Data-Driven Synthesis of Symbolic Abstractions with Guaranteed Confidence
Abolfazl Lavaei, Emilio Frazzoli

TL;DR
This paper introduces a data-driven method for creating symbolic models of unknown control systems using finite data, enabling formal verification and control synthesis with probabilistic guarantees.
Contribution
It develops a novel approach to construct symbolic abstractions with confidence guarantees by combining robust optimization and scenario-based methods for unknown systems.
Findings
Successfully applied to a DC motor and a nonlinear jet engine compressor
Constructed symbolic models from data with probabilistic confidence
Synthesized safe control policies for unknown systems
Abstract
In this work, we propose a data-driven approach for the construction of finite abstractions (a.k.a., symbolic models) for discrete-time deterministic control systems with unknown dynamics. We leverage notions of so-called alternating bisimulation functions (ABF), as a relation between each unknown system and its symbolic model, to quantify the mismatch between state behaviors of two systems. Accordingly, one can employ our proposed results to perform formal verification and synthesis over symbolic models and then carry the results back over unknown original systems. In our data-driven setting, we first cast the required conditions for constructing ABF as a robust optimization program (ROP). Solving the provided ROP is not tractable due to the existence of unknown models in the constraints of ROP. To tackle this difficulty, we collect finite numbers of data from trajectories of unknown…
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Taxonomy
TopicsFormal Methods in Verification · Advanced Control Systems Optimization · Statistical and Computational Modeling
