Performance‐based evaluation of NMME and C3S models in forecasting the June–August Central African rainfall under the influence of the South Atlantic Ocean Dipole

Author:

Nana Hermann N.1ORCID,Tamoffo Alain T.2ORCID,Kaissassou Samuel3ORCID,Djiotang Tchotchou Lucie A.1ORCID,Tanessong Roméo S.14ORCID,Kamsu‐Tamo Pierre H.15ORCID,Kenfack Kevin1ORCID,Vondou Derbetini A.1ORCID

Affiliation:

1. Laboratory for Environmental Modelling and Atmospheric Physics (LEMAP), Department of Physics University of Yaounde 1 Yaounde Cameroon

2. Climate Service Center Germany (GERICS) Helmholtz‐Zentrum Hereon Hamburg Germany

3. Laboratory of Electric Mechatronic and Signal Processing, Department of Electric and Telecommunication Engineering National Advanced School of Engineering, University of Yaounde 1 Yaounde Cameroon

4. Department of Meteorology and Climatology Advanced School of Agriculture, Forestry, Water Resources and Environment, University of Ebolowa Ebolowa Cameroon

5. African Centre of Meteorological Applications for Development (ACMAD) Niamey Niger

Abstract

AbstractIn this study, hindcasts from eight Copernicus Climate Change Service (C3S) and three North American Multi‐Model Ensemble (NMME) operational seasonal forecast systems, based on dynamical climate models, are employed to investigate the influence of the South Atlantic Ocean Dipole (SAOD) on the predictive skill of Central Africa (CA) rainfall. The focus is primarily on the June–July–August season for 1993–2016. The findings reveal that, when regionally averaged, all models exhibit positive skill in predicting CA rainfall, except for the Geophysical Fluid Dynamics Laboratory (GFDL‐SPEAR) model. Notably, there are significant spatial variations in skill across different regions. Model performance is particularly low (high) in the Central African Republic and Congo Basin (Gabon and Chad) and tends to deteriorate with increasing lead‐time. Models that demonstrate a strong connection between SAOD and CA rainfall tend to exhibit better predictive skills in forecasting rainfall, in contrast to models with weaker connections. This leads to a significant in‐phase relationship between the predictive skills of rainfall and the strength of the SAOD–rainfall connection among the models. Furthermore, the atmospheric circulation responding to SST forcing associated with the El Niño–Southern Oscillation exerts a significant influence on the robust atmospheric circulation associated with the climatological mean of SST over the SAO. This suggests that mean state bias in the SAO/equatorial Pacific region plays a role in modulating the strength of the simulated SAOD–CA rainfall connection and, consequently, the prediction skill of CA rainfall. In general, both NMME and C3S models appear to be valuable tools capable of providing essential seasonal information several months in advance. These insights can aid decision‐makers in the region in making informed decisions regarding adaptation and mitigation measures.

Publisher

Wiley

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