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Online process monitoring using multiscale principal component analysis

机译:使用多尺度主成分分析的在线过程监控

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Fault detection and identification are challenging tasks in chemical processes, the aim of which is to decide out of control samples and find faulty sensors timely and effectively. Process data from chemical processes are highly correlated and generally have multiscale features. Multiscale process monitoring techniques based on wavelets have been regarded as powerful tools because these can efficiently separate deterministic and stochastic features. An online multiscale fault detection approach using principal component analysis (PCA) is proposed in this paper by introducing a moving window into traditional wavelet transform. Various windows in wavelet decomposition are used to determine the appropriate window size for model development. The results demonstrate that the approximation and the highest detail functions are adequate to detect the fault. The proposed approach performance is validated using simulated data from a continuously stirred tank reactor (CSTR) system. The proposed method shows a substantial improvement over conventional PCA and multiscale PCA.
机译:故障检测和识别是化学过程中的挑战性任务,其目的是决定控制样品并及时且有效地发现故障传感器。来自化学过程的过程数据高度相关,并且通常具有多尺度特征。基于小波的多尺度过程监控技术被视为强大的工具,因为这些工具可以有效地分离确定性和随机特征。在本文中提出了使用主成分分析(PCA)的在线多尺度故障检测方法通过将移动窗口引入传统小波变换。小波分解中的各种窗口用于确定模型开发的适当窗口大小。结果表明,近似和最高细节功能是足以检测故障的。使用来自连续搅拌的罐式反应器(CSTR)系统的模拟数据验证所提出的方法性能。所提出的方法显示出对传统PCA和多尺度PCA的显着改进。

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