We analyse the very general class of uncertain systems that have Linear Fractional Representations (LFRs), and uncertainty blocks in a convex set with a finite number of vertices. For these systems we design static output feedback controllers. In the general case, computing a robust static output feedback controller with optimal performance gives rise to a bilinear matrix inequality (BMI). In this article we show how this BMI problem can be efficiently rewritten to fit in the framework of sequential convex relaxation, a method that searches simultaneously for a feasible controller and one with good performance. As such, our approach does not rely on being supplied with a feasible initial solution to the BMI. This sets it apart from methods ...
Abstract — We develop a general class of stochastic optimal control problems for which the problem o...
This paper presents a new procedure for continuous and discrete-time linear control systems design. ...
This paper presents a convex optimization-based solution to the design of state-feedback controllers...
We analyse the very general class of uncertain systems that have Linear Fractional Representations (...
We consider the use of the nuclear norm operator, and its tendency to produce low rank results, to p...
International audienceIn this paper, attention is focused on the design of a stabilizing static outp...
We consider the problem of synthesizing optimal linear feedback policies subject to arbitrary convex...
International audienceThis paper aims at developing a robust observer–based estimated state feedback...
International audienceThis paper proposes the static output feedback (SOF) controller design method ...
The first part of this paper studies a specific class of uncertain quadratic and linear programs, wh...
This thesis is concerned with the Robust Model Predictive Control (RMPC) of linear discrete-time sys...
This paper considers the output feedback guaranteed cost controller design problem for uncertain dis...
Abstract—Using a moment interpretation of recent results on sum-of-squares decompositions of nonnega...
http://dx.doi.org/10.1080/002071700219867This paper describes the synthesis of non-fragile or resili...
In this paper, we propose some new convex strategies for robust optimal control. In particular, we t...
Abstract — We develop a general class of stochastic optimal control problems for which the problem o...
This paper presents a new procedure for continuous and discrete-time linear control systems design. ...
This paper presents a convex optimization-based solution to the design of state-feedback controllers...
We analyse the very general class of uncertain systems that have Linear Fractional Representations (...
We consider the use of the nuclear norm operator, and its tendency to produce low rank results, to p...
International audienceIn this paper, attention is focused on the design of a stabilizing static outp...
We consider the problem of synthesizing optimal linear feedback policies subject to arbitrary convex...
International audienceThis paper aims at developing a robust observer–based estimated state feedback...
International audienceThis paper proposes the static output feedback (SOF) controller design method ...
The first part of this paper studies a specific class of uncertain quadratic and linear programs, wh...
This thesis is concerned with the Robust Model Predictive Control (RMPC) of linear discrete-time sys...
This paper considers the output feedback guaranteed cost controller design problem for uncertain dis...
Abstract—Using a moment interpretation of recent results on sum-of-squares decompositions of nonnega...
http://dx.doi.org/10.1080/002071700219867This paper describes the synthesis of non-fragile or resili...
In this paper, we propose some new convex strategies for robust optimal control. In particular, we t...
Abstract — We develop a general class of stochastic optimal control problems for which the problem o...
This paper presents a new procedure for continuous and discrete-time linear control systems design. ...
This paper presents a convex optimization-based solution to the design of state-feedback controllers...