Data-Driven Nonconvex Reachability Analysis using Exact Set Propagation
Zhen Zhang, M. Umar B. Niazi, Michelle S. Chong, Karl H. Johansson, and Amr Alanwar

TL;DR
This paper introduces a novel algebraic set representation called constrained polynomial matrix zonotopes (CPMZs) for exact, nonconvex reachability analysis of systems with unknown dynamics, reducing conservatism.
Contribution
The paper develops CPMZ-based methods for exact set propagation and online refinement, extending to polynomial systems, avoiding over-approximation common in existing approaches.
Findings
Exact set propagation within CPZs avoids over-approximation.
The method reduces conservatism compared to existing approaches.
Numerical examples show significant improvements in linear and polynomial systems.
Abstract
This paper studies deterministic data-driven reachability analysis for dynamical systems with unknown dynamics and nonconvex reachable sets. Existing deterministic data-driven approaches typically employ zonotopic set representations, for which the multiplication between a zonotopic model set and a zonotopic state set cannot be represented algebraically exactly, thereby necessitating over-approximation steps in reachable-set propagation. To remove this structural source of conservatism, we introduce constrained polynomial matrix zonotopes (CPMZs) to represent data-consistent model sets, and show that the multiplication between a CPMZ model set and a constrained polynomial zonotope (CPZ) state set admits an algebraically exact CPZ representation. This property enables set propagation entirely within the CPZ representation, thereby avoiding propagation-induced over-approximation and even…
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