Abstract
Accurately representing vertical turbulent fluxes in the planetary
boundary layer is vital for moisture and energy transport. Nonetheless,
the parameterization of the boundary layer remains a major source of
inaccuracy in climate models. Recently, machine learning techniques have
gained popularity for representing oceanic and atmospheric processes,
yet their high dimensionality limits interpretability. This study
introduces a new neural network architecture employing non-linear
dimensionality reduction to predict vertical turbulent fluxes in a dry
convective boundary layer. Our method utilizes turbulent kinetic energy
and scalar profiles as input to extract a physically constrained
two-dimensional latent space, providing the necessary yet minimal
information for accurate flux prediction.
We obtained data by coarse-graining Large Eddy Simulations covering a
broad spectrum of boundary layer conditions, from weakly to strongly
unstable. These regimes are employed to constrain the latent space
disentanglement, enhancing interpretability. By applying this
constraint, we decompose the vertical turbulent flux of various scalars
into two main modes of variability: wind shear and convective
transport.
Our data-driven parameterization accurately predicts vertical turbulent
fluxes (heat and passive scalars) across turbulent regimes, surpassing
state-of-the-art schemes like the eddy-diffusivity mass flux scheme. By
projecting each variability mode onto its associated scalar gradient, we
estimate the diffusive flux and learn the eddy diffusivity. The
diffusive flux is found to be significant only in the surface layer for
both modes and becomes negligible in the mixed layer. The retrieved eddy
diffusivity is considerably smaller than previous estimates used in
conventional parameterizations, highlighting the predominant
non-diffusive nature of transport.