Компьютерные исследования и моделирование (Apr 2015)
Algorithm of artificial neural network architecture and training set size configuration within approximation of dynamic object behavior
Abstract
The article presents an approach to configuration of an artificial neural network architecture and a training set size. Configuration is based on parameter minimization with constraints specifying neural network model quality criteria. The algorithm of artificial neural network architecture and training set size configuration is applied to dynamic object artificial neural network approximation.Series of computational experiments were performed. The method is applicable to construction of dynamic object models based on non-linear autocorrelation neural networks.
Keywords