Title :
Stabilizing Linear Model Predictive Control Under Inexact Numerical Optimization
Author :
Rubagotti, Matteo ; Patrinos, Panagiotis ; Bemporad, Alberto
Author_Institution :
Nazarbayev Univ. (NU), Astana, Kazakhstan
Abstract :
This note describes a model predictive control (MPC) formulation for discrete-time linear systems with hard constraints on control and state variables, under the assumption that the solution of the associated quadratic program is neither optimal nor satisfies the inequality constraints. This is common in embedded control applications, for which real-time constraints and limited computing resources dictate restrictions on the possible number of on-line iterations that can be performed within a sampling period. The proposed approach is rather general, in that it does not refer to a particular optimization algorithm, and is based on the definition of an alternative MPC problem that we assume can only be solved within bounded levels of suboptimality, and violation of the inequality constraints. By showing that the inexact solution is a feasible suboptimal one for the original problem, asymptotic or exponential stability is guaranteed for the closed-loop system. Based on the above general results, we focus on a specific dual accelerated gradient-projection method to obtain a stabilizing MPC law that only requires a predetermined maximum number of on-line iterations.
Keywords :
asymptotic stability; closed loop systems; discrete time systems; gradient methods; linear systems; predictive control; quadratic programming; sampling methods; suboptimal control; MPC problem; asymptotic stability; bounded levels; closed-loop system; computing resources; control variables; discrete-time linear systems; dual accelerated gradient-projection method; embedded control applications; exponential stability; hard constraints; inequality constraints; inexact numerical optimization; linear model predictive control; online iterations; optimization algorithm; quadratic program; real-time constraints; sampling period; stabilizing MPC law; state variables; suboptimality; Acceleration; Closed loop systems; Optimization; Predictive control; Real-time systems; Standards; Vectors; Embedded control; model predictive control (MPC); numerical optimization; real-time control;
Journal_Title :
Automatic Control, IEEE Transactions on
DOI :
10.1109/TAC.2013.2293451