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On-line Diagnosis System with Learning Bayesian Networks for fsEBPR
Author(s) -
Seong-Pyo Cheon,
Sungshin Kim
Publication year - 2007
Publication title -
international journal of fuzzy logic and intelligent systems
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.296
H-Index - 9
eISSN - 2093-744X
pISSN - 1598-2645
DOI - 10.5391/ijfis.2007.7.4.279
Subject(s) - patrolling , computer science , bayesian network , process (computing) , artificial intelligence , machine learning , line (geometry) , bayesian probability , operator (biology) , mathematics , biochemistry , chemistry , geometry , repressor , political science , transcription factor , law , gene , operating system
Nowadays, due to development of automatic control devices and various sensors, one operator can freely handle several remote plants and processes. Automatic diagnosis and warning systems have been adopted in various fields, in order to prepare an operator’s absence for patrolling plants. In this paper, a Bayesian networks based on-line diagnosis system is proposed for a wastewater treatment process. Especially, the suggested system is included learning structure, which can continuosly update conditional probabilities in the networks. To evaluate performance of proposed model, we made a lab-scale five-stage step-feed enhanced biological phosphorous removal process plant and applied on-line diagnosis system to this plant in the summer.

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