Model Order Reduction from Data with Certification
Journal:
arXiv
Published Date:
Feb 3, 2025
Abstract
Model order reduction (MOR) involves offering low-dimensional models that
effectively approximate the behavior of complex high-order systems. Due to
potential model complexities and computational costs, designing controllers for
high-dimensional systems with complex behaviors can be challenging, rendering
MOR a practical alternative to achieve results that closely resemble those of
the original complex systems. To construct such effective reduced-order models
(ROMs), existing literature generally necessitates precise knowledge of
original systems, which is often unavailable in real-world scenarios. This
paper introduces a data-driven scheme to construct ROMs of dynamical systems
with unknown mathematical models. Our methodology leverages data and
establishes similarity relations between output trajectories of unknown systems
and their data-driven ROMs via the notion of simulation functions (SFs),
capable of formally quantifying their closeness. To achieve this, under a rank
condition readily fulfillable using data, we collect only two input-state
trajectories from unknown systems to construct both ROMs and SFs, while
offering correctness guarantees. We demonstrate that the proposed ROMs derived
from data can be leveraged for controller synthesis endeavors while effectively
ensuring high-level logic properties over unknown dynamical models. We showcase
our data-driven findings across a range of benchmark scenarios involving
various unknown physical systems, demonstrating the enforcement of diverse
complex properties.