Data-Driven Abstraction and Synthesis for Stochastic Systems with Unknown Dynamics
Data-Driven Abstraction and Synthesis for Stochastic Systems with Unknown Dynamics
We study the automated abstraction-based synthesis of correct-by-construction control policies for stochastic dynamical systems with unknown dynamics. Our approach is to learn an abstraction from sampled data, which is represented in the form of a finite Markov decision process (MDP). In this paper, we present a data-driven technique for constructing finite-state interval MDP (IMDP) abstractions of stochastic systems with unknown nonlinear dynamics. As a distinguishing and novel feature, our technique only requires (1) noisy state-input-state observations and (2) an upper bound on the system's Lipschitz constant. Combined with standard model-checking techniques, our IMDP abstractions enable the synthesis of policies that satisfy probabilistic temporal properties (such as "reach-while-avoid") with a predefined confidence. Our experimental results show the effectiveness and robustness of our approach.
Mahdi Nazeri、Thom Badings、Anne-Kathrin Schmuck、Sadegh Soudjani、Alessandro Abate
自动化基础理论
Mahdi Nazeri,Thom Badings,Anne-Kathrin Schmuck,Sadegh Soudjani,Alessandro Abate.Data-Driven Abstraction and Synthesis for Stochastic Systems with Unknown Dynamics[EB/OL].(2025-08-21)[2025-09-03].https://arxiv.org/abs/2508.15543.点此复制
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