Abstract:In this paper, the problem of identification of discretetime system with a timedelay is addressed. This problem involves both the estimation of the timedelay and the estimation of the dynamic parameters. An Improved Stochastic Gradient Descent Method based on auxiliary model theory and lowpass filtering technique with a variable forgetting factor is proposed to simultaneously estimate the timedelay and dynamic parameters on line. An auxiliary model is established to estimate the noisefree output of system. A variable forgetting factor based on prediction error is introduced to enhance the convergence rate and identification accuracy. Moreover, a lowpass filtering technique is used to widen the convergence region and the sharp peaks of cost function are ‘spread out’, which makes the global minimum easier to reach. Simulation results are included to show the effectiveness of the proposed method.