随机数据和序列数据的广义概率监测模型

Wanke Yu, Min Wu, Biao Huang, Chengda Lu
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引用次数: 15

摘要

近几十年来,许多多元统计分析方法及其相应的概率分析方法被用于建立过程监测模型。然而,它们之间深刻的联系却很少被研究。本文建立了一个包含随机和序列数据的广义概率监测模型。由于GPMM在特定的限制条件下可以简化为各种概率线性模型,因此采用GPMM来分析不同监测方法之间的联系。利用期望最大化算法对随机和顺序两种情况下的GPMM参数进行了估计。根据获得的模型参数,设计了用于监控过程系统不同方面的统计数据。此外,对这些统计量的分布进行了严格的推导和证明,从而计算出相应的控制限。在此基础上,提出了在检测到过程异常时识别故障变量的贡献分析方法。最后,进一步研究了基于经典多变量方法的监测模型与其对应的概率图模型之间的等价性。通过数值算例和田纳西伊士曼(TE)过程验证了本文的结论。实验结果表明,所提出的监测统计量服从其相应的分布,在特定的限制条件下与经典确定性模型中的统计量等效。
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A Generalized Probabilistic Monitoring Model with Both Random and Sequential Data
Many multivariate statistical analysis methods and their corresponding probabilistic counterparts have been adopted to develop process monitoring models in recent decades. However, the insightful connections between them have rarely been studied. In this study, a generalized probabilistic monitoring model (GPMM) is developed with both random and sequential data. Since GPMM can be reduced to various probabilistic linear models under specific restrictions, it is adopted to analyze the connections between different monitoring methods. Using expectation maximization (EM) algorithm, the parameters of GPMM are estimated for both random and sequential cases. Based on the obtained model parameters, statistics are designed for monitoring different aspects of the process system. Besides, the distributions of these statistics are rigorously derived and proved, so that the control limits can be calculated accordingly. After that, contribution analysis methods are presented for identifying faulty variables once the process anomalies are detected. Finally, the equivalence between monitoring models based on classical multivariate methods and their corresponding probabilistic graphic models is further investigated. The conclusions of this study are verified using a numerical example and the Tennessee Eastman (TE) process. Experimental results illustrate that the proposed monitoring statistics are subject to their corresponding distributions, and they are equivalent to statistics in classical deterministic models under specific restrictions.
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