Title of article
Performance improvement of artificial neural networks designed for safety key parameters prediction in nuclear research reactors Original Research Article
Author/Authors
Hakim Mazrou، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2009
Pages
10
From page
1901
To page
1910
Abstract
The present work explores, through a comprehensive sensitivity study, a new methodology to find a suitable artificial neural network architecture which improves its performances capabilities in predicting two significant parameters in safety assessment i.e. the multiplication factor keff and the fuel powers peaks Pmax of the benchmark 10 MW IAEA LEU core research reactor. The performances under consideration were the improvement of network predictions during the validation process and the speed up of computational time during the training phase.
To reach this objective, we took benefit from Neural Network MATLAB Toolbox to carry out a widespread sensitivity study. Consequently, the speed up of several popular algorithms has been assessed during the training process. The comprehensive neural system was subsequently trained on different transfer functions, number of hidden neurons, levels of error and size of generalization corpus.
Thus, using a personal computer with data created from preceding work, the final results obtained for the treated benchmark were improved in both network generalization phase and much more in computational time during the training process in comparison to the results obtained previously
Journal title
Nuclear Engineering and Design Eslah
Serial Year
2009
Journal title
Nuclear Engineering and Design Eslah
Record number
895398
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