Title of article :
OPTIMUM NUMBERS OF SINGLE NETWORK FOR COMBINATION IN MULTIPLE NEURAL NETWORKS MODELING APPROACH FOR MODELING NONLINEAR SYSTEM
Author/Authors :
RABIATUL ADAWIYAH, M.N. Universiti Sains Malaysia, Engineering Campus - Faculty of Chemical Engineering, Malaysia , ZAINAL, A. Universiti Sains Malaysia, Engineering Campus - Faculty of Chemical Engineering, Malaysia
Abstract :
This paper is focused on finding the optimum number of single networks in multiple neural networks combination to improve neural network model robustness for nonlinear process modeling and control. In order to improve the generalization capability of single neural network based models, combining multiple neural networks is proposed in this paper. By studying the optimum number of network that can be combined in multiple network combination, the researcher can estimate the complexity of the proposed model then obtained the exact number of networks for combination. Simple averaging combination approach is implemented in this paper which is applied to nonlinear process models. It is shown that the optimum number of networks for combination can be obtained hence enhancing the performance of the proposed model.
Keywords :
neural network , multiple neural networks combination , nonlinear process , conic water tank
Journal title :
IIUM Engineering Journal
Journal title :
IIUM Engineering Journal