A Robust Learning Algorithm for System Identification

외란을 포함한 학습 데이터에 강인한 시스템 모델링

  • 한상현 (부산대학교 지능기계공학과) ;
  • 윤중선 (부산대학교 기계공학부)
  • Published : 2000.10.01

Abstract

Highly nonlinear dynamical systems are easily identified using neural networks. When disturbances are included in the learning data set Int system modeling, modeling process will be poorly performed. Since the radial basis functions in the radial basis function network(RBFN) are centered at the points specified by the weights, RBF networks are robust for approximating the process including the narrow-band disturbances deviating significantly from the regular signals. To exclude(filter) these disturbances, a robust algorithm for system identification, based on the RBFN, is proposed. The performance of system identification excluding disturbances is investigated and compared with the one including disturbances.

Keywords