Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
5474996 | Annals of Nuclear Energy | 2017 | 6 Pages |
Abstract
Nuclear reactor cores should be maintained within various safety limits such as the local power density (LPD). Therefore, a detailed three-dimensional core power distribution monitoring is required during reactor operation. In addition, LPD must be predicted to prevent nuclear fuel melting. In this study, the most important parameter related to LPD-the power peaking factor-was predicted. A cascaded fuzzy neural network (CFNN) methodology was utilized to predict the power peaking factor in the reactor core. A CFNN model was developed using the numerical simulation data of the optimized power reactor 1000 and its performance was analyzed. Additionally, its uncertainty analysis was conducted to determine the prediction accuracy of the CFNN model. The prediction intervals were found to be pretty narrow, which confirms that the predicted value is reliable. The accuracy of the proposed CFNN model proves to be able to assist nuclear reactor operators in monitoring the power peaking factor.
Related Topics
Physical Sciences and Engineering
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Energy Engineering and Power Technology
Authors
Ju Hyun Back, Kwae Hwan Yoo, Geon Pil Choi, Man Gyun Na, Dong Yeong Kim,