Atmospheric Reanalyses Comparison Table
Name | Source | Time Range | Assimilation Algorithm |
Model Resolution | Model Output Resolution | Model Areal Coverage | Publicly Available Dataset Resolution | Dataset Output Times and Time Averaging |
---|---|---|---|---|---|---|---|---|
Arctic System Reanalysis (ASR) |
Byrd Polar Research Center Polar Meteorology Group |
2000-2010 (30km) 2000-2011 (10km) |
WRFDA-3DVAR |
10 and 30km 71 sigma levels |
10 and 30km | Arctic | 10 and 30km | 3-hourly WRF outputs; selected variables for surface and upper-air fields. Monthly averages of selected fields. |
COSMO Reanalyses (COSMO-REA) | HErZ, DWD |
1995-present (6km)
2007-2013 (2km) |
Continuous nudging Continuous and Latent heat nudging |
6km, 40 eta levels
2km, 50 eta levels |
6km and 2km | 6km and 2km | 15 minute output for 2D variables, hourly output for 3D output, daily and monthly aggregations; selected variables available online, further variables on request | |
ECMWF Interim Reanalysis (ERA Interim) | ECMWF | 1979-present | 4D-VAR | TL255L60 and N128 reduced Gaussian | TL255L60 and N128 reduced Gaussian (~79km globally) | Global | User defined, down to 0.75x0.75 | 3-hourly for most surface fields; 6-hourly for upper-air fields Monthly averages of daily means, and of 6-hourly fields |
ECMWF 40 year Reanalysis (ERA-40) | ECMWF | 1958-2001 | 3D-VAR | TL159L60 and N80 reduced Gaussian | TL159L60 and N80 reduced Gaussian (~125km globally) | Global | 2.5x2.5 / 1.125x1.125 | 3-hourly for most surface fields; 6-hourly for upper-air fields Monthly averages of daily means, and of 6-hourly fields |
ERA5 | ECMWF | 1950-present | 4D-VAR | ? | T639 (HRES) and T319 (EDA) or on a reduced Gaussian grid with a resolution of N320 (HRES) and N160 (EDA) | Global | User defined, down to 30km (0.28x0.28) | hourly estimates of a large number of atmospheric, land and oceanic climate variables. |
ERA-20C | ECMWF | 1900-2010 | 4D-Var | TL159L91 and N80 reduced Gaussian | TL159L91 and N80 reduced Gaussian (~125km globally) | Global | User defined, down to 0.25x0.25 | 3-hourly for most fields, except for some surface fields (6-hourly |
Japanese 25-year Reanalysis (JRA-25)
---------- |
Japan Meteorological Agency (JMA) and Central Research Institute for Electric Power Industry (CRIEPI) ----------
JMA |
1979-2004 2005-Jan.2014 |
3D-VAR | T106L40 | T106L40 Gaussian | Global |
1.25 x 1.25 2.5 x 2.5 |
6-hourly daily monthly |
Japanese 55-year Reanalysis (JRA-55) | Japan Meteolorogical Agency |
1958-2012 (extended to Jan.2024) |
4D-VAR | TL319L60 | TL319L60 reduced Gaussian | Global | 1.25 x 1.25 |
6-hourly, partly 3-hourly daily monthly |
Japanese Reanalysis for Three Quarters of a Century (JRA-3Q) |
Japan Meteolorogical Agency | Sep.1947 - present | 4D-VAR | TL479L100 | TL479L100 reduced Gaussian | Global | 1.25 x 1.25 |
6-hourly, partly 3-hourly or 1-hourly daily monthly |
NASA MERRA | NASA GMAO | 1/1979-2/2016 | 3D-VAR, with incremental update | 2/3 lon x1/2 lat deg; 72 sigma levels | 2/3 lon x1/2 lat deg 3d Analysis and 2d variables; 1.25 deg 3d Diagnostics; 72 model levels and 42 pressure levels | Global | 2/3 lon x1/2 lat deg 3d Analysis and 2d variables; 1.25 deg 3d Diagnostics; 72 model levels and 42 pressure levels | 2d Diagnostics - 1 hourly avg, centered at half hour; 3d Diagnostics - 3 hourly avg, centered at 0130, 0430 ... 2230; 3d Analysis - Instantaneous 6 hourly; 2d Diagnostics, Monthly mean diurnal average; Monthly means for all collections; daily averages processed at servers on-the-fly |
NASA MERRA-2 | NASA GMAO | 1/1980-present | 3D-VAR, with incremental update; Includes aerosol data assimilation, observation corrected precipitation forcing for land surface and aerosol wet deposition | Native cube sphere grid output is interpolated to 5/8 lon x1/2 lat deg; 72 sigma levels | 5/8 lon x1/2 lat deg 3d Analysis and 2d variables; 3d Diagnostics; 72 model levels and 42 pressure levels | Global | 5/8 lon x1/2 lat deg 3d Analysis and 2d variables; 3d Diagnostics; 72 model levels and 42 pressure levels | 2d Diagnostics - 1 hourly avg, centered at half hour; 3d Diagnostics - 3 hourly avg, centered at 0130, 0430 ... 2230; 3d Analysis - Instantaneous 6 hourly; 2d Diagnostics, Monthly mean diurnal average; Monthly means for all collections; Daily min/max T2m; Glacier/Sea Ice; Aerosols; daily averages processed at servers on-the-fly |
NCEP Climate Forecast System Reanalysis (CFSR) | NCEP | 1979-present | 3D-VAR | T382 L64 | .5x.5 and 2.5x2.5 | Global | .5x.5 and 2.5x2.5 | Hourly, 4 times daily |
NCEP/DOE Reanalysis AMIP-II (R2) | NCEP/DOE | 1979-present | 3D-VAR | T62 L28 | 2.5x2.5 | Global | 2.5x2.5 | 4 times daily/daily/monthly, also LTMs |
