Automatica, Vol.47, No.9, 2039-2043, 2011
A convex optimization approach to robust iterative learning control for linear systems with time-varying parametric uncertainties
In this paper, we present a new robust iterative learning control (ILC) design for a class of linear systems in the presence of time-varying parametric uncertainties and additive input/output disturbances. The system model is described by the Markov matrix as an affine function of parametric uncertainties. The robust ILC design is formulated as a min-max problem using a quadratic performance criterion subject to constraints of the control input update. Then, we propose a novel methodology to find a suboptimal solution of the min-max optimization problem. First, we derive an upper bound of the worst-case performance. As a result, the min-max problem is relaxed to become a minimization problem in the form of a quadratic program. Next, the robust ILC design is cast into a convex optimization over linear matrix inequalities (LMIs) which can be easily solved using off-the-shelf optimization solvers. The convergences of the control input and the error are proved. Finally, the robust ILC algorithm is applied to a physical model of a flexible link. The simulation results reveal the effectiveness of the proposed algorithm. (C) 2011 Elsevier Ltd. All rights reserved.
Keywords:Iterative learning control;Linear systems;Time-varying parametric uncertainties;Quadratic performance;Min-max problem;Linear matrix inequalities;Reference tracking;Disturbance rejection