Nonlinear Dynamics: Model Reduction & Turbulence III

ORAL · H31 · ID: 22881





Presentations

  • ORAL

    Publication: J. L. Callaham, S. L. Brunton, and J.-Ch. Loiseau. On the role of nonlinear correlations in reduced-order modeling (2021). https://arxiv.org/abs/2106.02409

    Presenters

    • Jared Callaham

      • University of Washington

    Authors

    • Jared Callaham

      • University of Washington
    • Steven L Brunton

      • University of Washington
      • University of Washington, Seattle
    • Jean-Christophe Loiseau

      • Arts et Metiers Institute of Technology, HESAM Universite

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  • ORAL

    Presenters

    • SURYAPRATIM CHAKRABARTI

      • Ohio State University

    Authors

    • SURYAPRATIM CHAKRABARTI

      • Ohio State University
    • Arvind T Mohan

      • Los Alamos National Laboratory
      • Computational Physics and Methods Group, Los Alamos National Laboratory
      • Los Alamos National Laboratory, Los Alamos, NM, USA
    • Daniel Livescu

      • Los Alamos Natl Lab
      • Los Alamos National Laboratory
    • Datta V Gaitonde

      • Ohio State Univ - Columbus

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  • ORAL

    Publication: Anderson, W., & Farazmand, M. (2021). Evolution of nonlinear reduced-order solutions for PDEs with conserved quantities. In review. arXiv preprint arXiv:2104.13515.

    Presenters

    • Mohammad M Farazmand

      • North Carolina State University

    Authors

    • Mohammad M Farazmand

      • North Carolina State University
    • William Anderson

      • North Carolina State University

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  • ORAL

    Publication: Farghadan, A., Towne, A., Martini, E., & Cavalieri, A. V. G. (2021). "A randomized time-domain algorithm for efficiently computing resolvent modes", AIAA Aviation 2021 Forum.

    Presenters

    • Ali Farghadan

      • University of Michigan

    Authors

    • Ali Farghadan

      • University of Michigan
    • Eduardo Martini

      • Institut Pprime CNRS, Université de Poitiers ENSMA
      • Université de Poitiers
    • André Cavalieri

      • Divisão de Engenharia Aeronáutica, Instituto Tecnológico de Aeronáutica
      • Instituto Tecnológico de Aeronáutica
    • Aaron S Towne

      • University of Michigan

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  • ORAL

    Presenters

    • Vedasri Godavarthi

      • University of California, Los Angeles

    Authors

    • Vedasri Godavarthi

      • University of California, Los Angeles
    • Yoji Kawamura

      • Center for Mathematical Science and Advanced Technology, Japan Agency for Marine-Earth Science and Technology.
    • Kunihiko Taira

      • University of California, Los Angeles
      • UCLA

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  • ORAL

    Publication: "Objective discovery of dominant dynamical processes with machine learning" is currently under review by Nature (https://www.researchsquare.com/article/rs-745356/v1) and a draft is available on arxiv (https://arxiv.org/abs/2106.12963)

    Presenters

    • Bryan Kaiser

      • Los Alamos National Laboratory

    Authors

    • Bryan Kaiser

      • Los Alamos National Laboratory
    • Juan A Saenz

      • Los Alamos National Laboratory
    • Maike Sonnewald

      • Princeton University, NOAA/OAR Geophysical Fluid Dynamics Laboratory, & the University of Washington
    • Daniel Livescu

      • Los Alamos Natl Lab
      • Los Alamos National Laboratory

    View abstract →