Evaluation of the Skill of Seasonal Rainfall and Temperature Forecasts From Global Prediction Models Over Ethiopia
Abstract
The skill of seasonal climate predictions from global forecasting models varies considerably across
different regions and seasons. Evaluating the skill of these models in forecasting temperature and
rainfall for various seasons is crucial for enhancing forecast accuracy and ensuring the efficient
utilization of forecast information. This study analyzed the performance of the North American
Multi-Model Ensemble (NNME) and Copernicus Climate Change Service (C3S) seasonal forecast
models in predicting the June-September (JJAS) and February-May (FMAM) seasonal rainfall and
temperature over Ethiopia. The seasonal forecast models were evaluated for the hindcast period of
1994–2016 using the Climate Hazards Group InfraRed Precipitation with Station (CHIRPS) data
as a reference for rainfall and the Climatic Research Unit (CRU) for temperature. The skill
assessment is conducted using the recently developed Python-based Climate Predictability Tool
(PyCPT). The model predictor domains used were tropical ocean, the Western Indian Ocean,
Ethiopia itself, the Atlantic and Indian Oceans at forecast time leads of 2-months, 1-month and 0-
month. The models’ skill assessment was performed using various skill scores such as Pearson
correlation, Relative Operating Characteristics (ROC) and Ranked Probability Skill Score (RPSS).
The results show that the NMME and C3S models show varying levels of the skill of forecasted
seasonal rainfall. The better performing models with the Pearson correlation greater than 0.5, ROC
below score exceeding 0.7, ROC above score exceeding 0.6 and RPSS greater than 20% are
CanSIPS-IC3, ECMWF-SEAS5, DWD-GCFS2P1, CMCC-SPS3P5 and METEOFRANCE8.
These models show higher ability in forecasting rainfall in the JJAS season over the Central,
Northeastern, Northern, Northwestern and pocket areas in the Eastern portion of Ethiopia
compared to other models like, GFDL-SPEAR, RSMAS-CCSM4, NASA- GEOSS2S and NCEPCFSv2.
However, most models have low skill (Pearson correlation <0, ROC<0.5 and RPSS <0) to
predict the rainfall in the JJAS season over the Southern, Southeastern, Southwestern and Western
half of Ethiopia. It has been indicated that May and June initialized forecasts show better skill
compared to the April initialized forecasts during the JJAS season. For effective agricultural and
water management planning, the preferred choice is the May-initialized forecast. During the
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FMAM season, the CanSIPS-IC3, ECMWF-SEAS5, DWD-GCFS2P1, CMCC-SPS3P5 and
METEOFRANCE8 models show higher skill (Pearson correlation between 0.5 & 0.7, ROC below
between 0.6 & 0.8, ROC above between 0.6 & 0.7 and RPSS between 20 & 40%) in forecasting
the seasonal rainfall in the Southeastern, Southern, Central, and Eastern Ethiopia compared to
other models like, RSMAS-CCSM4, NASA-GEOSS2S and NCEP-CFSv2. But their skill is lower
in the Western half of Ethiopia. The 1-month lead forecast (initialized in January) exhibits a better
skill compared to the 2-month and 0-month lead time forecast. The evaluation of various predictor
domains' effect on forecast skill shows that the tropical domain (180°W to 180°E, 30°S to 30°N)
exhibit higher skill in the JJAS and FMAM seasonal rainfall forecasts for Ethiopia when compared
to other domains. It has been noted that the skill of models in forecasting the below normal rainfall
are higher than the above normal rainfall for both JJAS and FMAM rainfall seasons
Publisher
University of Nairobi
Rights
Attribution-NonCommercial-NoDerivs 3.0 United StatesUsage Rights
http://creativecommons.org/licenses/by-nc-nd/3.0/us/Collections
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