DocumentCode :
2993960
Title :
Fault Diagnosis of the Blast Furnace Based on the Bayesian Network Model
Author :
Lian, Pan ; Ning, Ning ; Aiping, Chen ; Yaobin, Tong
Author_Institution :
Coll. of Inf. Sci. & Eng., Wuhan Univ. of Sci. & Technol., Wuhan, China
fYear :
2010
fDate :
25-27 June 2010
Firstpage :
990
Lastpage :
993
Abstract :
Blast furnace condition and stable operation for blast furnace is crucial, The production practice shows that only by maintaining the stability of blast furnace condition, could it achieve ´high yield, high quality, low consumption, longevity´, obtain good technical and economic indexes. However, the process of smelting furnace is influenced by many factors, which will definitely cause the fluctuation in furnace condition. Therefore, the operator must be timely to judge change-trend and amplitude at the blast furnace condition, figure out the reasons for changing conditions in smelted induction, and adjust it promptly, only through which could maintain the stable smelted in induction. Due to the different levels of the operators, so the adjustment method is also different. Moreover, it will inevitably result in the fluctuation in furnace condition, for the operators have to face with a lot of operating parameters. Therefore, it is absolutely useful and necessary to summarize the experiences of excellent operators, to make the furnace operation unification and standardization through establishing the model of intelligent diagnosis, to forecast online as well as gives practical guidance in furnace condition. To solve the problem of blast furnace failure mode and effect analysis are unable to quantitative description of the occurrence probability of fault model. This paper puts forward a Bayesian network topology structure based on the FMEA--CFE (Cause Failure Effect)-type Bayesian diagnostic network. On the basis of the relationship between ´failure reason´, ´failure mode´ and ´failure fault´ in FMEA, the diagnostic network topology structure can be confirmed, and the causality and gradation in system fault can be described. So, we can solve the probability of failure mode by adopting Bayesian network fault diagnosis of decision-making techniques. This method will provide theoretical basis for blast furnace fault diagnosis, and through the actual research, the- - validity of this method finally has been verified. It provides effective guidance to the actual production of blast furnace.
Keywords :
Bayes methods; blast furnaces; condition monitoring; decision making; failure analysis; metallurgy; smelting; Bayesian network topology structure; FMEA-CFE-type Bayesian diagnostic network; blast furnace condition; cause failure effect; decision making techniques; failure fault; failure mode; failure mode effect analysis; failure reason; fault diagnosis; smelted induction condition; smelting furnace process; Bayesian methods; Blast furnaces; Fault diagnosis; Materials; Network topology; Bayesian network model; Blast furnace condition; FMEA method; Fault diagnosis;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Electrical and Control Engineering (ICECE), 2010 International Conference on
Conference_Location :
Wuhan
Print_ISBN :
978-1-4244-6880-5
Type :
conf
DOI :
10.1109/iCECE.2010.251
Filename :
5630561
Link To Document :
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