Deep Learning–Based Parameter Transfer in Meteorological Data

Author(s)
Fatemeh Farokhmanesh, Kevin Höhlein, Tobias Necker, Martin Weissmann
Abstract

Numerical simulations in Earth-system sciences consider a multitude of physical parameters in space and time, leading to severe input/output (I/O) bandwidth requirements and challenges in subsequent data analysis tasks. Deep learning–based identification of redundant parameters and prediction of those from other parameters, that is, variable-to-variable (V2V) transfer, has been proposed as an approach to lessening the bandwidth requirements and streamlining subsequent data analysis. In this paper, we examine the applicability of V2V to meteorological reanalysis data. We find that redundancies within pairs of parameter fields are limited, which hinders application of the original V2V algorithm. Therefore, we assess the predictive strength of reanalysis parameters by analyzing the learning behavior of V2V reconstruction networks in an ablation study. We demonstrate that efficient V2V transfer becomes possible when considering groups of parameter fields for transfer and propose an algorithm to implement this. We investigate further whether the neural networks trained in the V2V process can yield insightful representations of recurring patterns in the data. The interpretability of these representations is assessed via layerwise relevance propagation that highlights field areas and parameters of high importance for the reconstruction model. Applied to reanalysis data, this allows for uncovering mutual relationships between landscape orography and different regional weather situations. We see our approach as an effective means to reduce bandwidth requirements in numerical weather simulations, which can be used on top of conventional data compression schemes. The proposed identification of multiparameter features can spawn further research on the importance of regional weather situations for parameter prediction and also in other kinds of simulation data.

Organisation(s)
Department of Meteorology and Geophysics
External organisation(s)
Technische Universität München
Journal
Artificial Intelligence for the Earth Systems
Volume
2
ISSN
2769-7525
DOI
https://doi.org/10.1175/AIES-D-22-0024.1
Publication date
2023
Peer reviewed
Yes
Austrian Fields of Science 2012
105206 Meteorology
Portal url
https://ucrisportal.univie.ac.at/en/publications/deep-learningbased-parameter-transfer-in-meteorological-data(72811d7d-589c-4d52-acfc-1a21fb0d5365).html