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A process monitoring method based on noisy independent component analysis

机译:基于噪声独立分量分析的过程监控方法

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摘要

Independent component analysis (ICA) is an effective feature extraction tool for process monitoring. However, the conventional ICA-based process monitoring methods usually adopt noise-free ICA models and thus may perform unsatisfactorily under the adverse effects of the measurement noise. In this paper, a process monitoring method using a new noisy independent component analysis, referred to as NoisyICAn, is proposed. Using the noisy ICA model which considers the measurement noise explicitly, a NoisyICAn algorithm is developed to estimate the mixing matrix by setting up a series of the fourth-order cumulant matrices of the measured data and performing the joint diagonalization of these matrices. The kurtosis relationships of the independent components and measured variables are subsequently obtained based on the estimated mixing matrix, for recursively estimating the kurtosis of independent components. Two monitoring statistics are then built to detect process faults using the obtained recursive estimate of the independent components' kurtosis. The simulation studies are carried out on a simple three-variable system and a continuous stirred tank reactor system, and the results obtained demonstrate that the proposed NoisyICAn-based monitoring method outperforms the conventional noise-free ICA-based monitoring methods as well as the benchmark monitoring methods based on the existing noisy ICA schemes adopted from blind source separation, in terms of the fault detection time and local fault detection rate.
机译:独立组件分析(ICA)是用于过程监控的有效特征提取工具。但是,传统的基于ICA的过程监视方法通常采用无噪声ICA模型,因此在测量噪声的不利影响下可能无法令人满意地执行。本文提出了一种使用新的噪声独立分量分析的过程监控方法,称为NoisyICAn。使用明确考虑测量噪声的嘈杂ICA模型,通过建立一系列测量数据的四阶累积量矩阵并对这些矩阵进行联合对角化,开发了NoisyICAn算法来估计混合矩阵。随后基于估计的混合矩阵获得独立分量和测量变量的峰度关系,以递归地估计独立分量的峰度。然后,使用获得的独立组件峰度的递归估计,构建两个监视统计信息以检测过程故障。在简单的三变量系统和连续搅拌釜反应器系统上进行了仿真研究,获得的结果表明,基于NoisyICAn的监测方法优于常规的基于无噪声ICA的监测方法和基准在故障检测时间和局部故障检测率方面,基于从盲源分离中采用的现有噪声ICA方案的监视方法。

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