A micro-genetic algorithm (GA v1.7.1a) for combinatorial optimization of physics parameterizations in the Weather Research and Forecasting model (v4.0.3) for quantitative precipitation forecast in Korea
2021
Abstract. One of the biggest uncertainties in numerical weather
predictions (NWPs) comes from treating the subgrid-scale physical processes.
For more accurate regional weather and climate prediction by improving
physics parameterizations, it is important to optimize a combination of
physics schemes and unknown parameters in NWP models. We have
developed an interface system between a micro-genetic algorithm ( µ -GA)
and the WRF model for the combinatorial optimization of cumulus (CU),
microphysics (MP), and planetary boundary layer (PBL) schemes in terms of
quantitative precipitation forecast for heavy rainfall events in Korea. The
µ -GA successfully improved simulated precipitation despite the
nonlinear relationship among the physics schemes. During the evolution
process, MP schemes control grid-resolving-scale precipitation, while CU and
PBL schemes determine subgrid-scale precipitation. This study
demonstrates that the combinatorial optimization of physics schemes in the WRF
model is one possible solution to enhance the forecast skill of
precipitation.
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