화학공학소재연구정보센터
IEE Proceedings-Control Theory & Applications, Vol.146, No.2, 234-240, 1999
Neurofuzzy state identification using prefiltering
A new state estimator algorithm is based on a neurofuzzy network and the kalman filter algorithm. The major contribution of the paper is recognition of a bias problem in the parameter estimation of the state-space model and the introduction of a simple, effective prefiltering method to achieve unbiased parameter estimates in the state-space model, which will then be applied for state estimation using the Kalman filtering algorithm. Fundamental to this method is a simple prefiltering procedure using a nonlinear principal component analysis method based on the neurofuzzy basis set. This prefiltering can be performed without prior system structure knowledge. Numerical examples demonstrate the effectiveness of the new approach.