Peer-Reviewed Journal Details
Mandatory Fields
Gregorcic, Gregor and Lightbody, Gordon;
2008
October
Engineering Applications of Artificial Intelligence
Nonlinear system identification: From multiple-model networks to Gaussian processes
Validated
Optional Fields
21
7
1035
1055
Neural networks have been widely used to model nonlinear systems for control. The curse of dimensionality and lack of transparency of such neural network models has forced a shift towards local model networks and recently towards the nonparametric Gaussian processes approach. Assuming common validity functions, all of these models have a similar structure. This paper examines the evolution from the radial basis function network to the local model network and finally to the Gaussian process model. A simulated example is used to explain the advantages and disadvantages of each structure. (C) 2007 Elsevier Ltd. All rights reserved.
10.1016/j.engappai.2007.11.004
Grant Details