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A non-Gaussian pattern matching based dynamic process monitoring approach and its application to cryogenic air separation process

机译:基于非高斯模式匹配的动态过程监测方法及其在低温空分过程中的应用

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摘要

Principal component analysis (PCA) based pattern matching methods have been applied to process monitoring and fault detection. However, the conventional pattern matching approaches do not specifically take into account the non-Gaussian dynamic features in chemical processes. Furthermore, those techniques are more focused on fault detection instead of fault diagnosis. In this study, a non-Gaussian pattern matching based fault detection and diagnosis method is developed and applied to monitor cryogenic air separation process. First, independent component analysts (ICA) models are built on the normal benchmark and monitored data sets along sliding windows. The IC subspaces from the benchmark and monitored data are then extracted to evaluate the non-Gaussian patterns and detect process faults through a mutual information based dissimilarity index. Further, a difference subspace between the two IC subspaces is computed to characterize the divergence of the dynamic and non-Gaussian patterns between the benchmark and monitored data. Subsequently, the mutual information between the IC difference subspace and each process variable direction is defined as a new non-Gaussian contribution index for fault identification and diagnosis. The presented approach is applied to a simulated cryogenic air separation plant and the monitoring results are compared against those of PCA based pattern matching techniques and ICA based monitoring method. The application study demonstrates that the developed non-Gaussian pattern matching approach can effectively monitor the complex air separation process with superior fault detection and diagnosis capability.
机译:基于主成分分析(PCA)的模式匹配方法已应用于过程监控和故障检测。但是,传统的模式匹配方法没有专门考虑化学过程中的非高斯动态特征。此外,那些技术更专注于故障检测而不是故障诊断。本文研究了一种基于非高斯模式匹配的故障检测与诊断方法,并将其应用于低温空分过程的监测。首先,独立组件分析器(ICA)模型建立在正常基准和沿滑动窗口监视的数据集的基础上。然后,从基准数据和监视数据中提取IC子空间,以评估非高斯模式,并通过基于互信息的相异指数来检测过程故障。此外,计算两个IC子空间之间的差异子空间,以表征基准数据和监视数据之间动态和非高斯模式的差异。随后,将IC差异子空间与每个过程变量方向之间的互信息定义为用于故障识别和诊断的新的非高斯贡献指数。所提出的方法被应用于模拟低温空气分离设备,并将监测结果与基于PCA的模式匹配技术和基于ICA的监测方法进行比较。应用研究表明,所开发的非高斯模式匹配方法可以有效地监测复杂的空分过程,具有出色的故障检测和诊断能力。

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