Title :
Model design and data analysis for multi-input multi-output systems
Author :
Nakazawa, Dante ; Trunov, Alexander
Author_Institution :
Intelligent Opt. Syst., Torrance, CA, USA
fDate :
30 Sept.-4 Oct. 2003
Abstract :
The design of multivariable control systems requires identification of the effects of individual inputs on each of the outputs. In many complex systems whose behavior is described by a large set of partial differential equations, the solution cannot be implemented in real time. We present an overview of several linear and nonlinear approximators: least squares, principle component regression, partial least squares, and artificial neural networks with sigmoidal and radial basis activation functions, that can be used to determine input-output relations. Connectivity methods are developed to facilitate data reduction and to determine significant input-output dependence. Comparison of the predictive abilities of these approximators and their performance is conducted using the data obtained from the DIII-D plasma fusion experiment.
Keywords :
MIMO systems; control system analysis computing; least squares approximations; multivariable control systems; principal component analysis; radial basis function networks; regression analysis; DIII-D plasma fusion experiment; artificial neural networks; data analysis; least square approximators; model design; multi-input multi-output systems; multiinput systems; multioutput systems; multivariable control systems; partial differential equations; principle component regression; radial basis activation functions; sigmoidal functions; Control system synthesis; Data analysis; Least squares approximation; Plasma density; Plasma measurements; Plasma properties; Plasma stability; Real time systems; Shape control; Tokamaks;
Conference_Titel :
Integration of Knowledge Intensive Multi-Agent Systems, 2003. International Conference on
Print_ISBN :
0-7803-7958-6
DOI :
10.1109/KIMAS.2003.1245072