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Assessing North American multimodel ensemble (NMME) seasonal forecast skill to assist in the early warning of anomalous hydrometeorological events over East Africa

Authors :
Andrew Hoell
Franklin R. Robertson
Chris Funk
J. B. Roberts
Shraddhanand Shukla
Ben P. Kirtman
Source :
Climate Dynamics. 53:7411-7427
Publication Year :
2016
Publisher :
Springer Science and Business Media LLC, 2016.

Abstract

The skill of North American multimodel ensemble (NMME) seasonal forecasts in East Africa (EA), which encompasses one of the most food and water insecure areas of the world, is evaluated using deterministic, categorical, and probabilistic evaluation methods. The skill is estimated for all three primary growing seasons: March–May (MAM), July–September (JAS), and October–December (OND). It is found that the precipitation forecast skill in this region is generally limited and statistically significant over only a small part of the domain. In the case of MAM (JAS) [OND] season it exceeds the skill of climatological forecasts in parts of equatorial EA (Northern Ethiopia) [equatorial EA] for up to 2 (5) [5] months lead. Temperature forecast skill is generally much higher than precipitation forecast skill (in terms of deterministic and probabilistic skill scores) and statistically significant over a majority of the region. Over the region as a whole, temperature forecasts also exhibit greater reliability than the precipitation forecasts. The NMME ensemble forecasts are found to be more skillful and reliable than the forecast from any individual model. The results also demonstrate that for some seasons (e.g. JAS), the predictability of precipitation signals varies and is higher during certain climate events (e.g. ENSO). Finally, potential room for improvement in forecast skill is identified in some models by comparing homogeneous predictability in individual NMME models with their respective forecast skill.

Details

ISSN :
14320894 and 09307575
Volume :
53
Database :
OpenAIRE
Journal :
Climate Dynamics
Accession number :
edsair.doi...........84e14458b73ad28133170081f27e6fbb
Full Text :
https://doi.org/10.1007/s00382-016-3296-z