

The authors propose a new robust adaptive FIR filter algorithm for system identification applications based on a statistical approach named the M estimation. The proposed robust least mean square algorithm differs from the conventional one by the insertion of a suitably chosen nonlinear transformation of the prediction residuals. The effect of nonlinearity is to assign less weight to a small portion of large residuals so that the impulsive noise in the desired filter response will not greatly influence the final parameter estimates. The convergence of the parameter estimates is established theoretically using the ordinary differential equation approach. The feasibility of the approach is demonstrated with simulations.
| Engineering controlled terms: | Adaptive algorithmsComputer simulationIdentification (control systems)Lyapunov methodsMatrix algebraOrdinary differential equationsProbabilityStatistical methods |
|---|---|
| Engineering uncontrolled terms | Adaptive FIR filter algorithm |
| Engineering main heading: | FIR filters |
Banjac, Z.; Inst. of Appl. Math. and Electron., Kneza Miloša 37, Serbia
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