DocumentCode :
646172
Title :
An LMI approach to structured sparse feedback design in linear control systems
Author :
Polyak, Boris ; Khlebnikov, Mikhail ; Shcherbakov, Pavel
Author_Institution :
Lab. of Adaptive & Robust Control Syst., Inst. of Control Sci., Moscow, Russia
fYear :
2013
fDate :
17-19 July 2013
Firstpage :
833
Lastpage :
838
Abstract :
Consider the classical state feedback design in the linear system ẋ = Ax + Bu subject to performance specifications with an additional requirement that the control input vector u = Kx has as many zero entries as possible. The corresponding gain K is referred to as a row-sparse controller. We propose an approach to approximate solution of this kind of nonconvex problems by formulating the proper convex surrogate,-the minimization of a certain matrix norm subject to LMI constraints. The novelty of the paper is the problem formulation itself and the construction of the surrogate. The two main contributions are the design of low-dimensional output to be used in static output feedback, and suboptimal design illustrated via LQR. The results of preliminary numerical experiments are twofold. First, in many test problems, the number of controls was considerably reduced without significant loss in performance. Second, the number of nonzero entries obtained by our method is either very close to or coincide with the minimum possible amount. The approach can be further extended to handle numerous problems of optimal and robust control in sparse formulation.
Keywords :
concave programming; control system synthesis; linear matrix inequalities; linear quadratic control; minimisation; robust control; state feedback; suboptimal control; LMI approach; LMI constraints; control input vector; linear control systems; low-dimensional output design; nonconvex problems; nonzero entries; optimal control; performance specifications; robust control; row-sparse controller; sparse formulation; state feedback design; static output feedback; structured sparse feedback design; suboptimal design; Approximation methods; Minimization; Output feedback; Sparse matrices; State feedback; Vectors;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Control Conference (ECC), 2013 European
Conference_Location :
Zurich
Type :
conf
Filename :
6669578
Link To Document :
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