Title of article
Compactly supported radial basis functions for adaptive process control
Author/Authors
Martin Pottmann and Michael A. Henson، نويسنده ,
Pages
12
From page
345
To page
356
Abstract
An adaptive nonlinear control strategy based on networks of compactly supported radial basis functions is
proposed. The local influence of the basis functions allows efficient on-line adaptation that is performed
using a gradient law, and new basis functions are added to the network only when new regions in state
space are encountered and the prediction error exceeds a pre-specified tolerance. The approximate model is
used to construct an input-output linearizing control law. The adaptive control strategy is applied to a
nonlinear chemical reactor model.
Keywords
radial basisfunctions , Adaptive control , nonlinear control , Artificial neural networks , Nonlinear identification
Journal title
Astroparticle Physics
Record number
401044
Link To Document