Litcius/Paper detail

Training a convolutional neural network to conserve mass in data assimilation

Yvonne Ruckstuhl, Tijana Janjić, Stephan Rasp

2021Nonlinear processes in geophysics32 citationsDOIOpen Access PDF

Abstract

Abstract. In previous work, it was shown that the preservation of physical properties in the data assimilation framework can significantly reduce forecast errors. Proposed data assimilation methods, such as the quadratic programming ensemble (QPEns) that can impose such constraints on the calculation of the analysis, are computationally more expensive, severely limiting their application to high-dimensional prediction systems as found in Earth sciences. We, therefore, propose using a convolutional neural network (CNN) trained on the difference between the analysis produced by a standard ensemble Kalman filter (EnKF) and the QPEns to correct any violations of imposed constraints. In this paper, we focus on the conservation of mass and show that, in an idealised set-up, the hybrid of a CNN and the EnKF is capable of reducing analysis and background errors to the same level as the QPEns.

Topics & Concepts

Data assimilationComputer scienceEnsemble Kalman filterConvolutional neural networkKalman filterFocus (optics)Quadratic equationAlgorithmMachine learningArtificial intelligenceExtended Kalman filterMathematicsMeteorologyGeometryPhysicsOpticsMeteorological Phenomena and SimulationsClimate variability and modelsHydrological Forecasting Using AI