In this paper, we develop a unified framework for studying constrained robust optimal control problems with adjustable uncertainty sets. In contrast to standard constrained robust optimal control problems with known uncertainty sets, we treat the uncertainty sets in our problems as additional decision variables. In particular, given a finite prediction horizon and a metric for adjusting the uncertainty sets, we address the question of determining the optimal size and shape of the uncertainty sets, while simultaneously ensuring the existence of a control policy that will keep the system within its constraints for all possible disturbance realizations inside the adjusted uncertainty set. Since our problem subsumes the classical constrained ro...
Abstract Robust convex constraints are difficult to handle, since finding the worst-cas...
This paper proposes a probabilistic solution framework for robust control analysis and synthesis pro...
This thesis deals with the topic of min-max formulations of robust model predictive control problems...
In this paper, we develop a unified framework for studying constrained robust optimal control proble...
This paper proposes a method for solving robust optimal control problems with modulated uncertainty ...
The first part of this paper studies a specific class of uncertain quadratic and linear programs, wh...
We investigate a constrained optimization problem for which there is uncertainty about a constraint ...
Abstract In this paper, we propose a new methodology for handling opti-mization problems with uncert...
Predictive control is a very useful tool in controlling constrained systems, since the constraints c...
We investigate a constrained optimization problem for which there is uncertainty about a constraint ...
Adjustable Robust Optimization (ARO) yields, in general, better worst-case solutions than static Rob...
We consider constraint optimization problems where costs (or preferences) are all given, but some ar...
This paper proposes a new probabilistic solution framework for robust control analysis and synthesis...
Abstract In this paper, we consider adjustable robust versions of convex optimiza-tion problems with...
Most optimization problems in real life do not have accurate estimates of the prob-lem parameters at...
Abstract Robust convex constraints are difficult to handle, since finding the worst-cas...
This paper proposes a probabilistic solution framework for robust control analysis and synthesis pro...
This thesis deals with the topic of min-max formulations of robust model predictive control problems...
In this paper, we develop a unified framework for studying constrained robust optimal control proble...
This paper proposes a method for solving robust optimal control problems with modulated uncertainty ...
The first part of this paper studies a specific class of uncertain quadratic and linear programs, wh...
We investigate a constrained optimization problem for which there is uncertainty about a constraint ...
Abstract In this paper, we propose a new methodology for handling opti-mization problems with uncert...
Predictive control is a very useful tool in controlling constrained systems, since the constraints c...
We investigate a constrained optimization problem for which there is uncertainty about a constraint ...
Adjustable Robust Optimization (ARO) yields, in general, better worst-case solutions than static Rob...
We consider constraint optimization problems where costs (or preferences) are all given, but some ar...
This paper proposes a new probabilistic solution framework for robust control analysis and synthesis...
Abstract In this paper, we consider adjustable robust versions of convex optimiza-tion problems with...
Most optimization problems in real life do not have accurate estimates of the prob-lem parameters at...
Abstract Robust convex constraints are difficult to handle, since finding the worst-cas...
This paper proposes a probabilistic solution framework for robust control analysis and synthesis pro...
This thesis deals with the topic of min-max formulations of robust model predictive control problems...