ME 224 System Identification and Estimation
Deterministic state estimation, recursive observers, estimation for uncertain process dynamics; SISO and MIMO least-squares parameter estimation, linear system subspace identification. Random variables and random processes: linear systems forced by random processes, power-spectral density. Bayesian filtering including Kalman filter. Jump- Markov estimation and fault diagnosis. Nonlinear estimation, particle filters, unscented Kalman filter. Introduction to estimation for hybrid systems.
Cross Listed Courses
EE 274 and ME 224
Prerequisite
ME 221A, ME 221B
Corequisite
ME 221B