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Lecture
Multivariable Control: State Estimation and Kalman Filtering
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Multivariable Control: Eigenvalue Assignment and Disturbance Estimation
Discusses closed-loop eigenvalue selection and disturbance impact in multivariable control systems.
Eigenvalue Assignment in Multivariable Control
Explores Ackermann's formula and methods for eigenvalue assignment in multivariable control systems.
Kalman Filtering: State Estimation and Prediction
Explores the Kalman filter for state estimation and prediction in a linear Gaussian setting, emphasizing the optimality of the predictor and filter.
Multivariable Control: Design and Analysis
Covers the design and analysis of multivariable control systems, focusing on stability and zero steady-state tracking error.
Controllability and Reachability
Explores reachability and controllability in multivariable control systems, discussing tests, proofs, and their implications.
Multivariable Control: State-Feedback and Eigenvalue Assignment
Covers state-feedback controller design for multivariable systems and discusses simplified methods for MIMO systems.
Multivariable Control: State Estimation and Disturbance Rejection
Covers the design of estimators and controllers for multivariable systems, focusing on state estimation and disturbance rejection.
Kalman Filters: Estimation and Localization
Covers the theory and application of Kalman Filters for estimation and localization in robotics.
Observability in Multivariable Control
Explores observability in multivariable control systems and the PBH test for system reachability.
Eigenvalue Assignment in Multivariable Control
Explores Eigenvalue Assignment in multivariable control, emphasizing the effects of discretization and the challenges in preserving system structure.