Год издания: 2017
Идентификатор DOI: 10.1109/ICIEAM.2016.7911573
Ключевые слова: genetic algorithm, modelling, neural networks, optimization, parallelization, Genetic algorithms, Global optimization, Manufacture, Models, Computing performance, Global optimization algorithm, Neural networks model, Neural networks structure, Parallel genetic algorithms, Parallelization techniques, Parallelizations, Parametric synthesis
Аннотация: The parallel genetic algorithms implementation for neural networks models construction is discussed. The modification of this global optimization algorithm is proposed. The artificial neural networks are effective instrument to solve most problems of technological objectives and processes modelling. The article describes the aspectПоказать полностьюs of genetic algorithms implementation for neural networks structure-parametric synthesis. It is offered to use different parallelization technique of genetic algorithm to increase computing performance. It is proposed to modify the standard multipopular parallel genetic algorithm adding its base topology dynamic adaptation. This approach enables an effective algorithm with a minimal computational difficulty. The algorithm modification shows best results, when implemented in computer network. © 2016 IEEE.
Журнал: 2016 2nd International Conference on Industrial Engineering, Applications and Manufacturing, ICIEAM 2016 - Proceedings