There is a newer version of the record available.

Published February 14, 2024 | Version 1.5
Dataset Open

GHOST: A globally harmonised dataset of surface atmospheric composition measurements

  • 1. ROR icon Barcelona Supercomputing Center
  • 1. ROR icon Barcelona Supercomputing Center
  • 2. ROR icon World Meteorological Organization
  • 3. ROR icon Institució Catalana de Recerca i Estudis Avançats
  • 4. Secretaría del Medio Ambiente de la Ciudad de México
  • 5. ROR icon Environmental Protection Agency
  • 6. ROR icon National Atmospheric Deposition Program
  • 7. Federal Office of Meteorology and Climatology MeteoSwiss
  • 8. ROR icon Environment and Climate Change Canada

Description

GHOST: Globally Harmonised Observations in Space and Time, represents one of the biggest collection of harmonised measurements of atmospheric composition at the surface. In total, 7,275,148,646 measurements from 1970-2023, of 227 different components, from 38 reporting networks, are compiled, parsed, and standardised. Components processed include gaseous species, total and speciated particulate matter, and aerosol optical properties.

The main goal of GHOST is to provide a dataset that can serve as a basis for the reproducibility of model evaluation efforts across the community. Exhaustive efforts have been made towards standardising almost every facet of provided information from the major public reporting networks, saved in 21 data variables, and 163 metadata variables. Extensive effort in particular is put towards the standardisation of measurement process information, and station classifications. Extra complementary information is also associated with measurements, such as metadata from various popular gridded datasets (e.g. land use), and temporal classifications per measurement (e.g. day / night). A range of standardised network quality assurance flags are associated with each individual measurement. GHOST own quality assurance is also performed and associated with measurements. Measurements prefiltered by some default GHOST quality assurance are also provided.  

Data Access 

The dataset is 1.39 TB in total size (121 GB compressed). The data is separated out per network, per temporal resolution, per component, and is saved as netCDF4 files, per year and month. There is additionally one synthetic network entitled "GHOST-PUBLIC", which aggregates data across all networks. The dataset is compressed as .zip files per network. Beneath each network, collections of files per temporal resolution, per component, are compressed as tar.xz files.
 
Each network .zip file can be decompressed via the following syntax:
unzip [network].zip
 
Component tar.xz files can be decompressed via the following syntax:
tar -xf [component].tar.xz

How to Use

Inside the GHOST dataset are a plethora of variables, thus it can difficult to fully exploit the extent of the available information. For this reason a companion publication has been written, detailing every aspect of the GHOST dataset: https://doi.org/10.5194/essd-2023-397

If you have any other doubts of queries regarding the dataset, please email: dene.bowdalo@bsc.es

How to Cite

If you plan to use this work please kindly cite both this dataset and the describing publication:


Bowdalo, D.: GHOST: A globally harmonised dataset of surface atmospheric composition measurements, Zenodo [data set], https://doi.org/10.5281/zenodo.10637449, 2024.

Bowdalo, D., Basart, S., Guevara, M., Jorba, O., Pérez García-Pando, C., Jaimes Palomera, M., Rivera Hernandez, O., Puchalski, M., Gay, D., Klausen, J., Moreno, S., Netcheva, S., and Tarasova, O.: GHOST: A globally harmonised dataset of surface atmospheric composition measurements, Earth Syst. Sci. Data, 16, 4417–4495, https://doi.org/10.5194/essd-16-4417-2024, 2024.

Acknowledgements

We gratefully acknowledge all data providers for the substantial work done in establishing and maintaining the measuring stations that provide the data contained in this dataset. We would also like to warmly thank all data providers who met with GHOST authors through this work, and for all support given, from helping resolve data rights issues, to giving suggestions for improvements.

We acknowledge the computing resources of MareNostrum, and the technical support provided by the Barcelona Supercomputing Center (AECT-2020-1-0007, AECT-2021-1-0027, AECT-2022-1-0008, and AECT-2022-3-0013). We also acknowledge the Red Temática ACTRIS España (CGL2017-90884-REDT), and the H2020 project ACTRIS IMP (\#871115).

The research leading to the creation of this dataset has received funding from the grant RTI2018-099894-BI00 funded by MCIN/AEI/ 10.13039/501100011033 (BROWNING), the EU H2020 Framework Programme under grant agreement No. GA 821205 (FORCES), the European Research Council under the Horizon 2020 research and innovation programme through the ERC Consolidator Grant grant agreement No. 773051 (FRAGMENT), the AXA Research Fund (AXA Chair on Sand and Dust Storms at the Barcelona Supercomputing Center), and the Department of Research and Universities of the Government of Catalonia through the Atmospheric Composition Research Group (code 2021 SGR 01550).

