Title of article :
Using a multi-state recurrent neural network to optimize loading patterns in BWRs
Author/Authors :
Juan Jose Ortiz، نويسنده , , Ignacio Requena، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2004
Pages :
15
From page :
789
To page :
803
Abstract :
A Multi-State Recurrent Neural Network is used to optimize Loading Patterns (LP) in BWRs. We have proposed an energy function that depends on fuel assembly positions and their nuclear cross sections to carry out optimisation. Multi-State Recurrent Neural Networks creates LPs that satisfy the Radial Power Peaking Factor and maximize the effective multiplication factor at the Beginning of the Cycle, and also satisfy the Minimum Critical Power Ratio and Maximum Linear Heat Generation Rate at the End of the Cycle, thereby maximizing the effective multiplication factor. In order to evaluate the LPs, we have used a trained back-propagation neural network to predict the parameter values, instead of using a reactor core simulator, which saved considerable computation time in the search process. We applied this method to find optimal LPs for five cycles of Laguna Verde Nuclear Power Plant (LVNPP) in Mexico.
Keywords :
Loading patterns , Nuclear BWRs , Neural networks , Multi-state recurrent neural network
Journal title :
Annals of Nuclear Energy
Serial Year :
2004
Journal title :
Annals of Nuclear Energy
Record number :
405913
Link To Document :
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