Rainfall Prediction Models for Katsina State, Nigeria: Machine Learning Approach

Umar Iliyasu, G.N Obunadike, Eli Adama Jiya
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Abstract

Weather patterns and rainfall are essential pieces of information that drive the agricultural sector. For a peasant farmer in katsina, knowledge of pattern of rainfall is a vital determinant of which crops to plant and when to commence planting. Considering its implications for agriculture, water resource management, and disaster preparedness, this paper developed rainfall prediction models specifically tailored to the unique patterns in Katsina State, Nigeria. The work used Multiple Linear Regression (MLR) and Artificial Neural Network (ANN) with 10 years historical rainfall data obtained from the Nigerian Meteorological Agency Katsina where data were collected from Nigerian Meteorological Agency Katsina State, then preprocessed and subjected to the models, while the evaluation matrices that were used are Precision, Recall, Accuracy, F1-Score, R- Square, Mean Square Error (MSE) and Root Mean Square Error (RMSE). The results of this research indicate that the ANN model outperforms the MLR model with R-Square of ANN equal 0.532 and that of MLR equal to 0.099 and also the precision, recall and f1-score for ANN are 0.666, 0.666 and 0.661 respectively while for MLR they are 0.580, 0.583 and 0.564 respectively. These findings suggest that the ANN model is better at capturing the linear relationship between input variables and rainfall.
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尼日利亚卡齐纳州降雨预测模型:机器学习方法
天气模式和降雨是推动农业部门发展的重要信息。对于卡齐纳的农民来说,了解降雨模式是决定种植何种作物以及何时开始种植的重要因素。考虑到它对农业、水资源管理和备灾的影响,本文开发了专门针对尼日利亚卡齐纳州独特模式的降雨预测模型。本文采用多元线性回归(MLR)和人工神经网络(ANN)对尼日利亚气象局卡齐纳州(Katsina State)的10年历史降雨数据进行预处理和建模,采用精度、召回率、准确率、F1-Score、R平方、均方误差(MSE)和均方根误差(RMSE)作为评价矩阵。研究结果表明,人工神经网络模型优于MLR模型,ANN的r平方为0.532,MLR的r平方为0.099,并且人工神经网络的准确率、召回率和f1-score分别为0.666、0.666和0.661,MLR的准确率、召回率和f1-score分别为0.580、0.583和0.564。这些发现表明,人工神经网络模型更善于捕捉输入变量与降雨量之间的线性关系。
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