Title of article :
BWR fuel cycle optimization using neural networks
Author/Authors :
Ortiz-Servin، نويسنده , , Juan José and Castillo، نويسنده , , José Alejandro and Pelta، نويسنده , , David Alejandro Pelta، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Pages :
7
From page :
3729
To page :
3735
Abstract :
In nuclear fuel management activities for BWRs, four combinatorial optimization problems are solved: fuel lattice design, axial fuel bundle design, fuel reload design and control rod patterns design. Traditionally, these problems have been solved in separated ways due to their complexity and the required computational resources. In the specialized literature there are some attempts to solve fuel reloads and control rod patterns design or fuel lattice and axial fuel bundle design in a coupled way. In this paper, the system OCONN to solve all of these problems in a coupled way is shown. This system is based on an artificial recurrent neural network to find the best combination of partial solutions to each problem, in order to maximize a global objective function. The new system works with a fuel lattices’ stock, a fuel reloads’ stock and a control rod patterns’ stock, previously obtained with different heuristic techniques. The system was tested to design an equilibrium cycle with a cycle length of 18 months. Results show that the new system is able to find good combinations. Cycle length is reached and safety parameters are fulfilled.
Journal title :
Nuclear Engineering and Design Eslah
Serial Year :
2011
Journal title :
Nuclear Engineering and Design Eslah
Record number :
1591328
Link To Document :
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