Brian Greene - March 24

Note: As part of the Spring 2020 the online framework, BUL seminars are offered live only to enrolled students and the speaker’s adviser(s) and committee. The live sessions are recorded and made available via the seminar’s mailing list and the BUL website.   Characterizing Turbulence in Arctic Stable Boundary Layers During

Start

March 24, 2020

End

March 24, 2020

Address

120 David L. Boren Blvd, Norman, OK 73072   View map

Note: As part of the Spring 2020 the online framework, BUL seminars are offered live only to enrolled students and the speaker’s adviser(s) and committee. The live sessions are recorded and made available via the seminar’s mailing list and the BUL website.

 

Characterizing Turbulence in Arctic Stable Boundary Layers During ISOBAR 2018

Brian Greene – Ph.D. Student, School of Meteorology

 

RECORDING AVAILABLE HERE: https://youtu.be/6mAFiUonFjI

Questions can be directed to the speaker at Brian.greene@ou.edu

 

Abstract: Operational numerical weather prediction models typically have effective resolutions too coarse to resolve turbulent processes in the planetary boundary layer (PBL). To overcome this restriction, models rely on turbulence closure schemes in PBL parameterizations to represent exchanges of momentum, heat, and moisture in the lower atmosphere. One common implementation of turbulence closure is through Monin-Obukhov similarity theory (MOST), which non-dimensionalizes vertical gradients of momentum, temperature, and water vapor by scaling with estimates of their respective surface fluxes. The MOST scaling relationships and resulting profiles of momentum, heat, and moisture therefore have the advantage of considerably reducing the computational expense of forecasting these parameters. While MOST has been empirically shown to perform well in unstably stratified atmospheres, it is unable to differentiate between near-neutral and strongly stable regimes due to ill-defined scaling parameters based on weak and intermittent fluxes.

Recent studies using large datasets in the stable boundary layer (SBL; e.g., the SHEBA campaign) have shown success with a turbulence scaling framework based on local vertical gradients of temperature and wind. While formally equivalent to MOST, gradient-based scaling as a function of Richardson number holds several advantages, namely that the scales are well-defined in the SBL and it does not suffer from self-correlation. Therefore, when the stability functions are known, it is possible to estimate vertical profiles of turbulent parameters by only measuring vertical gradients of wind speed and temperature. This task is therefore well-suited to study using in-situ observations from remotely piloted aircraft systems (RPAS).

The Innovative Strategies for Observations in the Arctic Atmospheric Boundary Layer (ISOBAR) field campaigns took place in February 2017 and 2018 on the island of Hailuoto, Finland. This location was chosen specifically for its seasonal sea ice along the coast, allowing for Arctic stable boundary layers to evolve in the evenings. An innovative combination of RPAS, surface eddy covariance towers, sodars, and a Doppler wind lidar was leveraged to improve the conceptual understanding of SBLs over sea ice in the Bothnian Bay.

The present study will begin with an overview of turbulence scaling in the SBL and a description of the 2018 ISOBAR field campaign. Results from gradient-based scaling from eddy covariance observations will be presented, and a framework of how to extend this theory to RPAS observations will be discussed. Finally, representative cases for different stability regimes will be analyzed to gain insight towards how energy is exchanged throughout Arctic SBLs.