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Monitoring nonlinear and non-Gaussian processes using Gaussian mixture model based weighted kernel independent component analysis

机译:使用基于加权核的独立分量分析的高斯混合模型监测非线性和非高斯过程

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摘要

A kernel independent component analysis (KICA) is widely regarded as an effective approach for nonlinear and non-Gaussian process monitoring. However, the KICA-based monitoring methods treat every KIC equally and cannot highlight the useful KICs associated with fault information. Consequently, fault information may not be explored effectively, which may result in degraded fault detection performance. To overcome this problem, we propose a new nonlinear and non-Gaussian process monitoring method using Gaussian mixture model (GMM)-based weighted KICA (WKICA). In particular, in WKICA, GMM is first adopted to estimate the probabilities of the KICs extracted by KICA. The significant KICs embodying the dominant process variation are then discriminated based on the estimated probabilities and assigned with larger weights to capture the significant information during online fault detection. A nonlinear contribution plots method is also developed based on the idea of a sensitivity analysis to help identifying the fault variables after a fault is detected. Simulation studies conducted on a simple four-variable nonlinear system and the Tennessee Eastman benchmark process demonstrate the superiority of the proposed method over the conventional KICA-based method.
机译:内核独立组件分析(KICA)被广泛认为是非线性和非高斯过程监控的有效方法。但是,基于KICA的监视方法会同等对待每个KIC,并且无法突出显示与故障信息关联的有用KIC。因此,可能无法有效地探索故障信息,这可能会导致故障检测性能下降。为了克服这个问题,我们提出了一种新的基于高斯混合模型(GMM)的加权KICA(WKICA)的非线性和非高斯过程监控方法。特别是在WKICA中,首先采用GMM来估计由KICA提取的KIC的概率。然后,基于估计的概率来区分体现主要过程变化的重要KIC,并为其分配较大的权重,以在在线故障检测期间捕获重要信息。还基于敏感性分析的思想开发了非线性贡献图方法,以帮助在检测到故障后识别故障变量。在简单的四变量非线性系统和田纳西伊士曼基准过程上进行的仿真研究表明,该方法优于传统的基于KICA的方法。

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