Quality-related locally weighted soft sensing for non-stationary processes by a supervised Bayesian network with latent variables

Zhejiang University Press - Tập 22 - Trang 1234-1246 - 2021
Yuxue Xu1, Yun Wang2, Tianhong Yan1, Yuchen He1, Jun Wang1, De Gu3, Haiping Du4, Weihua Li5
1College of Mechanical and Electrical Engineering, China Jiliang University, Hangzhou, China
2Mechanical and Electrical Engineering Department, Zhejiang Tongji Vocational College of Science and Technology, Hangzhou, China
3Key Laboratory of Advanced Process Control for Light Industry, Ministry of Education, Institute of Automation, Jiangnan University, Wuxi , China
4School of Electrical, Computer and Telecommunications Engineering, University of Wollongong, Wollongong, Australia
5School of Mechanical, Materials, Mechatronic and Biomedical Engineering, University of Wollongong, Wollongong, Australia

Tóm tắt

Soft sensors are widely used to predict quality variables which are usually hard to measure. It is necessary to construct an adaptive model to cope with process non-stationaries. In this study, a novel quality-related locally weighted soft sensing method is designed for non-stationary processes based on a Bayesian network with latent variables. Specifically, a supervised Bayesian network is proposed where quality-oriented latent variables are extracted and further applied to a double-layer similarity measurement algorithm. The proposed soft sensing method tries to find a general approach for non-stationary processes via quality-related information where the concepts of local similarities and window confidence are explained in detail. The performance of the developed method is demonstrated by application to a numerical example and a debutanizer column. It is shown that the proposed method outperforms competitive methods in terms of the accuracy of predicting key quality variables.

Tài liệu tham khảo

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