Compositional Abstraction-based Synthesis for Networks of Stochastic Switched Systems
Abolfazl Lavaei, Sadegh Soudjani, and Majid Zamani

TL;DR
This paper introduces a compositional method for creating finite abstractions of interconnected stochastic switched systems, enabling efficient controller synthesis with guaranteed error bounds for large-scale networks.
Contribution
It develops a novel compositional framework using stochastic simulation functions for finite abstraction of stochastic switched systems, applicable to large networks with stability guarantees.
Findings
Successfully applied to a 200-cell traffic network for policy synthesis.
Constructed finite MDPs for a 500-node nonlinear stochastic network.
Demonstrated improved scalability and guaranteed error bounds compared to existing methods.
Abstract
In this paper, we provide a compositional approach for constructing finite abstractions (a.k.a. finite Markov decision processes (MDPs)) of interconnected discrete-time stochastic switched systems. The proposed framework is based on a notion of stochastic simulation functions, using which one can employ an abstract system as a substitution of the original one in the controller design process with guaranteed error bounds on their output trajectories. To this end, we first provide probabilistic closeness guarantees between the interconnection of stochastic switched subsystems and that of their finite abstractions via stochastic simulation functions. We then leverage sufficient small-gain type conditions to show compositionality results of this work. Afterwards, we show that under standard assumptions ensuring incremental input-to-state stability of switched systems (i.e., existence of…
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