In-core refueling optimization for a nuclear reactor
Corressponding author's email:
binhqd@hcmute.edu.vnKeywords:
Nuclear reactor, Reactor calculation, Refueling optimization, Refueling pattern, Genetic algorithm, Elitism strategyAbstract
This paper presents results from the problem of in-core refueling optimization for a nuclear research reactor. The aim of the optimization problem is to maximize the effective multiplication factor while satisfying the safety-related neutron parameters of the reactor. A genetic algorithm combined with the elitism strategy is used to solve the problem. The genetic algorithm works on the populations of chromosomes which are one-dimensional integer chromosomes. An investigation is performed for a nuclear research reactor type TRIGA MARK II to search for the optimal fuel loading patterns for its second operational cycle. Global reactor calculation is carried out using the nuclear reactor core analysis code CITATION
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