Convective cloud size distributions in idealized cloud resolving model
simulations
- Julien Savre,
- George C. Craig
George C. Craig
Institute of Meteorology - University of Munich
Author ProfileAbstract
It is now widely accepted that cumulus cloud size distributions follow
power-laws, at least over part of the cloud size spectrum. Providing
reliable fits to empirical size distributions is however not a simple
task, and this is reflected by the large spread in power-law exponents
reported in the literature. Two well-documented idealized
high-resolution numerical simulations of convective situations are here
performed and analyzed in order to gain a clearer understanding of
cumulus size distributions. Advanced statistical methods, including
maximum likelihood estimators and goodness-of-fit tests, are employed to
produce the most accurate fits possible. Various candidate distributions
are tested including exponentials, power-laws and other heavy-tail
functions. Size distributions estimated from clouds identified just
above cloud base are found to be best modeled by exponential
distributions. If one considers instead clouds identified from an
integrated condensed water path, robust power-law behaviors start to
emerge, in particular when deep convection is involved. In general
however, these empirical distributions are best represented by
alternative heavy-tail distributions such as the Weibull or cutoff
power-law distributions. In an attempt to explain these results, it is
suggested that exponential size distributions characterize a population
where clouds interact only weakly, whereas heavy-tail distributions are
the manifestation of a cloud population that self-organizes towards a
critical state.