M‐ENIAC: A Physics‐Informed Machine Learning Recreation of the First Successful Numerical Weather Forecasts
Rüdiger Brecht, Alex Bihlo
Abstract
Abstract In 1950 the first successful numerical weather forecast was obtained by solving the barotropic vorticity equation using the Electronic Numerical Integrator and Computer (ENIAC), which marked the beginning of the age of numerical weather prediction. Here, we ask the question of how these numerical forecasts would have turned out, if machine learning based solvers had been used instead of standard numerical discretizations. Specifically, we recreate these numerical forecasts using physics‐informed neural networks. We show that physics‐informed neural networks provide an easier and more accurate methodology for solving meteorological equations on the sphere, as compared to the ENIAC solver.
Topics & Concepts
Numerical weather predictionMeteorologyWeather predictionRecreationComputer scienceEnvironmental sciencePhysicsPolitical scienceLawMeteorological Phenomena and SimulationsModel Reduction and Neural NetworksComputational Physics and Python Applications