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Title: | Exploring Use of Machine Learning Regressors for Daily Rainfall Prediction in the Sahel Region: A Case Study of Matam, Senegal |
Authors: | Nyasulu, Chimango Diattara, Awa Traore, Assitan Deme, Abdoulaye Ba, Cheikh |
Keywords: | Machine learning, Regressors, Gradient Boosting Regressor, Random Forest Regressor, CatBoost Regressor, Ridge Regression, Rainfall forecasting, Sub-Saharan Africa |
Issue Date: | 21-Feb-2023 |
Publisher: | Pan-African Artificial Intelligence and Smart Systems |
Abstract: | Rainfall is the major source of water for rain-fed agricultural production in Sub-Saharan Africa. Overdependency on rain-fed agriculture renders Sub-Saharan Africa more prone to adverse climate change effects. Consequently, timely and correct long-term daily rainfall forecasting is fundamental for planning and management of rainwater to ensure maximum production. In this study, we explored use of regressors: Gradient Boosting, CatBoost, Random Forest and Ridge Regression to forecast daily rainfall for Matam in the northern geographical part of Senegal. Gradient Boosting model is therefore considered a better model with smaller values of Mean Absolute Error, Mean Squared Error and Root Mean Squared Error of 0.1873, 0.1369 and 0.3671 respectively. Further, Gradient Boosting model produced a higher score of 0.69 for Coefficient of Determination. Relative Humidity is perceived to highly influence rainfall prediction. |
Description: | Full conference paper: https://doi.org/10.1007/978-3-031-25271-6_5 |
URI: | https://repository.rsif-paset.org/xmlui/handle/123456789/253 |
Appears in Collections: | ICTs including Big Data and Artificial Intelligence |
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