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http://dx.doi.org/10.5516/NET.2010.42.2.219

PRINCIPAL COMPONENTS BASED SUPPORT VECTOR REGRESSION MODEL FOR ON-LINE INSTRUMENT CALIBRATION MONITORING IN NPPS  

Seo, In-Yong (Transmission and Distribution Laboratory, KEPCO Research Institute)
Ha, Bok-Nam (Transmission and Distribution Laboratory, KEPCO Research Institute)
Lee, Sung-Woo (Transmission and Distribution Laboratory, KEPCO Research Institute)
Shin, Chang-Hoon (Transmission and Distribution Laboratory, KEPCO Research Institute)
Kim, Seong-Jun (Department of Industrial Engineering, Kangnung National University)
Publication Information
Nuclear Engineering and Technology / v.42, no.2, 2010 , pp. 219-230 More about this Journal
Abstract
In nuclear power plants (NPPs), periodic sensor calibrations are required to assure that sensors are operating correctly. By checking the sensor's operating status at every fuel outage, faulty sensors may remain undetected for periods of up to 24 months. Moreover, typically, only a few faulty sensors are found to be calibrated. For the safe operation of NPP and the reduction of unnecessary calibration, on-line instrument calibration monitoring is needed. In this study, principal component-based auto-associative support vector regression (PCSVR) using response surface methodology (RSM) is proposed for the sensor signal validation of NPPs. This paper describes the design of a PCSVR-based sensor validation system for a power generation system. RSM is employed to determine the optimal values of SVR hyperparameters and is compared to the genetic algorithm (GA). The proposed PCSVR model is confirmed with the actual plant data of Kori Nuclear Power Plant Unit 3 and is compared with the Auto-Associative support vector regression (AASVR) and the auto-associative neural network (AANN) model. The auto-sensitivity of AASVR is improved by around six times by using a PCA, resulting in good detection of sensor drift. Compared to AANN, accuracy and cross-sensitivity are better while the auto-sensitivity is almost the same. Meanwhile, the proposed RSM for the optimization of the PCSVR algorithm performs even better in terms of accuracy, auto-sensitivity, and averaged maximum error, except in averaged RMS error, and this method is much more time efficient compared to the conventional GA method.
Keywords
Support Vector Regression; On-line Calibration Monitoring; Principal Component; Response Surface Methodology;
Citations & Related Records
Times Cited By KSCI : 1  (Citation Analysis)
Times Cited By Web Of Science : 1  (Related Records In Web of Science)
Times Cited By SCOPUS : 4
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