DocumentCode :
1168896
Title :
Inferential Sensing and Monitoring for Feedwater Flowrate in Pressurized Water Reactors
Author :
Na, Man Gyun ; Hwang, In Joon ; Lee, Yoon Joon
Author_Institution :
Dept. of Nucl. Eng., Chosun Univ., Gwangju
Volume :
53
Issue :
4
fYear :
2006
Firstpage :
2335
Lastpage :
2342
Abstract :
The feedwater flowrate that is measured by Venturi flow meters in most pressurized water reactors can be overmeasured because of the fouling phenomena that make corrosion products accumulate in the Venturi meters. Therefore, in this paper, support vector machines combined with a sequential probability ratio test are used in order to accurately estimate online the feedwater flowrate, and also to monitor the status of the existing hardware sensors. Also, the data for training the support vector machines are selected by using a subtractive clustering scheme to select informative data from among all acquired data. The proposed inferential sensing and monitoring algorithm is verified by using the acquired real plant data of Yonggwang Nuclear Power Plant Unit 3. In the simulations, since the root mean squared error and the relative maximum error are so small and the proposed method early detects the degradation of an existing hardware sensor, it can be applied successfully to validate and monitor the existing hardware feedwater flow meters
Keywords :
fission reactor cooling; genetic algorithms; learning (artificial intelligence); nuclear engineering computing; pattern clustering; probability; statistical testing; support vector machines; Venturi flow meters; Yonggwang Nuclear Power Plant Unit 3; corrosion products; feedwater flowrate; fouling phenomena; genetic algorithm; hardware sensors; inferential sensing; monitoring algorithm; pressurized water reactors; relative maximum error; root mean squared error; sequential probability ratio test; subtractive clustering scheme; support vector machines; Clustering algorithms; Condition monitoring; Corrosion; Fluid flow measurement; Hardware; Inductors; Power generation; Sensor phenomena and characterization; Sequential analysis; Support vector machines; Feedwater flowrate measurement; genetic algorithm; inferential sensing; sequential probability ratio test; subtractive clustering; support vector machines;
fLanguage :
English
Journal_Title :
Nuclear Science, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9499
Type :
jour
DOI :
10.1109/TNS.2006.878159
Filename :
1684109
Link To Document :
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