A consistent representation of cloud overlap and cloud subgrid vertical
heterogeneity
Abstract
Many global climate models underestimate the cloud cover and
overestimate the cloud albedo, especially for low-level clouds. We
determine how a correct representation of the vertical structure of
clouds can fix part of this bias. We use the 1D McICA framework and
focus on low-level clouds. Using LES results as reference, we propose a
method based on exponential-random overlap (ERO) that represents the
cloud overlap between layers and the subgrid cloud properties over
several vertical scales, with a single value of the overlap parameter.
Starting from a coarse vertical grid, representative of atmospheric
models, this algorithm is used to generate the vertical profile of the
cloud fraction with a finer vertical resolution, or to generate it on
the coarse grid but with subgrid heterogeneity and cloud overlap that
ensures a correct cloud cover. Doing so we find decorrelation lengths
are dependent on the vertical resolution, except if the vertical subgrid
heterogeneity and interlayer overlap are taken into account coherently.
We confirm that the frequently used maximum-random overlap leads to a
significant error by underestimating the low-level cloud cover with a
relative error of about 50%, that can lead to an error of SW cloud
albedo as big as 70%. Not taking into account the subgrid vertical
heterogeneity of clouds can cause an additional relative error of 20%
in brightness, assuming the cloud cover is correct.