Abstract:
This study proposes to predict rainfall on a Sub-seasonal to seasonal (S2S) time scale over
six (6) locations (Dori, Ouahigouya, Ouagadougou, Fada N’Gourma, Bobo-Dioulasso and
Gaoua) in Burkina Faso, using a specific architecture of Deep Learning called LSTM.
Historical monthly and daily climate parameters from different sources are used to calibrate
the LSTM model. After data preprocessing, the model is set and run for each
location. Afterwards, the model is evaluated using some statistical metrics such as R2,
NSE, RMSE and MAE. The performance evaluation of the model using these metrics
shows that LSTM model is effective and performs well in predicting rainfall at monthly
timescales. For instance, forecasting at monthly timescale exibits a R2 ranging from 0.66
to 0.83, NSE ranging from 0.62 to 0.80, RMSE ranging from 32.9 to 59.9mm and MAE
ranging from 21.1 to 39.7mm. Regarding the bimonthly rainfall prediction, R2 ranges
from 0.63 to 0.83, NSE ranges from 0.6 to 0.82, RMSE ranges from 34.0 to 62.8mm and
MAE ranges from 21.8 to 42.8mm. These results allow to highlight the impact of climatic
zones and topography. Indeed, the models have better results on slightly humid
plateaus than on very rainy and elevated areas of the country. However, trying to bring
these monthly forecasts down to daily scales, the models struggle to capture daily rainfall
for all locations. This requires more investigations to be done as part of future studies.
Description:
A Thesis submitted to the West African Science Service Center on Climate Change and Adapted Land Use and Université Joseph KI-ZERBO, Burkina Faso in partial fulfillment of the requirements for the Master of Science Degree in Informatics for Climate Change