Modelling the nonlinear dynamic behaviour of a boiler‐turbine system using a radial basis function neural network

A Kouadri, A Namoun, M Zelmat - International Journal of …, 2014 - Wiley Online Library
A Kouadri, A Namoun, M Zelmat
International Journal of robust and nonlinear Control, 2014Wiley Online Library
Building an appropriate mathematical model that describes the system behaviour with a
certain degree of satisfaction is quite challenging owing to the uncertain and volatile nature
of thermodynamic constants and geometric parameters. In this paper, we present a
technique to approximate and validate the dynamic behaviour of the Aström–Bell boiler‐
turbine power plant based on an RBFNN over a large operating range. The proposed
RBFNN is applied to solve the parametric identification problem for nonlinear and complex …
Summary
Building an appropriate mathematical model that describes the system behaviour with a certain degree of satisfaction is quite challenging owing to the uncertain and volatile nature of thermodynamic constants and geometric parameters. In this paper, we present a technique to approximate and validate the dynamic behaviour of the Aström–Bell boiler‐turbine power plant based on an RBFNN over a large operating range. The proposed RBFNN is applied to solve the parametric identification problem for nonlinear and complex systems using an optimiser based on a hybrid genetic algorithm. This optimiser is composed of the gradient descent optimiser and a genetic algorithm for fast convergence. Two simulations were performed to show the effectiveness of the proposed technique under different situations with several boiler‐turbine input variables. The optimal structure and parameters of the obtained RBFNN‐based model emulates well the dynamic behaviour of the Aström–Bell boiler‐turbine system. Copyright © 2013 John Wiley & Sons, Ltd.
Wiley Online Library
以上显示的是最相近的搜索结果。 查看全部搜索结果