Nonintrusive Reduced-Order Models for Parametric Partial Differential Equations via Data-Driven Operator Inference

Volume: 45, Issue: 4, Pages: A1917 - A1946
Published: Jul 25, 2023
Abstract
This work formulates a new approach to reduced modeling of parameterized, time-dependent partial differential equations (PDEs). The method employs Operator Inference, a scientific machine learning framework combining data-driven learning and physics-based modeling. The parametric structure of the governing equations is embedded directly into the reduced-order model, and parameterized reduced-order operators are learned via a data-driven linear...
Paper Details
Title
Nonintrusive Reduced-Order Models for Parametric Partial Differential Equations via Data-Driven Operator Inference
Published Date
Jul 25, 2023
Volume
45
Issue
4
Pages
A1917 - A1946
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