Data-driven local operator finding for reduced-order modelling of plasma systems: I. Concept and verifications
Farbod Faraji, Maryam Reza, Aaron Knoll, and J. Nathan Kutz

TL;DR
This paper introduces the Phi Method, a data-driven algorithm that employs constrained regression to discover reduced-order models of plasma systems, demonstrating high accuracy across various test cases and promising applications in plasma modeling.
Contribution
The paper presents the Phi Method, a novel data-driven approach for deriving reduced-order plasma models using constrained regression on discretized systems, advancing plasma system modeling techniques.
Findings
Phi Method accurately predicts plasma system behavior.
Effective in deriving models from steady-state and transient data.
Validated on Lorenz attractor, flow past cylinder, and plasma simulation.
Abstract
Reduced-order plasma models that can efficiently predict plasma behavior across various settings and configurations are highly sought after yet elusive. The demand for such models has surged in the past decade due to their potential to facilitate scientific research and expedite the development of plasma technologies. In line with the advancements in computational power and data-driven methods, we introduce the "Phi Method" in this two-part article. Part I presents this novel algorithm, which employs constrained regression on a candidate term library informed by numerical discretization schemes to discover discretized systems of differential equations. We demonstrate Phi Method's efficacy in deriving reliable and robust reduced-order models (ROMs) for three test cases: the Lorenz attractor, flow past a cylinder, and a 1D Hall-thruster-representative plasma. Part II will delve into the…
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Taxonomy
TopicsModel Reduction and Neural Networks · Magnetic confinement fusion research · Control Systems and Identification
MethodsLib
