Title :
Stabilizing Model Predictive Control of Stochastic Constrained Linear Systems
Author :
Bernardini, Daniele ; Bemporad, Alberto
Author_Institution :
IMT Inst. for Adv. Studies Lucca, Lucca, Italy
fDate :
6/1/2012 12:00:00 AM
Abstract :
This paper investigates stochastic stabilization procedures based on quadratic and piecewise linear Lyapunov functions for discrete-time linear systems affected by multiplicative disturbances and subject to linear constraints on inputs and states. A stochastic model predictive control (SMPC) design approach is proposed to optimize closed-loop performance while enforcing constraints. Conditions for stochastic convergence and robust constraints fulfillment of the closed-loop system are enforced by solving linear matrix inequality problems off line. Performance is optimized on line using multistage stochastic optimization based on enumeration of scenarios, that amounts to solving a quadratic program subject to either quadratic or linear constraints. In the latter case, an explicit form is computable to ease the implementation of the proposed SMPC law. The approach can deal with a very general class of stochastic disturbance processes with discrete probability distribution. The effectiveness of the proposed SMPC formulation is shown on a numerical example and compared to traditional MPC schemes.
Keywords :
Lyapunov methods; closed loop systems; control system synthesis; discrete time systems; linear systems; piecewise linear techniques; predictive control; quadratic programming; robust control; statistical distributions; stochastic processes; stochastic systems; SMPC design approach; SMPC law; closed-loop performance optimization; discrete probability distribution; discrete-time linear systems; linear constraints; linear matrix inequality problems; multistage stochastic optimization; piecewise linear Lyapunov functions; quadratic constraints; quadratic functions; quadratic program; stochastic constrained linear systems; stochastic convergence; stochastic disturbance processes; stochastic model predictive control design approach; stochastic stabilization procedures; Convergence; Linear systems; Optimization; Predictive models; Probability distribution; Stability analysis; Stochastic processes; Constrained linear systems; model predictive control (MPC); stochastic control;
Journal_Title :
Automatic Control, IEEE Transactions on
DOI :
10.1109/TAC.2011.2176429