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Uncertainty Estimates for Sea Surface Temperature and Land Surface Air Temperature in NOAAGlobalTemp Version 5.

Authors :
Huang, Boyin
Menne, Matthew J.
Boyer, Tim
Freeman, Eric
Gleason, Byron E.
Lawrimore, Jay H.
Liu, Chunying
Rennie, J. Jared
Schreck III, Carl J.
Sun, Fengying
Vose, Russell
Williams, Claude N.
Yin, Xungang
Zhang, Huai-Min
Source :
Journal of Climate; Feb2020, Vol. 33 Issue 4, p1351-1379, 29p, 4 Charts, 7 Graphs, 7 Maps
Publication Year :
2020

Abstract

This analysis estimates uncertainty in the NOAA global surface temperature (GST) version 5 (NOAAGlobalTemp v5) product, which consists of sea surface temperature (SST) from the Extended Reconstructed SST version 5 (ERSSTv5) and land surface air temperature (LSAT) from the Global Historical Climatology Network monthly version 4 (GHCNm v4). Total uncertainty in SST and LSAT consists of parametric and reconstruction uncertainties. The parametric uncertainty represents the dependence of SST/LSAT reconstructions on selecting 28 (6) internal parameters of SST (LSAT), and is estimated by a 1000-member ensemble from 1854 to 2016. The reconstruction uncertainty represents the residual error of using a limited number of 140 (65) modes for SST (LSAT). Uncertainty is quantified at the global scale as well as the local grid scale. Uncertainties in SST and LSAT at the local grid scale are larger in the earlier period (1880s–1910s) and during the two world wars due to sparse observations, then decrease in the modern period (1950s–2010s) due to increased data coverage. Uncertainties in SST and LSAT at the global scale are much smaller than those at the local grid scale due to error cancellations by averaging. Uncertainties are smaller in SST than in LSAT due to smaller SST variabilities. Comparisons show that GST and its uncertainty in NOAAGlobalTemp v5 are comparable to those in other internationally recognized GST products. The differences between NOAAGlobalTemp v5 and other GST products are within their uncertainties at the 95% confidence level. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
08948755
Volume :
33
Issue :
4
Database :
Complementary Index
Journal :
Journal of Climate
Publication Type :
Academic Journal
Accession number :
141803027
Full Text :
https://doi.org/10.1175/JCLI-D-19-0395.1