Course Contents:
Estimation and identification – overview and preliminaries, Introduction to linear least squares estimation, Estimator properties – error bounds and convergence, Maximum likelihood estimation, Maximum a posteriori estimation, Linear mean squared estimation, Unmeasured disturbances and Kalman filter, Extended Kalman filter and Unscented Kalman filter for nonlinear systems, Frequency Response Identification – ETFE, ARX and ARMAX models for linear system identification, Recursive approaches for linear systems – RLS, ELS, RML, Introduction to nonlinear system identification – NARX, NRMAX models, Conditions on experimental data, Convergence properties of the identified model
Textbooks / References:
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