期刊
JOURNAL OF PROCESS CONTROL
卷 110, 期 -, 页码 84-98出版社
ELSEVIER SCI LTD
DOI: 10.1016/j.jprocont.2021.12.011
关键词
Cyclic loop; Bayesian network; Root cause diagnosis; Transfer entropy
资金
- Artie McFerrin Department of Chemical Engineering
- Texas A&M Energy Institute
- Mary Kay O'Connor Process Safety Center
This paper proposes a modified Bayesian network (mBN) approach to improve the accuracy of root cause diagnosis in chemical processes. By identifying the weakest causal relation of cyclic loops and converting it into a temporal relation, the mBN is able to handle cyclic loops and provide an improved causal network structure.
In chemical processes, root cause diagnosis of process faults is highly crucial for efficient troubleshooting, since if poorly managed, process faults can lead to high-consequence rare events. For this purpose, Bayesian-based probabilistic models have been widely used because of their capability to capture causality in processes and perform root cause diagnosis. However, due to the acyclic nature of Bayesian networks, the existing probabilistic models do not account for presence of cyclic loops that are prevalent in chemical processes because of various control loops and coupling of process variables. Consequently, unaccountability of a high number of cyclic loops results in inaccurate root cause diagnosis. To improve the accuracy of root cause diagnosis, a modified Bayesian network (mBN) is proposed in this work that accounts for cyclic loops. Specifically, the mBN first identifies the weakest causal relation of a cyclic loop, and then converts it into a temporal relation. Because of this conversion, the mBN decomposes the cyclic network into an acyclic one over time horizon, thereby handling cyclic loops. Accounting for cyclic loops provides an improved structure of the causal network that aids in identifying correct causality. Finally, the performance of the proposed methodology is demonstrated through a case study of Tennessee Eastman process.
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