Title of article :
Genetic algorithms and artificial neural networks for loading pattern optimisation of advanced gas-cooled reactors
Author/Authors :
A. K. Ziver، نويسنده , , C. C Pain، نويسنده , , J. N. Carter، نويسنده , , C. R. E. de Oliveira، نويسنده , , A. J. H. Goddard، نويسنده , , R. S. Overton، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2004
Abstract :
A non-generational genetic algorithm (GA) has been developed for fuel management optimisation of Advanced Gas-Cooled Reactors, which are operated by British Energy and produce around 20% of the UKʹs electricity requirements. An evolutionary search is coded using the genetic operators; namely selection by tournament, two-point crossover, mutation and random assessment of population for multi-cycle loading pattern (LP) optimisation. A detailed description of the chromosomes in the genetic algorithm coded is presented. Artificial Neural Networks (ANNs) have been constructed and trained to accelerate the GA-based search during the optimisation process. The whole package, called GAOPT, is linked to the reactor analysis code PANTHER, which performs fresh fuel loading, burn-up and power shaping calculations for each reactor cycle by imposing station-specific safety and operational constraints. GAOPT has been verified by performing a number of tests, which are applied to the Hinkley Point B and Hartlepool reactors. The test results giving loading pattern (LP) scenarios obtained from single and multi-cycle optimisation calculations applied to realistic reactor states of the Hartlepool and Hinkley Point B reactors are discussed. The results have shown that the GA/ANN algorithms developed can help the fuel engineer to optimise loading patterns in an efficient and more profitable way than currently available for multi-cycle refuelling of AGRs. Research leading to parallel GAs applied to LP optimisation are outlined, which can be adapted to present day LWR fuel management problems.
Journal title :
Annals of Nuclear Energy
Journal title :
Annals of Nuclear Energy