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A DeepONet multi-fidelity approach for residual learning in reduced order modeling

Nicola Demo, Marco Tezzele, Gianluigi Rozza

2023Advanced Modeling and Simulation in Engineering Sciences23 citationsDOIOpen Access PDF

Abstract

Abstract In the present work, we introduce a novel approach to enhance the precision of reduced order models by exploiting a multi-fidelity perspective and DeepONets. Reduced models provide a real-time numerical approximation by simplifying the original model. The error introduced by the such operation is usually neglected and sacrificed in order to reach a fast computation. We propose to couple the model reduction to a machine learning residual learning, such that the above-mentioned error can be learned by a neural network and inferred for new predictions. We emphasize that the framework maximizes the exploitation of high-fidelity information, using it for building the reduced order model and for learning the residual. In this work, we explore the integration of proper orthogonal decomposition (POD), and gappy POD for sensors data, with the recent DeepONet architecture. Numerical investigations for a parametric benchmark function and a nonlinear parametric Navier-Stokes problem are presented.

Topics & Concepts

ResidualComputer scienceOrder (exchange)High fidelityComputational Science and EngineeringArtificial intelligenceMachine learningAlgorithmEngineeringEconomicsElectrical engineeringFinanceModel Reduction and Neural NetworksNuclear Engineering Thermal-HydraulicsNuclear reactor physics and engineering
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