There is a newer version of the record available.

Published November 2024 | Version v2
Dataset Open

RECON - Cell-scale atmospheric moisture flows dataset reconciled with ERA5 reanalysis

  • 1. ROR icon Polytechnic University of Turin
  • 2. ROR icon Utrecht University
  • 1. ROR icon Polytechnic University of Turin
  • 2. ROR icon Princeton University
  • 3. ROR icon Utrecht University

Description

The RECON dataset provides moisture flow volumes, in cubic meters, from evaporation sources to precipitation targets and vice versa. It offers global coverage at a resolution of 0.5° for an average year based on the period 2008–2017. It is a post-processed version of the Lagrangian (forward trajectory-based) tracking model UTrack dataset (DOI UTrack dataset: 10.1594/PANGAEA.912710, DOI Utrack support paper: 10.5194/essd-12-3177-2020), by means of Iterative Proportional Fitting procedure and ERA5 preprocessing.
Data are stored in integers that need to be transformed into cubic meters, as explained in the supplement material pdf file. 
More information on the generation of the dataset, authors of the dataset, input variable information and data extraction with simple python scripts are provided in our official GitHub repository.

We provide the following files:

  • RECON_moisture_flows_0.5.nc.7z: is a compressed/packed version of the NetCDF4 RECON dataset. To get the NetCDF dataset file, follow the instructions in the supplement guide (RECON_supplementary_guide.pdf)
  • ERA5_m_0.5_volumes_corrected.nc where m is the month: our own edited version of monthly averaged ERA5 data, that have been used to retrieve moisture volume flows from the Utrack dataset, as explained in our official GitHub repository
  • RECON_ERA5_avgYear_0.5_volumes.nc: our own edited version of yearly averaged ERA5 data, that have been used to postprocess moisture volume flows retrieved from the UTrack dataset in order to get the RECON dataset, as explained in our official GitHub repository

By sharing these ERA5 files, we provide means for reproducibility of our postprocessing framework.

Files

RECON_supplementary_guide.pdf

Files (17.5 GB)

Name Size Download all
md5:d214f6c715cd76b2bb8f98f196196813
4.2 MB Download
md5:7243c992ce106dbc3ae6bb53e73fc96b
4.2 MB Download
md5:05f54ef939c6a7de502aa09a1971ae21
4.2 MB Download
md5:bf24426cc499c994f6ddee8c5bc5f1f5
4.2 MB Download
md5:20ee69dd661242405941bfb0f988068f
4.2 MB Download
md5:be2c763f4f10b723599f8aceb9e0a6da
4.2 MB Download
md5:8c11862e9b6b9db39d53f9f90a149b87
4.2 MB Download
md5:0977126fa4c1699c06d4960c37713820
4.2 MB Download
md5:00c613dec2b862aa13c4678a5d4db778
4.2 MB Download
md5:428f62c0c130f33d151f07aaf2366e64
4.2 MB Download
md5:90be87cf8d94e76e107855f674d1ed7f
4.2 MB Download
md5:585f077a403d12430db1f21511961216
4.2 MB Download
md5:0332437e9dfadc68855ab98252dffc18
2.1 MB Download
md5:4c8029d3cfbd8c3cbb8ab8dc86aa77ed
17.4 GB Download
md5:eb15e89c440098e1d669c0813b46923e
168.1 kB Preview Download

Additional details

Related works

Dates

Updated
2025-03-14

Software

References

  • De Petrillo, E., Monaco, L., Tuninetti, M., Staal, A., & Laio, F. (2024). Cell-scale atmospheric moisture flows dataset reconciled with ERA5 reanalysis