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Brian Cantwell

Brian Cantwell

· Edward C. Wells Professor in the School of Engineering and Professor of Mechanical Engineering, EmeritusVerified

Stanford University · Aeronautics and Astronautics

Active 1973–2024

h-index45
Citations12.3k
Papers24823 last 5y
Funding
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Research topics

  • Mechanics
  • Physics

Selected publications

  • A universal velocity profile for turbulent wall flows including adverse pressure gradient boundary layers

    Journal of Fluid Mechanics · 2021 · 40 citations

    • Mechanics
    • Physics

    A recently developed mixing length model of the turbulent shear stress in pipe flow is used to solve the streamwise momentum equation for fully developed channel flow. The solution for the velocity profile takes the form of an integral that is uniformly valid from the wall to the channel centreline at all Reynolds numbers from zero to infinity. The universal velocity profile accurately approximates channel flow direct numerical simulation (DNS) data taken from several sources. The universal velocity profile also provides a remarkably accurate fit to simulated and experimental flat plate turbulent boundary layer data including zero and adverse pressure gradient data. The mixing length model has five free parameters that are selected through an optimization process to provide an accurate fit to data in the range $R_\tau = 550$ to $R_\tau = 17\,207$ . Because the velocity profile is directly related to the Reynolds shear stress, certain statistical properties of the flow can be studied such as turbulent kinetic energy production. The examples presented here include numerically simulated channel flow data from $R_\tau = 550$ to $R_\tau =8016$ , zero pressure gradient (ZPG) boundary layer simulations from $R_\tau =1343$ to $R_\tau = 2571$ , zero pressure gradient turbulent boundary layer experimental data between $R_\tau = 2109$ and $R_\tau = 17\,207$ , and adverse pressure gradient boundary layer data in the range $R_\tau = 912$ to $R_\tau = 3587$ . An important finding is that the model parameters that characterize the near-wall flow do not depend on the pressure gradient. It is suggested that the new velocity profile provides a useful replacement for the classical wall-wake formulation.

Frequent coauthors

  • Greg Zilliac

    Ames Research Center

    24 shared
  • Arif Karabeyoğlu

    Koç University

    23 shared
  • Flora S. Mechentel

    Jet Propulsion Laboratory

    12 shared
  • Keith Javier Stober

    Massachusetts Institute of Technology

    12 shared
  • Pavan Narsai

    Vaughn College of Aeronautics and Technology

    12 shared
  • Julio Soria

    12 shared
  • Nicholas Rott

    12 shared
  • David Dyrda

    Stanford University

    12 shared

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