AtmoDist: Self-supervised Representation Learning for Atmospheric Dynamics

02/02/2022
by   Sebastian Hoffmann, et al.
12

Representation learning has proven to be a powerful methodology in a wide variety of machine learning applications. For atmospheric dynamics, however, it has so far not been considered, arguably due to the lack of large-scale, labeled datasets that could be used for training. In this work, we show that the difficulty is benign and introduce a self-supervised learning task that defines a categorical loss for a wide variety of unlabeled atmospheric datasets. Specifically, we train a neural network on the simple yet intricate task of predicting the temporal distance between atmospheric fields, e.g. the components of the wind field, from distinct but nearby times. Despite this simplicity, a neural network will provide good predictions only when it develops an internal representation that captures intrinsic aspects of atmospheric dynamics. We demonstrate this by introducing a data-driven distance metric for atmospheric states based on representations learned from ERA5 reanalysis. When employ as a loss function for downscaling, this Atmodist distance leads to downscaled fields that match the true statistics more closely than the previous state-of-the-art based on an l2-loss and whose local behavior is more realistic. Since it is derived from observational data, AtmoDist also provides a novel perspective on atmospheric predictability.

READ FULL TEXT

page 5

page 6

page 9

page 11

page 13

page 14

page 15

page 16

research
09/19/2021

Towards Representation Learning for Atmospheric Dynamics

The prediction of future climate scenarios under anthropogenic forcing i...
research
08/25/2023

AtmoRep: A stochastic model of atmosphere dynamics using large scale representation learning

The atmosphere affects humans in a multitude of ways, from loss of life ...
research
03/28/2021

Representation Learning by Ranking under multiple tasks

In recent years, representation learning has become the research focus o...
research
09/21/2023

A Study of Forward-Forward Algorithm for Self-Supervised Learning

Self-supervised representation learning has seen remarkable progress in ...
research
06/07/2019

Evolving Losses for Unlabeled Video Representation Learning

We present a new method to learn video representations from unlabeled da...
research
07/01/2020

On Linear Identifiability of Learned Representations

Identifiability is a desirable property of a statistical model: it impli...

Please sign up or login with your details

Forgot password? Click here to reset