言,所提出的方法使用DPCA生成残差,然后应用GLR测试来揭示任何异常。通过连续搅拌釜式加热器系统评估了所提出方法的性能。

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