Literature survey of subseasonal-to-seasonal predictions in the southern hemisphere

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Authors

Phakula, Steven
Landman, Willem Adolf
Engelbrecht, Christina Johanna

Journal Title

Journal ISSN

Volume Title

Publisher

Wiley

Abstract

Subseasonal-to-seasonal (S2S) prediction has gained momentum in the recent past as a need for predictions between the weather forecasting timescale and seasonal timescale exists. The availability of S2S databases makes prediction and predictability studies possible over all the regions of the globe. Most S2S studies are, however, relevant to the northern hemisphere. In this review, the S2S literature relevant to the southern hemisphere (SH) are presented. Predictive skill, sources of predictability, and the application of S2S predictions are discussed. Indications from the subseasonal predictability studies for the SH regions suggest that predictive skill is limited to 2 weeks in general, particularly for temperature and rainfall, which are the variables most frequently investigated. However, temperature has enhanced skill compared to rainfall. More S2S prediction studies that include the quantification of the sources of predictability and the identification of windows of opportunity need to be conducted for the SH, particularly for the southern African region. The African continent is vulnerable to weather- and climate-related disasters, and S2S forecasts can assist in alleviating the risk of such disasters.

Description

DATA AVAILABILITY STATEMENT : Data openly available in a public repository that issues datasets with DOIs.

Keywords

S2S Predictions, Sources of predictability, Southern hemisphere, Southern Africa, Subseasonal-to-seasonal (S2S), SDG-13: Climate action, SDG-15: Life on land

Sustainable Development Goals

SDG-13:Climate action
SDG-15:Life on land

Citation

Phakula, S., Landman, W. A., & Engelbrecht, C. J. (2024). Literature survey of subseasonal-to-seasonal predictions in the southern hemisphere. Meteorological Applications, 31(1), e2170. https://DOI.org/10.1002/met.2170.