Symbolic Control for Stochastic Systems via Finite Parity Games
Rupak Majumdar, Kaushik Mallik, Anne-Kathrin Schmuck, Sadegh, Soudjani

TL;DR
This paper introduces a novel abstraction-based method using finite parity games to compute lower bounds on the satisfaction probability of omega-regular specifications in stochastic nonlinear systems, improving over existing tools.
Contribution
It develops a symbolic abstraction technique that does not rely on precise probabilities, enabling efficient lower-bound probability computation for complex stochastic systems.
Findings
Successfully implemented in Mascot-SDS and FairSyn
Outperforms existing tools on a bistable switch model
Provides a scalable approach for stochastic system verification
Abstract
We consider the problem of computing the maximal probability of satisfying an omega-regular specification for stochastic nonlinear systems evolving in discrete time. The problem reduces, after automata-theoretic constructions, to finding the maximal probability of satisfying a parity condition on a (possibly hybrid) state space. While characterizing the exact satisfaction probability is open, we show that a lower bound on this probability can be obtained by (I) computing an under-approximation of the qualitative winning region, i.e., states from which the parity condition can be enforced almost surely, and (II) computing the maximal probability of reaching this qualitative winning region. The heart of our approach is a technique to symbolically compute the under-approximation of the qualitative winning region in step (I) via a finite-state abstraction of the original system as a…
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Taxonomy
TopicsFormal Methods in Verification · Software Reliability and Analysis Research · Software Engineering Research
