Stochastic receding horizon control with output feedback and bounded control inputs
Conference Paper
Publication Date:
2010
Abstract:
We study the problem of receding horizon control of stochastic discrete-time systems with bounded control inputs and incomplete state information. Given a suitable choice of causal control policies, we first present a slight extension of the Kalman filter to estimate the state optimally in mean-square sense. We then show how to augment the underlying optimization problem with a negative drift-like constraint, yielding a second-order cone program to be solved periodically online. Finally, we prove that the receding horizon implementation of the resulting control policies renders the state of the overall system mean-square bounded under mild assumptions.
CRIS type:
4.1 Contributo in Atti di convegno
Keywords:
Bounded controls, Control policy, Discrete time system, Mean-square, Optimization problems, Output feedback, Receding horizon, Receding horizon control, Second-order cone program, State information
List of contributors:
Hokayem, Peter; Cinquemani, Eugenio; Chatterjee, Debasish; Ramponi, Federico Alessandro; Lygeros, John
Book title:
Proceedings of the 49th IEEE Conference on Decision and Control (CDC'10)