This thesis develops various methods for the robust and stochastic model-based control of uncertain dynamical systems. Several different types of uncertainties are considered, as well as different mathematical formalisms for quantification of the effects of uncertainties in dynamical systems. For deterministic uncertain models and robust control, uncertainties are described as sets of unknowns and every element from a set is presumed to be realizable. Stability and performance characteristics and controlled system behaviors are required to be satisfied for any element in the set of uncertain models. This thesis extends and expands robust control theory to tackle control problems for specific classes of structured uncertain linear and nonli...
Recently there has been growing interest to characterize and reduce uncertainty in stochastic dynami...
peer reviewedThe stability and performance of a system can be inferred from the evolution of statist...
This dissertation develops a probabilistic method for validation and verification (V&V) of uncertain...
This thesis develops various methods for the robust and stochastic model-based control of uncertain ...
Recently, there has been a growing interest in analyzing stability and developing controls for stoch...
This paper develops a novel probabilistic framework for stochastic nonlinear and uncertain control p...
Robust controllers for nonlinear stochastic systems with functional uncertainties can be consistentl...
We present a framework to design and verify the behavior of stochastic systems whose parameters are ...
For the first time, a textbook that brings together classical predictive control with treatment of u...
This study discusses a robust controller synthesis methodology for linear, time invariant systems, u...
In many engineering applications, it is a formidable task to construct mathematical models that are ...
In the thesis, two different model predictive control (MPC) strategies are investigated for linear s...
This thesis has two themes. In chapters 1 and 2 we investigate tractable approximations to specific ...
This work studies the design of safe control policies for large-scale non-linear systems operating i...
The presence of uncertainty in model predictive control (MPC) has been accounted for using two types...
Recently there has been growing interest to characterize and reduce uncertainty in stochastic dynami...
peer reviewedThe stability and performance of a system can be inferred from the evolution of statist...
This dissertation develops a probabilistic method for validation and verification (V&V) of uncertain...
This thesis develops various methods for the robust and stochastic model-based control of uncertain ...
Recently, there has been a growing interest in analyzing stability and developing controls for stoch...
This paper develops a novel probabilistic framework for stochastic nonlinear and uncertain control p...
Robust controllers for nonlinear stochastic systems with functional uncertainties can be consistentl...
We present a framework to design and verify the behavior of stochastic systems whose parameters are ...
For the first time, a textbook that brings together classical predictive control with treatment of u...
This study discusses a robust controller synthesis methodology for linear, time invariant systems, u...
In many engineering applications, it is a formidable task to construct mathematical models that are ...
In the thesis, two different model predictive control (MPC) strategies are investigated for linear s...
This thesis has two themes. In chapters 1 and 2 we investigate tractable approximations to specific ...
This work studies the design of safe control policies for large-scale non-linear systems operating i...
The presence of uncertainty in model predictive control (MPC) has been accounted for using two types...
Recently there has been growing interest to characterize and reduce uncertainty in stochastic dynami...
peer reviewedThe stability and performance of a system can be inferred from the evolution of statist...
This dissertation develops a probabilistic method for validation and verification (V&V) of uncertain...