Data-Driven Model Order Reduction of Nonlinear Systems with Noisy Data
Behrad Samari, Henrik Sandberg, Karl H. Johansson, Abolfazl Lavaei

TL;DR
This paper introduces a data-driven approach for creating reduced-order models of nonlinear systems with noisy data, enabling controller design without knowing the exact system models, and ensuring system behavior closely matches the original.
Contribution
It proposes a novel framework that constructs ROMs and simulation functions from noisy data using semidefinite programs, facilitating controller synthesis for unknown nonlinear systems.
Findings
ROMs effectively approximate original system behavior
Controllers designed on ROMs satisfy high-level specifications
Framework validated on complex benchmark systems
Abstract
Model order reduction techniques simplify high-dimensional dynamical systems by deriving lower-dimensional models that retain essential system characteristics. These techniques are crucial for the controller design of complex systems while significantly reducing computational costs. Nevertheless, constructing effective reduced-order models (ROMs) poses considerable challenges, particularly for nonlinear dynamical systems. These challenges are further exacerbated when the actual system model is unavailable, a scenario frequently encountered in real-world applications. In this work, we propose a data-driven framework for constructing ROMs of nonlinear dynamical systems with unknown mathematical models, enabling controller synthesis directly from the resulting ROMs. We establish similarity relations between the output trajectories of the original systems and those of their ROMs by…
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Taxonomy
TopicsModel Reduction and Neural Networks · Real-time simulation and control systems · Modeling and Simulation Systems
