Data assimilation empowered neural network parametrizations for subgrid processes in geophysical flows
Suraj Pawar, Omer San
Abstract
Modeling the effect of subgrid-scale processes is one of the main obstacles in the accurate prediction of multiscale systems. An investigation considers how machine learning methods can be applied to model subgrid-scale processes and integrated within sequential data assimilation methods. It is found that the use of machine-learning-based closure modeling in conjunction with data assimilation improves the prediction of multiscale systems and can be considered a promising approach to numerical weather prediction tasks in the age of data.
Topics & Concepts
Data assimilationComputer scienceArtificial neural networkClosure (psychology)Numerical weather predictionMachine learningScale (ratio)Artificial intelligenceData miningMeteorologyGeologyClimatologyGeographyMarket economyEconomicsCartographyMeteorological Phenomena and SimulationsEnergy Load and Power ForecastingHydrological Forecasting Using AI