Advancements on Multi-Fidelity Random Fourier Neural Networks: Application to Hurricane Modeling for Wind Energy

Owen Davis, Gianluca Geraci, Jacqueline Wentz, Ryan King, Alexandre Cortiella, Alex Rybchuk, Miguel Sanchez Gomez, Georgios Deskos, Mohammad Motamed

Research output: Contribution to conferencePaper

Abstract

Multi-fidelity approaches are emerging as effective strategies in computational science to handle otherwise intractable tasks like Uncertainty Quantification (UQ), training of Machine Learning (ML) models, and optimization, for expensive high-fidelity applications in which the amount of available simulations or data is limited. The main idea is simple: large datasets generated for low-fidelity approximations of the problem at hand are fused with a much sparser dataset for the target (high-fidelity) system. In this paper, we build on our recent success in designing random Fourier Neural Networks (rFNNs) [1] to target problems arising in wind energy applications and in particular problems of interest for hurricane modeling. In this context, data for the high-fidelity models are limited and lower fidelity alternatives are needed. In this work, we introduce a novel multi-fidelity training approach for our rFNNs and demonstrate its use on a simple verification problem and on a hurricane modeling problem in which high-fidelity data are generated via Large-Eddy Simulations (LES), while low-fidelity data are given by a mesoscale model. Initial results demonstrate how the multi-fidelity training approach can improve the quality of the resulting surrogate.
Original languageAmerican English
Number of pages22
DOIs
StatePublished - 2025
EventAIAA SCITECH 2025 Forum - Orlando, Florida
Duration: 6 Jan 202510 Jan 2025

Conference

ConferenceAIAA SCITECH 2025 Forum
CityOrlando, Florida
Period6/01/2510/01/25

NREL Publication Number

  • NREL/CP-2C00-94354

Keywords

  • Fourier Neural Networks
  • large-eddy simulations
  • machine learning

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