Application of a hybrid method based on the combination of genetic algorithm and Hopfield neural network for burnable poison placement
暂无分享,去创建一个
[1] Saeed Setayeshi,et al. LONSA as a tool for loading pattern optimization for VVER-1000 using synergy of a neural network and simulated annealing , 2008 .
[2] F. Khoshahval,et al. PWR fuel management optimization using continuous particle swarm intelligence , 2010 .
[3] Mengkang Peng,et al. An Investigation into the Improvement of Local Minima of the Hopfield Network , 1996, Neural Networks.
[4] Hiroshi Sekimoto,et al. Multiobjective fuel management optimization for self-fuel-providing LMFBR using genetic algorithms , 1999 .
[5] P. S. Dokopoulos,et al. Network-Constrained Economic Dispatch Using Real-Coded Genetic Algorithm , 2002, IEEE Power Engineering Review.
[6] Jean C. Ragusa,et al. Optimization of PWR fuel assembly radial enrichment and burnable poison location based on adaptive simulated annealing , 2009 .
[7] Kalyanmoy Deb,et al. Multi-objective optimization using evolutionary algorithms , 2001, Wiley-Interscience series in systems and optimization.
[8] J. J. Hopfield,et al. “Neural” computation of decisions in optimization problems , 1985, Biological Cybernetics.
[9] James C. Bean,et al. Genetic Algorithms and Random Keys for Sequencing and Optimization , 1994, INFORMS J. Comput..
[10] Kostadin Ivanov,et al. Application of genetic algorithms to optimize burnable poison placement in pressurized water reactors , 2006 .