We present a novel approach to compute reachable sets of dynamical systems with uncertain initial conditions or parameters, leveraging state-of-the-art statistical techniques. From a small set of samples of the true reachable function of the system, expressed as a function of initial conditions or parameters, we emulate such function using a Bayesian method based on Gaussian Processes. Uncertainty in the reconstruction is reflected in confidence bounds which, when combined with template polyhedra ad optimised, allow us to bound the reachable set with a given statistical confidence. We show how this method works straightforwardly also to do reachability computations for uncertain stochastic models
When designing optimal controllers for any system, it is often the case that the true state of the s...
we demonstrate several techniques to prove safety guarantees for robust control problems with statis...
We report on new strategies for model checking quantitative reachability properties of Markov decisi...
As automated control systems grow in prevalence and complexity, there is an increasing demand for v...
International audienceTime-bounded reachability problems are concerned with assessing whether a mode...
Abstract. Stochastic hybrid system models can be used to analyze and design complex embedded systems...
Many control systems have large, infinite state space that can not be easily abstracted. One method ...
Abstract As an important approach to analyzing safety of a dynamic system, this paper considers the ...
AbstractVerification of reachability properties for probabilistic systems is usually based on varian...
tical testing We present a novel approach for solving the probabilistic bounded reachability problem...
Paper on stochastic invarianceInternational audienceIn this paper a constructive method to determine...
In this article, we develop a set-oriented numerical methodology which allows us to perform uncertai...
Bayesian inference methods are applied to linear structural dynamic systems with uncertain component...
This thesis develops various methods for the robust and stochastic model-based control of uncertain ...
In this work, computationally efficient approximate methods are developed for analyzing uncertain dy...
When designing optimal controllers for any system, it is often the case that the true state of the s...
we demonstrate several techniques to prove safety guarantees for robust control problems with statis...
We report on new strategies for model checking quantitative reachability properties of Markov decisi...
As automated control systems grow in prevalence and complexity, there is an increasing demand for v...
International audienceTime-bounded reachability problems are concerned with assessing whether a mode...
Abstract. Stochastic hybrid system models can be used to analyze and design complex embedded systems...
Many control systems have large, infinite state space that can not be easily abstracted. One method ...
Abstract As an important approach to analyzing safety of a dynamic system, this paper considers the ...
AbstractVerification of reachability properties for probabilistic systems is usually based on varian...
tical testing We present a novel approach for solving the probabilistic bounded reachability problem...
Paper on stochastic invarianceInternational audienceIn this paper a constructive method to determine...
In this article, we develop a set-oriented numerical methodology which allows us to perform uncertai...
Bayesian inference methods are applied to linear structural dynamic systems with uncertain component...
This thesis develops various methods for the robust and stochastic model-based control of uncertain ...
In this work, computationally efficient approximate methods are developed for analyzing uncertain dy...
When designing optimal controllers for any system, it is often the case that the true state of the s...
we demonstrate several techniques to prove safety guarantees for robust control problems with statis...
We report on new strategies for model checking quantitative reachability properties of Markov decisi...