Publication | Open Access
A Hybrid Atmospheric Model Incorporating Machine Learning Can Capture Dynamical Processes Not Captured by Its Physics‐Based Component
24
Citations
27
References
2023
Year
EngineeringMachine LearningWeather ForecastingClimate ModelingAtmospheric ModelEarth System ScienceHybrid ModelPhysics‐based ComponentEarth ScienceClimate PhysicsNumerical Weather PredictionData SciencePhysic Aware Machine LearningAtmospheric ScienceSystems EngineeringClimate ProjectionModeling And SimulationAtmospheric ModelingAtmospheric SensingClimate ForecastingHydrometeorologyMeteorologyDynamical ProcessesGeographyForecastingClimate DynamicsClimatologyCumulative PrecipitationAtmospheric ProcessClimate ModellingHigh-resolution Modeling
Abstract It is shown that a recently developed hybrid modeling approach that combines machine learning (ML) with an atmospheric global circulation model (AGCM) can serve as a basis for capturing atmospheric processes not captured by the AGCM. This power of the approach is illustrated by three examples from a decades‐long climate simulation experiment. The first example demonstrates that the hybrid model can produce sudden stratospheric warming, a dynamical process of nature not resolved by the low resolution AGCM component of the hybrid model. The second and third example show that introducing 6‐hr cumulative precipitation and sea surface temperature (SST) as ML‐based prognostic variables improves the precipitation climatology and leads to a realistic ENSO signal in the SST and atmospheric surface pressure.
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