Multi-fidelity modeling and uncertainty quantification of heterogeneous roughness

ORAL  · Invited

Abstract

Operational models of the atmosphere used for decision-making, such as numerical weather prediction, cannot resolve atmosphere-surface interactions. Instead, these models use surface parameterizations that typically use deterministic estimates of required input parameters based on morphometric, geometry-based approaches. In this study, we present a method to improve lower fidelity operational models through a closed-loop workflow. We leverage geometry-resolving high-fidelity large eddy simulations (LES) to learn the uncertainties in both mid-fidelity (wall modeled LES) and low-fidelity (RANS) models that parameterize the surface roughness. We achieve this in a computationally tractable manner using a machine learning-accelerated inverse uncertainty quantification approach that reduces the required model evaluations by a thousand-fold. To enhance lower fidelity operational atmospheric models, we address two questions: (1) How can we quantify and reduce uncertainty in parameterizing heterogeneous roughness? (2) To what extent does this reduction lead to improved atmospheric predictions? Focusing on a case study in an idealized urban environment, we evaluate the predictions, with confidence intervals from uncertainty quantification, against morphometric approaches across a range of roughness geometries. Further, we investigate the impact of spatial averaging on assimilated statistics and the assimilation of turbulence statistics beyond wind speed on inversion accuracy.

*This research was performed with the support of the Center for Turbulence Research (CTR) Summer Program 2024 at Stanford University. Y.S. and M.F.H. acknowledge funding from the MIT UMRP program. Y.S. acknowledges gracious support from the MIT MathWorks fellowship. Simulations were performed on the Stampede3 supercomputers under the NSF ACCESS project ATM170028 and on Stanford's Yellowstone supercomputer.

Presenters

  • YoungIn Shin

    • Massachusetts Institute of Technology

Authors

  • YoungIn Shin

    • Massachusetts Institute of Technology
  • Miles J Chan

    • California Institute of Technology
    • Caltech
  • Jianyu Wang

    • Center for Turbulence Research, Stanford University
  • Tony Zahtila

    • Stanford University
  • Catherine Gorle

    • Stanford University
  • Gianluca Iaccarino

    • Stanford University
  • Michael F Howland

    • Massachusetts Institute of Technology