This dissertation develops a probabilistic method for validation and verification (V&V) of uncertain nonlinear systems. Existing systems-control literature on model and controller V&V either deal with linear systems with norm-bounded uncertainties,or consider nonlinear systems in set-based and moment based framework. These existing methods deal with model invalidation or falsification, rather than assessing the quality of a model with respect to measured data. In this dissertation, an axiomatic framework for model validation is proposed in probabilistically relaxed sense, that instead of simply invalidating a model, seeks to quantify the "degree of validation". To develop this framework, novel algorithms for uncertainty propagation have be...
The primary objective of this study was to develop improved methodologies for efficient and accurate...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Aeronautics and Astronautics, 2008....
Robust controllers for nonlinear stochastic systems with functional uncertainties can be consistentl...
This thesis develops various methods for the robust and stochastic model-based control of uncertain ...
Recently there has been growing interest to characterize and reduce uncertainty in stochastic dynami...
This thesis develops theoretical and computational methods for the robustness analysis of uncertain ...
We present a framework to design and verify the behavior of stochastic systems whose parameters are ...
In this work we present a novel computational framework for analyzing evolution of uncertainty in st...
In recent years significant effort was put into developing analytical worst-case analysis tools to s...
This paper develops a novel probabilistic framework for stochastic nonlinear and uncertain control p...
New methods for model validation of continuous-time nonlinear systems with uncertain parameters are ...
Deterministic approaches to model validation for robust control are investigated. In common determin...
This dissertation presents closed-loop identification algorithms of an unstable system in the time a...
As the demand for increasingly complex and autonomous systems grows, designers may consider computat...
The primary objective of this study was to develop improved methodologies for efficient and accurate...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Aeronautics and Astronautics, 2008....
Robust controllers for nonlinear stochastic systems with functional uncertainties can be consistentl...
This thesis develops various methods for the robust and stochastic model-based control of uncertain ...
Recently there has been growing interest to characterize and reduce uncertainty in stochastic dynami...
This thesis develops theoretical and computational methods for the robustness analysis of uncertain ...
We present a framework to design and verify the behavior of stochastic systems whose parameters are ...
In this work we present a novel computational framework for analyzing evolution of uncertainty in st...
In recent years significant effort was put into developing analytical worst-case analysis tools to s...
This paper develops a novel probabilistic framework for stochastic nonlinear and uncertain control p...
New methods for model validation of continuous-time nonlinear systems with uncertain parameters are ...
Deterministic approaches to model validation for robust control are investigated. In common determin...
This dissertation presents closed-loop identification algorithms of an unstable system in the time a...
As the demand for increasingly complex and autonomous systems grows, designers may consider computat...
The primary objective of this study was to develop improved methodologies for efficient and accurate...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Aeronautics and Astronautics, 2008....
Robust controllers for nonlinear stochastic systems with functional uncertainties can be consistentl...