Publication | Open Access
Unprecedented cloud resolution in a GPU-enabled full-physics atmospheric climate simulation on OLCF’s summit supercomputer
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Citations
28
References
2021
Year
EngineeringClimate ModelingAtmospheric ModelEarth System ScienceEarth ScienceGpu ComputingClimate PhysicsCloud ResolutionKey UncertaintyAtmospheric ScienceModeling And SimulationParallel ComputingAtmospheric ModelingMmf CodeCloud DynamicComputer EngineeringLarge-scale SimulationClimatologyCloud ComputingE3sm-mmf CrmClimate ModellingHigh-resolution Modeling
Clouds represent a key uncertainty in future climate projection. While explicit cloud resolution remains beyond our computational grasp for global climate, we can incorporate important cloud effects through a computational middle ground called the Multi-scale Modeling Framework (MMF), also known as Super Parameterization. This algorithmic approach embeds high-resolution Cloud Resolving Models (CRMs) to represent moist convective processes within each grid column in a Global Climate Model (GCM). The MMF code requires no parallel data transfers and provides a self-contained target for acceleration. This study investigates the performance of the Energy Exascale Earth System Model-MMF (E3SM-MMF) code on the OLCF Summit supercomputer at an unprecedented scale of simulation. Hundreds of kernels in the roughly 10K lines of code in the E3SM-MMF CRM were ported to GPUs with OpenACC directives. A high-resolution benchmark using 4600 nodes on Summit demonstrates the computational capability of the GPU-enabled E3SM-MMF code in a full physics climate simulation.
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