Modified genetic algorithm with special phenotypes' selection and crossover operators with default specified rules is proposed in this paper thus refusing the random crossover. The suggested crossover operator enables wide distribution of genes of the best phenotypes over the whole population. During selection and crossover, the best phenotypes of the newest population and additionally the genes of the best individuals of two previous populations are involved. The effectiveness of the modified algorithm is shown numerically on the real-life global optimization problem from civil engineering - the optimal pile placement problem under grillage-type foundations. This problem is a fair indicator for global optimization algorithms since the idea...
On the basis of one engineering non-convex optimization problem – optimization of pile placement sch...
Genetic algorithms (GAs) are stochastic adaptive algorithms whose search method is based on simulati...
Genetic algorithms (GA) are stimulated by population genetics and evolution at the population level ...
Aim of the article is to suggest technology for optimization of pile positions in a grillage-type fo...
The aim of the article is to report a technology for the optimization of grillage-type foundations s...
The aim is to investigate ways of increasing the efficiency of grillage optimization. Following this...
Straipsnyje na grinėjamas rostverkinių pamatų optimizavimas, siekiant kuo mažesnių reaktyvinių jėgų ...
The purpose of the paper is to present technology applied for the global optimization of grillage-ty...
The purpose of the paper is to present technology applied for the global optimization of grillage-ty...
The aim is to investigate ways of increasing the efficiency of grillage optimization. Following this...
The mathematical models and solution algorithms for optimization of grillage-type foundations are pr...
Genetic algorithm (GA) is a popular technique of optimization that is bio-inspired and based on Char...
Crossover is one of the three basic operators in ally genetic algorithm (GA). Several crossover tech...
THESIS 6283Genetic algorithms are optimisation algorithms that mimic the mechanisms of natural selec...
AbstractGenetic algorithm (GA) is a population-based stochastic optimization technique that has two ...
On the basis of one engineering non-convex optimization problem – optimization of pile placement sch...
Genetic algorithms (GAs) are stochastic adaptive algorithms whose search method is based on simulati...
Genetic algorithms (GA) are stimulated by population genetics and evolution at the population level ...
Aim of the article is to suggest technology for optimization of pile positions in a grillage-type fo...
The aim of the article is to report a technology for the optimization of grillage-type foundations s...
The aim is to investigate ways of increasing the efficiency of grillage optimization. Following this...
Straipsnyje na grinėjamas rostverkinių pamatų optimizavimas, siekiant kuo mažesnių reaktyvinių jėgų ...
The purpose of the paper is to present technology applied for the global optimization of grillage-ty...
The purpose of the paper is to present technology applied for the global optimization of grillage-ty...
The aim is to investigate ways of increasing the efficiency of grillage optimization. Following this...
The mathematical models and solution algorithms for optimization of grillage-type foundations are pr...
Genetic algorithm (GA) is a popular technique of optimization that is bio-inspired and based on Char...
Crossover is one of the three basic operators in ally genetic algorithm (GA). Several crossover tech...
THESIS 6283Genetic algorithms are optimisation algorithms that mimic the mechanisms of natural selec...
AbstractGenetic algorithm (GA) is a population-based stochastic optimization technique that has two ...
On the basis of one engineering non-convex optimization problem – optimization of pile placement sch...
Genetic algorithms (GAs) are stochastic adaptive algorithms whose search method is based on simulati...
Genetic algorithms (GA) are stimulated by population genetics and evolution at the population level ...