Nonlinear system identification using memetic differential evolution trained neural networks (original) (raw)
Related papers
Memetic Differential Evolution Trained Neural Networks For Nonlinear System Identification
International Conference on Industrial and Information Systems, 2008
Several gradient-based approaches such as back-propagation, conjugate gradient and Levenberg Marquardt (LM) methods have been developed for training the neural network (NN) based systems. Still, in some situations, like multimodal cost function, these procedures may lead to some local minima, therefore, the evolutionary algorithms (EAs) based procedures were considered as a promising alternative. In this paper we focus on a
Nonlinear System Identification Using Neural Network
Springer-Verlag Berlin Heidelberg, 2012
Magneto-rheological damper is a nonlinear system. In this case study, system has been identified using Neural Network tool. Optimization between number of neurons in the hidden layer and number of epochs has been achieved and discussed by using multilayer perceptron Neural Network.
Loading Preview
Sorry, preview is currently unavailable. You can download the paper by clicking the button above.