Please use this identifier to cite or link to this item: http://10.1.7.192:80/jspui/handle/123456789/11594
Title: System Identification Using Transfer Matrix
Authors: Barve, Jayesh
Junnuri, VSS Rameshkumar
Keywords: System Modeling
System Identification
Dynamics
Genetic Algorithm
Transfer Function Matrix
Flexible Robotic Arm
Industrial Dryer
IC Faculty Paper
Faculty Paper
ITFIC020
Issue Date: 1-Dec-2004
Publisher: IEEE
Citation: Proceedings of the 2004, IEEE Conference on Robotics, Automation and Mechatronics Singapore, December 1 - 3, 2004, Page No. 1124 - 1129
Series/Report no.: ITFIC020-6;
Abstract: A new approach is proposed for multivariable system identification in the deterministic model framework. In the proposed approach, MIMO system is represented using transfer function (TF) matrix whose elements arc the standard, fixed structure TFs like FOPDT, SOPDT etc. These model structures are capable of well approximating very large class of systems found in practice. The system identification problem is then considered as the problem of simultaneously estimating the parameters of all TFs in the TF matrix. This is posed mathematically as the constrained optimization problem, which minimizes the error between simulated and actual response. A genetic algorithm is used to solve the proposed optimization problem. The proposed approach is tested on several benchmark system identification test data sets. Results for two DaISy benchmark data sets, SISO example of flexible robGtic arm and a MIMO example of an industrial dryer are discussed.
URI: http://10.1.7.192:80/jspui/handle/123456789/11594
ISSN: 0·7803-8645-0/04
Appears in Collections:Faculty Papers, E&I

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