期刊文献+

Iterative Selection of GOB Poles in the Context of System Modeling

Iterative Selection of GOB Poles in the Context of System Modeling
原文传递
导出
摘要 This paper is concerned with the problem of system identification using expansions on generalized orthonormal bases(GOB). Three algorithms are proposed to optimize the poles of such a basis. The first two algorithms determine a GOB with optimal real poles while the third one determines a GOB with optimal real and complex poles. These algorithms are based on the estimation of the dominant mode associated with a residual signal obtained by iteratively filtering the output of the process to be modelled. These algorithms are iterative and based on the quadratic error between the linear process output and the GOB based model output. They present the advantage to be very simple to implement. No numerical optimization technique is needed, and in consequence there is no problem of local minima as is the case for other algorithms in the literature. The convergence of the proposed algorithms is proved by demonstrating that the modeling quadratic error between the process output and the GOB based model is decreasing at each iteration of the algorithm. The performance of the proposed pole selection algorithms are based on the quadratic error criteria and illustrated by means of simulation results. This paper is concerned with the problem of system identification using expansions on generalized orthonormal bases(GOB). Three algorithms are proposed to optimize the poles of such a basis. The first two algorithms determine a GOB with optimal real poles while the third one determines a GOB with optimal real and complex poles. These algorithms are based on the estimation of the dominant mode associated with a residual signal obtained by iteratively filtering the output of the process to be modelled. These algorithms are iterative and based on the quadratic error between the linear process output and the GOB based model output. They present the advantage to be very simple to implement. No numerical optimization technique is needed, and in consequence there is no problem of local minima as is the case for other algorithms in the literature. The convergence of the proposed algorithms is proved by demonstrating that the modeling quadratic error between the process output and the GOB based model is decreasing at each iteration of the algorithm. The performance of the proposed pole selection algorithms are based on the quadratic error criteria and illustrated by means of simulation results.
出处 《International Journal of Automation and computing》 EI CSCD 2019年第1期102-111,共10页 国际自动化与计算杂志(英文版)
关键词 Generalized orthonormal bases(GOB) LAGUERRE FUNCTIONS Kautz FUNCTIONS POLE estimation modelling identification Generalized orthonormal bases(GOB) Laguerre functions Kautz functions pole estimation modelling identification
  • 相关文献

参考文献1

二级参考文献6

  • 1T.M. Guerra,A. Kruszewski,L. Vermeiren,H. Tirmant.Conditions of output stabilization for nonlinear models in the Takagi–Sugeno’s form[J].Fuzzy Sets and Systems.2005(9)
  • 2Robert Shorten,Roderick Murray-Smith,Roger Bjorgan,Henrik Gollee.On the interpretation of local models in blended multiple model structures[J].International Journal of Control (-).1999(7-8)
  • 3Tor A. Johansen,Bjarne A. Foss.Operating regime based process modeling and identification[J].Computers and Chemical Engineering.1997(2)
  • 4.A general scheme for multi-model controller using trust[J].Mathematics and Computers in Simulation.1996(1)
  • 5Sada Bedoui,Majda Ltaief,Kamel Abderrahim.New Results on Discrete-time Delay Systems Identification[J].International Journal of Automation and computing,2012,9(6):570-577. 被引量:7
  • 6Fatima Ahmida,El Houssaine Tissir.Exponential Stability of Uncertain T-S Fuzzy Switched Systems with Time Delay[J].International Journal of Automation and computing,2013,10(1):32-38. 被引量:3

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部