We develop a method for determining whether a stochastic system is safe, i.e., whether its trajectories reach unsafe states. Specifically, we define and solve a probabilistic safety problem for Markov processes. Based on the knowledge of the extended generator, we are able to develop an evolution equation, as a system of integral equations, describing the connection between unsafe and initial states. Subsequently, using the moment method, we approximate the infinite-dimensional optimization problem searching for the largest set of safe states by a finite-dimensional polynomial optimization problem. In particular, we address the above safety problem to a special class of stochastic hybrid processes, namely piecewise-deterministic Markov proc...
Abstract — Stochastic hybrid system models can be used to analyze and design complex embedded system...
We develop a method to approximate the moments of a discrete-time stochastic polynomial system. Our ...
This thesis studies some Markovian models allowing uncertainties to be taken into account in systems...
We consider the safety problem of piecewise-deterministic Markov processes (PDMP). These are systems...
We refine the concept of stochastic reach avoidance for a general class of Markov processes introduc...
This paper presents a method for verifying the safety of a stochastic system. In particular, we show...
Doctor of PhilosophyDepartment of Computer SciencePavithra PrabhakarStochastic hybrid systems consis...
In this work, probabilistic reachability over a finite horizon is investigated for a class of discre...
This work is concerned with the safety controller synthesis of stochastic hybrid systems, in which c...
In this work, probabilistic reachability over a finite horizon is investigated for a class of discre...
This paper presents a methodology for safety verification of continuous and hybrid systems in the wo...
For stochastic hybrid systems, safety verification methods are very little supported mainly because ...
This paper introduces a method for approximating the dynamics of deterministic hybrid systems. Withi...
We develop a new method for safety verification of stochastic systems based on functions of states t...
Assuring safety in discrete time stochastic hybrid systems is particularly difficult when only parti...
Abstract — Stochastic hybrid system models can be used to analyze and design complex embedded system...
We develop a method to approximate the moments of a discrete-time stochastic polynomial system. Our ...
This thesis studies some Markovian models allowing uncertainties to be taken into account in systems...
We consider the safety problem of piecewise-deterministic Markov processes (PDMP). These are systems...
We refine the concept of stochastic reach avoidance for a general class of Markov processes introduc...
This paper presents a method for verifying the safety of a stochastic system. In particular, we show...
Doctor of PhilosophyDepartment of Computer SciencePavithra PrabhakarStochastic hybrid systems consis...
In this work, probabilistic reachability over a finite horizon is investigated for a class of discre...
This work is concerned with the safety controller synthesis of stochastic hybrid systems, in which c...
In this work, probabilistic reachability over a finite horizon is investigated for a class of discre...
This paper presents a methodology for safety verification of continuous and hybrid systems in the wo...
For stochastic hybrid systems, safety verification methods are very little supported mainly because ...
This paper introduces a method for approximating the dynamics of deterministic hybrid systems. Withi...
We develop a new method for safety verification of stochastic systems based on functions of states t...
Assuring safety in discrete time stochastic hybrid systems is particularly difficult when only parti...
Abstract — Stochastic hybrid system models can be used to analyze and design complex embedded system...
We develop a method to approximate the moments of a discrete-time stochastic polynomial system. Our ...
This thesis studies some Markovian models allowing uncertainties to be taken into account in systems...