A convective parameterization is described and evaluated that may be used in high resolution non-hydrostatic mesoscale models as well as in modeling system with unstructured varying grid resolutions and for convection aware simulations. This scheme is based on a stochastic approach originally implemented by Grell and Devenyi (2002). Two approaches are tested on resolutions ranging from 20 km to 5 km. One approach is based on spreading subsidence to neighboring grid points, the other one on a recently introduced method by Arakawa et al. (2011). Results from model intercomparisons, as well as verification with observations indicate that both the spreading of the subsidence and Arakawa's approach work well for the highest resolution runs. Beca...
A machine-learning-assisted stochastic cloud population model is coupled with the Advanced Research ...
The last decade has seen the success of stochastic parameterizations in short-term, medium-range and...
The representation of convection in large-scale models remains one of the most difficult problems in...
Clouds are chaotic, difficult to predict, but above all, magnificent natural phenomena. There are di...
Convective parameterizations in general circulation models (GCMs) generally only aim to simulate the...
Idealized cloud-resolving model (CRM) simulations spanning a large part of the tropical atmosphere a...
Observational data of rainfall from a rain radar in Darwin, Australia, are combined with data defini...
Convective entrainment is a process that is poorly represented in existing convective parameterizati...
AbstractUnresolved sub-grid processes, those which are too small or dissipate too quickly to be capt...
Many numerical models for weather prediction and climate studies are run at resolutions that are too...
A method is described for parameterizing thermodynamic forcing by the mesoscale updrafts and downdra...
Conditional Markov chain (CMC) models have proven to be promising building blocks for stochastic con...
A stochastic parameterization scheme for deep convection is described, suitable for use in both clim...
A stochastic parameterization scheme for deep convection is described, suitable for use in both clim...
Observational data of rainfall from a rain radar in Darwin, Australia, are combined with data defini...
A machine-learning-assisted stochastic cloud population model is coupled with the Advanced Research ...
The last decade has seen the success of stochastic parameterizations in short-term, medium-range and...
The representation of convection in large-scale models remains one of the most difficult problems in...
Clouds are chaotic, difficult to predict, but above all, magnificent natural phenomena. There are di...
Convective parameterizations in general circulation models (GCMs) generally only aim to simulate the...
Idealized cloud-resolving model (CRM) simulations spanning a large part of the tropical atmosphere a...
Observational data of rainfall from a rain radar in Darwin, Australia, are combined with data defini...
Convective entrainment is a process that is poorly represented in existing convective parameterizati...
AbstractUnresolved sub-grid processes, those which are too small or dissipate too quickly to be capt...
Many numerical models for weather prediction and climate studies are run at resolutions that are too...
A method is described for parameterizing thermodynamic forcing by the mesoscale updrafts and downdra...
Conditional Markov chain (CMC) models have proven to be promising building blocks for stochastic con...
A stochastic parameterization scheme for deep convection is described, suitable for use in both clim...
A stochastic parameterization scheme for deep convection is described, suitable for use in both clim...
Observational data of rainfall from a rain radar in Darwin, Australia, are combined with data defini...
A machine-learning-assisted stochastic cloud population model is coupled with the Advanced Research ...
The last decade has seen the success of stochastic parameterizations in short-term, medium-range and...
The representation of convection in large-scale models remains one of the most difficult problems in...