NCEP/NCAR Reanalysis I (R1) | NCEP/NCAR | 1948-present | 3D-VAR | T62 L28 | 2.5x2.5 and 2x2 gaussian | Global | 2.5x2.5 and 2x2 gaussian | 4 times daily/daily/monthly also LTMs |
NCEP North American Regional Reanalysis (NARR) | NCEP | 1979-present | RDAS | 32km | 32km | N America | 32km | 4/8 times daily/daily/monthly also LTMs. |
NOAA-CIRES 20th Century Reanalysis (20CR) | NOAA PSL | 1871-2012 | Ensemble Kalman Filter | T62 L28 | 2x2 | Global | 2x2 | 4/8 times daily, daily,monthly, also LTMs |
NOAA-CIRES 20th Century Reanalysis (20CRV2c) | NOAA/ESRL PSD | 1851-2014 | Ensemble Kalman Filter | T62 L28 | 2x2 | Global | 2x2 | 4/8 times daily, daily,monthly, also LTMs |
NOAA-CIRES 20th Century Reanalysis (20CRV3) | NOAA/ESRL PSD | 1836-2015 | Ensemble Kalman Filter | T254 L64 | ~0.7x0.7 | Global | 1x1 L28 | 8 times daily, daily,monthly, also LTMs |
NOAA Last Millennium Reanalysis (LMR) | NOAA | 1-2000 | Ensemble Kalman Filter | T62 | 2x2 | Global | 2x2 | annual |
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The satellite errors started…
The satellite errors started around 1979 and hence many of the reanalyses started then (as there many more observations of the atmosphere and particularly the ocean available from the satellites than had been available before. Starting in 1979 results in a more consistent 'climate' in a reanalyses. The downside is there are are observations from before satellites and it is useful to study the atm/ocean before then, of course)
Some Comparison Tables as of 2016
For your information, there are several comparison tables for all available global atmospheric reanalyses as of 2016 in the following paper:
Fujiwara, M., J. S. Wright, G. L. Manney, L. J. Gray, J. Anstey, T. Birner, S. Davis, E. P. Gerber, V. L. Harvey, M. I. Hegglin, C. R. Homeyer, J. A. Knox, K. Krüger, A. Lambert, C. S. Long, P. Martineau, A. Molod, B. M. Monge-Sanz, M. L. Santee, S. Tegtmeier, S. Chabrillat, D. G. H. Tan, D. R. Jackson, S. Polavarapu, G. P. Compo, R. Dragani, W. Ebisuzaki, Y. Harada, C. Kobayashi, W. McCarty, K. Onogi, S. Pawson, A. Simmons, K. Wargan, J. S. Whitaker, and C.-Z. Zou: Introduction to the SPARC Reanalysis Intercomparison Project (S-RIP) and overview of the reanalysis systems, Atmos. Chem. Phys., 17, 1417-1452, doi:10.5194/acp-17-1417-2017, 2017.
http://doi.org/10.5194/acp-17-1417-2017
Please also visit the project page at:
https://s-rip.ees.hokudai.ac.jp/
added to Overview page
Thanks, Masatomo!
I have added the link to the paper to the list of Comparison Table links at https://reanalyses.org/atmosphere/overview-current-atmospheric-reanalyses.
If the S-RIP project page has a direct link to the comparison tables, we could add those instead, or in addition. They could also go on the Notes page at http://reanalyses.org/atmosphere/notes-questions-and-discussion-reanalyses-datasets.
best wishes,
gil
added to Notes page
Masatomo,
I also added a link to the paper at http://reanalyses.org/atmosphere/notes-questions-and-discussion-reanalyses-datasets
Please feel free to make changes there, or leave a comment with suggestions.
best wishes,
gil
Re: Comparison Table
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There is no easy answer to this question. In part, independent validation is thin (most large sources of water vapor are assimilated already), water vapor is one of the most sensitive prognostic variables to assimilate (see work by Bengtsson), and also low specificity of the question. I would expect each reanalysis to have strengths and weaknesses depending on region, season or time period. There is a fair bit work on these in the literature. So whatever the specific metrics are that answer your question, if you find it through a literature search or evaluating the data itself, there are pages at this www site where you can contribute what you find!
Compliments
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Thank you for such an helpful comparison table. I would like to know the accuracy of pressure, temperature and rH values given by reanalysis data. As far my knowledge goes, P & T is a 1st order variable and reanalysis values are as good as observations. Is that true? Is the accuracy of P, T & rH is going to affected by soil moisture, radiations, clouds cover, snow melting etc. arround tropics? Thanks
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Both the date updated and the ERA-Interim time extension have been added. Thanks for the suggestions.
time period query
why most of the reanalysis dataset starts from 1980/or1979?