Published July 6, 2022 | Version 1.1.0
Dataset Open

Data archive for "Seamless lightning nowcasting with recurrent-convolutional deep learning"

  • 1. MeteoSwiss

Description

This dataset contains the machine learning training data files, pretrained model weights and precomputed results for the paper "Seamless lightning nowcasting with recurrent-convolutional deep learning" published in:
Leinonen, J., Hamann, U., & Germann, U. (2022). Seamless Lightning Nowcasting with Recurrent-Convolutional Deep Learning, Artificial Intelligence for the Earth Systems, 1(4), e220043, doi:10.1175/AIES-D-22-0043.1.
A preprint of the paper can be found at https://arxiv.org/abs/2203.10114.

The ML code can be found at https://github.com/MeteoSwiss/c4dl-lightningdl. Download all the files here and extract the contents to the following subdirectories in the ML code directory:

Additionally, the file c4dl-randomexamples-lightningdl.zip contains the randomly selected examples complementing Figs. 7–9 of the paper, and the file c4dl-inputsamples-lightningdl.zip contains figures showing samples of all the input variables for the three cases shown in Figs. 7–9.

Notes

The work of JL was supported by the fellowship "Seamless Artificially Intelligent Thunderstorm Nowcasts" from the European Organisation for the Exploitation of Meteorological Satellites (EUMETSAT). The hosting institution of this fellowship is MeteoSwiss in Switzerland.

Files

c4dl-inputsamples-lightningdl.zip

Files (17.6 GB)

Name Size Download all
md5:a58842c028485c020a7466ab0e849621
2.0 MB Preview Download
md5:b0984f840946cfd27c225740c0cc91a2
316.0 MB Preview Download
md5:d0ae48e9ab0d02ff99e92cf774aa8722
1.6 MB Preview Download
md5:24cb46b574ab05f335b76f9acbada120
59.1 MB Preview Download
md5:0033b1782a4255959ccd39968317eec7
655.6 kB Preview Download
md5:6ea014e2ffc45d417db7b4f3e02a25fb
966.3 MB Preview Download
md5:1d7a14104405d4584a397c499e08fc9c
3.1 GB Preview Download
md5:bb15ebe519b07d6048c2e0a4d4583cbe
4.1 GB Preview Download
md5:bdb76bc0f34228026671d1d78b9f8ca5
3.8 GB Preview Download
md5:9e4b07abdcc824a4c4763c8b5400928f
4.1 GB Preview Download
md5:7a51c1458e6707d296fd1db12f4ae434
1.2 GB Preview Download
md5:5cfdc1f90c3baf6e95e1c5de0e5b64d3
2.1 MB Preview Download
md5:fda02339a461bf75bd8cfc78890e59cd
641.8 kB Preview Download

Additional details

Related works

Is supplement to
Preprint: arXiv:2203.10114 (arXiv)
Software: https://github.com/MeteoSwiss/c4dl-lightningdl (URL)
Journal article: 10.1175/AIES-D-22-0043.1 (DOI)