Many robust control problems can be formulated in abstract form as convex feasibility programs, where one seeks a solution vector x that satisfies a set of inequalities of the form F = {f(x, delta) les 0, delta isin D}. This set typically contains an infinite and uncountable number of inequalities, and it has been proved that the related robust feasibility problem is numerically hard to solve in general. In this paper, we discuss a family of cutting plane methods that solve efficiently a probabilistically-relaxed version of the problem. Specifically, under suitable hypotheses, we show that an analytic center cutting plane scheme based on a probabilistic oracle returns in a finite and pre-specified number of iterations a solution x which is feasible for most of the members of J7, except possibly for a subset having arbitrarily small probability measure

An Iterative Localization Method for Probabilistic Feasibility of Uncertain LMIs / Calafiore, Giuseppe Carlo; F., Dabbene. - STAMPA. - (2006), pp. 4157-4162. (Intervento presentato al convegno 45th IEEE Conference on Decision and Control tenutosi a San Diego, CA nel 13-15 Dec. 2006) [10.1109/CDC.2006.377664].

An Iterative Localization Method for Probabilistic Feasibility of Uncertain LMIs

CALAFIORE, Giuseppe Carlo;
2006

Abstract

Many robust control problems can be formulated in abstract form as convex feasibility programs, where one seeks a solution vector x that satisfies a set of inequalities of the form F = {f(x, delta) les 0, delta isin D}. This set typically contains an infinite and uncountable number of inequalities, and it has been proved that the related robust feasibility problem is numerically hard to solve in general. In this paper, we discuss a family of cutting plane methods that solve efficiently a probabilistically-relaxed version of the problem. Specifically, under suitable hypotheses, we show that an analytic center cutting plane scheme based on a probabilistic oracle returns in a finite and pre-specified number of iterations a solution x which is feasible for most of the members of J7, except possibly for a subset having arbitrarily small probability measure
2006
1424401712
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11583/1409012
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