Files

AERONET_v3_lev1.5.zip

Files (119.7 GB)

Name Size Download all
md5:291cc6b86d1372cbae3cd99205fd5f44
21.4 GB Preview Download
md5:4590e25a565c42c37eb909e2330f3cf7
12.7 GB Preview Download
md5:8c8dc0cb777f7d12572c553c874fdfa7
1.6 GB Preview Download
md5:e93e391bc6353f02968143fe7eec0505
21.6 MB Preview Download
md5:31d9c1743185bdc514e7a52cc2baf66b
274.9 MB Preview Download
md5:45711be1e7b3b6502e26f7b040f57253
17.0 MB Preview Download
md5:a6fe740330372fe7e5163051430a43a6
1.5 MB Preview Download
md5:55387454ab774de97b607e4f406df8a9
11.0 MB Preview Download
md5:cb32ad2fc72eacb25123269e764e89f5
189.3 kB Preview Download
md5:96aae20f1a635d20215aa4e43123a266
889.0 MB Preview Download
md5:e7fcf39dd027969ef7a9dc52ab198a34
1.2 MB Preview Download
md5:8f5155b685c22c491232919ed6e13731
1.7 MB Preview Download
md5:c0525edb2894210d7e5ff6c9a2a4ef50
732.0 kB Preview Download
md5:ed68a0a4aa8aa1994e6de8cecafe3843
290.5 kB Preview Download
md5:a7be23feab041761a600707414b9a1f1
1.1 MB Preview Download
md5:c34656983ac62beea7a6c12f3e017659
1.4 MB Preview Download
md5:a47462a2b6505760107eb002f9f27035
17.7 MB Preview Download
md5:6959e86d5fc2b5d08db00dc2897aa046
17.9 MB Preview Download
md5:14cbbbd3babe9973b9a5f43f94ee8671
15.3 MB Preview Download
md5:0a281386831025ac1d614215060c3e29
1.3 MB Preview Download
md5:2112cc091c67a1c94fc6931fce400a70
1.8 MB Preview Download
md5:a9ebc371033cd58bbf53d9ed29829ded
8.9 MB Preview Download
md5:272e5c0c7abf5b09e16775116d73a9ea
61.2 MB Preview Download
md5:24ba62ccaa41c0469512ab22283d4c88
10.3 GB Preview Download
md5:7eff2733291e65ba4cdb5973745bc3ab
8.9 GB Preview Download
md5:67fe00db042895cb71ecdf31e26de518
50.0 GB Preview Download
md5:bc0f30ab31247f78e434180e1e770096
161.1 MB Preview Download
md5:da455a7233e36850ecd3ed344254ea48
2.4 GB Preview Download
md5:06f11e2423054a0a84d56e8f7cb68d28
814.8 MB Preview Download
md5:7f7ef316d3dcf9015c2d9d1864021385
16.8 MB Preview Download
md5:92c76687bb8efd5c13e5227f2c83647b
9.6 GB Preview Download
md5:b7652d275a2103397b8816061a37e066
189.1 MB Preview Download
md5:d0432a7df5bff657b97d140f2c74255c
6.1 MB Preview Download
md5:b83b22832986ee94653465fc786c6fe7
3.4 MB Preview Download
md5:865ef6cadbd3d056a2b97b40bdf00fd6
194.7 MB Preview Download

Additional details

Dates

Created
2023-08-22

Software

Repository URL
https://earth.bsc.es/gitlab/ac/GHOST
Programming language
Python
Development Status
Active

References

  • Bowdalo, D.: GHOST: A globally harmonised dataset of surface atmospheric composition measurements, Zenodo, https://doi.org/10.5281/zenodo.10637449, 2024.
  • Bowdalo, D., Basart, S., Guevara, M., Jorba, O., Pérez García-Pando, C., Jaimes Palomera, M., Rivera Hernandez, O., Puchalski, M., Gay, D., Klausen, J., Moreno, S., Netcheva, S., and Tarasova, O.: GHOST: A globally harmonised dataset of surface atmospheric composition measurements, Earth Syst. Sci. Data, 16, 4417–4495, https://doi.org/10.5194/essd-16-4417-2024, 2024.