Author : Gregor Gregorcic
Release : 2004
Genre : Nonlinear systems
Kind : eBook
Book Rating : /5 ( reviews)
Book Synopsis Data-based Modelling of Nonlinear Systems for Control by : Gregor Gregorcic
Download or read book Data-based Modelling of Nonlinear Systems for Control written by Gregor Gregorcic. This book was released on 2004. Available in PDF, EPUB and Kindle. Book excerpt: This work presented here, investigates in depth the techniques for modelling of unknown nonlinear dynamic systems from their observed input-output behaviour. The research focuses on the type of models which can be applied to model-based nonlinear control strategies. Local model networks are discussed and compared with radical basis networks and Takagi-Sugeno fuzzy models. Issues such as the importance of the choice of the scheduling variable, the problem of off-equilibrium dynamics and the cruse of dimensionality are addressed. A discussion about the difference between interpolation techniques between local models is given. The model based nonlinear control strategies based on the local models network are presented and compared with pole-placement adaptive control. The Gaussian process prior approach as a nonparametric Bayesian alternative to modelling of the nonlinear systems from data is presented. The advantage of the availability of measure of model uncertainty is explained. It is shown how the Gaussian process model relates to parametrical models and particular to the radial basis function network. The nonlinear internal model control structure was extended by utilising the Gaussian process model, where the uncertainty of the model was incorporated into the numerical inversion algorithm to help improve the closed-loop performance. A novel modelling technique combining the advantages of local model networks and Gaussian processes was developed. A linear Gaussian process model as a building block of a local linear Gaussian process model network was proposed. A structure identification procedure was provided and a structure optimisation algorithm, utilising a minimisation of the network uncertainty was developed. A variety of case studies are provided to support the work presented here. The continuous stirred tank reactor was used to demonstrate the application of local model networks. Two nonlinear systems were modelled from real data. First a hydraulic position system was modelled using the Gaussian process technique and then a nonlinear model of a laboratory-scale process rig was identified using the local linear Gaussian process network modelling approach.