In recent years, there has been a growing interest in developing statistical learning methods to provide approximate solutions to "difficult" control problems. In particular, randomized algorithms have become a very popular tool used for stability and performance analysis as well as for design of control systems. However, as randomized algorithms provide an efficient solution procedure to the "intractable" problems, stochastic methods bring closer to understanding the properties of the real systems. The topic of this paper is the use of stochastic methods in order to solve the problem of control robustness: the case of parametric stochastic uncertainty is considered. Necessary concepts regarding stochastic control theory and stochastic diff...
This paper develops a novel probabilistic framework for stochastic nonlinear and uncertain control p...
The focal point of this note is the design of robust controllers for linear time-invariant uncertain...
can be modeled as stochastic systems with Markovian para-meters. This paper addresses the modeling a...
In recent years, there has been a growing interest in developing statistical learning methods to pro...
The main objective of this book is to introduce the reader to the fundamentals of the area of probab...
The presence of uncertainty in a system description has always been a critical issue in control. The...
The probabilistic approach to analysis and design of robust control systems is an emerging philosoph...
The solution of a stochastic control problem depends on the underlying model. The actual real world ...
Digital Object Identifier: 10.1109/TAC.2006.889863This is the first book that fully covers both rand...
Stochastic control theory is introduced and its importance relative to control science in general is...
Abstract. It has been suggested recently that the uncertainty randomization approach may offer numer...
This thesis develops various methods for the robust and stochastic model-based control of uncertain ...
This thesis investigates several topics involving robust control of stochastic nonlinear systems. Fi...
Technical ReportRecently, probabilistic methods and statistical learning theory have been shown to p...
Uncertainty presents significant challenges in the reasoning about and controlling of complex dynami...
This paper develops a novel probabilistic framework for stochastic nonlinear and uncertain control p...
The focal point of this note is the design of robust controllers for linear time-invariant uncertain...
can be modeled as stochastic systems with Markovian para-meters. This paper addresses the modeling a...
In recent years, there has been a growing interest in developing statistical learning methods to pro...
The main objective of this book is to introduce the reader to the fundamentals of the area of probab...
The presence of uncertainty in a system description has always been a critical issue in control. The...
The probabilistic approach to analysis and design of robust control systems is an emerging philosoph...
The solution of a stochastic control problem depends on the underlying model. The actual real world ...
Digital Object Identifier: 10.1109/TAC.2006.889863This is the first book that fully covers both rand...
Stochastic control theory is introduced and its importance relative to control science in general is...
Abstract. It has been suggested recently that the uncertainty randomization approach may offer numer...
This thesis develops various methods for the robust and stochastic model-based control of uncertain ...
This thesis investigates several topics involving robust control of stochastic nonlinear systems. Fi...
Technical ReportRecently, probabilistic methods and statistical learning theory have been shown to p...
Uncertainty presents significant challenges in the reasoning about and controlling of complex dynami...
This paper develops a novel probabilistic framework for stochastic nonlinear and uncertain control p...
The focal point of this note is the design of robust controllers for linear time-invariant uncertain...
can be modeled as stochastic systems with Markovian para-meters. This paper addresses the modeling a...