Litcius/Paper detail

Producing realistic climate data with generative adversarial networks

Camille Besombes, Olivier Pannekoucke, Corentin Lapeyre, Benjamin M. Sanderson, Olivier Thual

2021Nonlinear processes in geophysics31 citationsDOIOpen Access PDF

Abstract

Abstract. This paper investigates the potential of a Wasserstein generative adversarial network to produce realistic weather situations when trained from the climate of a general circulation model (GCM). To do so, a convolutional neural network architecture is proposed for the generator and trained on a synthetic climate database, computed using a simple three dimensional climate model: PLASIM. The generator transforms a “latent space”, defined by a 64-dimensional Gaussian distribution, into spatially defined anomalies on the same output grid as PLASIM. The analysis of the statistics in the leading empirical orthogonal functions shows that the generator is able to reproduce many aspects of the multivariate distribution of the synthetic climate. Moreover, generated states reproduce the leading geostrophic balance present in the atmosphere. The ability to represent the climate state in a compact, dense and potentially nonlinear latent space opens new perspectives in the analysis and handling of the climate. This contribution discusses the exploration of the extremes close to a given state and how to connect two realistic weather situations with this approach.

Topics & Concepts

Computer scienceClimate modelGenerator (circuit theory)Synthetic dataEmpirical orthogonal functionsDownscalingGridAutoregressive modelArtificial intelligenceClimate changeMeteorologyMachine learningEconometricsMathematicsPrecipitationGeographyGeologyGeometryQuantum mechanicsOceanographyPhysicsPower (physics)Climate variability and modelsMeteorological Phenomena and SimulationsComputational Physics and Python Applications
Producing realistic climate data with generative adversarial networks | Litcius