Computational Flow Physics

UC San Diego | Jacobs School of Engineering | Mechanical and Aerospace Engineering

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Welcome to the Computational Flow Physics Group at UC San Diego! We develop advanced numerical simulation and data-driven analysis tools to understand, model, and predict turbulent and multiphysics flows in engineering and nature. Our work combines high-fidelity computation with modal decomposition and feature extraction to reveal coherent flow structures and translate them into predictive reduced-order models for forecasting and optimization. We focus on aerospace problems, including jet noise control, unsteady aerodynamics and aeroacoustics, transition, dynamic stall, aero-optics, and hypersonics. While our work is grounded in physics-based modeling, we also curiously explore where modern machine learning can complement first-principles simulation, statistical methods, and classical closure techniques. Beyond aerospace, our methods extend to complex geophysical flows, with applications in atmospheric science and physical oceanography.

News

Dec 19, 2025

Forecasting how real-world flows evolve is notoriously challenging. Take a look at our new article (Schmidt, 2026) on Space–Time Projection for forecasting high-dimensional transient and stationary flows. RSPA 2026 article graphic

Dec 11, 2025

Computational Flow Physics Group annual holiday dinner—2025 edition! Group Holiday Dinner

Dec 01, 2025

Congratulations to Cong Lin on our CMAME paper (Frame et al., 2025), and many thanks to Peter Frame and Aaron Towne for a fantastic collaboration with two outstanding researchers. We also highly recommend Peter and Aaron’s extension of the framework to fully nonlinear models (arXiv:2411.13531). Frame et al. 2025 CMAME figure

Oct 01, 2025

Congratulations to Tianyi Chu on our Proceedings of the Royal Society A paper (Chu & Schmidt, 2025) on stochastic reduced-order Koopman modeling for turbulent flows. PRSA paper graphic

To put our method into perspective within the zoo of data-driven and operator-based approaches, Tianyi's figure below provides an overview of basis-identification strategies for model order reduction: PRSA paper graphic

Sep 17, 2025

Happy to share our JFM paper (Sato & Schmidt, 2025) on parametric reduced-order modeling and mode sensitivity—huge thanks and congratulations to my colleague Shintaro Sato for leading this work. Sato & Schmidt 2025 JFM figure

Sep 04, 2025

Excited to share our JFM paper (Nekkanti et al., 2025) on time-delay modeling and coherent-structure dynamics in jets—thank you Akhil Nekkanti and Tim Colonius; it's always a pleasure collaborating! Nekkanti et al. 2025 JFM figure

Sep 02, 2025

Big congratulations to Brandon Yeung for the great work on our JFM paper (Yeung & Schmidt, 2025) exploring spectral dynamics of natural and forced supersonic twin-rectangular jets. Yeung & Schmidt 2025 JFM figure

May 19, 2025

Schmid happens! Hosting Peter Schmid during his Penner Lecture visit. Group with Peter Schmid during Penner Lecture visit

Feb 01, 2025

Our CPC paper on Robust SPOD (Colanera et al., 2025) is out—many thanks to our collaborators Antonio Colanera and Matteo Chiatto from the University of Naples Federico II. RSPA 2026 article graphic

Recent Publications

  1. Stochastic reduced-order Koopman model for turbulent flows
    T. Chu, and O. T. Schmidt
    Proceedings of the Royal Society A, 2025, 481(2323), 20250270
  2. Parametric reduced-order modelling and mode sensitivity of actuated cylinder flow from a matrix manifold perspective
    S. Sato, and O. T. Schmidt
    Journal of Fluid Mechanics, 2025, 1021, A44
  3. Spectral dynamics of natural and forced supersonic twin-rectangular jet flow
    B. Yeung, and O. T. Schmidt
    Journal of Fluid Mechanics, 2025, 1018, A34
  4. Nonlinear dynamics of vortex pairing in transitional jets
    A. Nekkanti, T. Colonius, and O. T. Schmidt
    Journal of Fluid Mechanics, 2025, 1018, A32
  5. Linear model reduction using spectral proper orthogonal decomposition
    P. Frame, C. Lin, O. T. Schmidt, and 1 more author
    Computer Methods in Applied Mechanics and Engineering, 2025, 447, 118382
  6. Robust spectral proper orthogonal decomposition
    A. Colanera, O. T. Schmidt, and M. Chiatto
    Computer Physics Communications, 2025, 307, 109432
  7. Data-driven forecasting of high-dimensional transient and stationary processes via space–time projection
    O. T. Schmidt
    Proceedings of the Royal Society A, 2026, 482, 20250454

Support & Acknowledgments

We are grateful for the support of the U.S. National Science Foundation, the U.S. Department of Energy, the U.S. Air Force Office of Scientific Research,the U.S. Office of Naval Research, the U.S. Army Research Office, and the NISEC and ACCORD centers. We sincerely thank the program officers and center leadership for their sustained commitment to fundamental research and its translation to impactful applications.