Evaluation of Machine Learning Methods for Predicting Rainfall in Bangladesh

Ferdous Zeaul Islam, Rifat Islam, Ashfaq Jamil, S. Momen
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Abstract

Rainfall is a crucial weather parameter in the context of Bangladesh. Prediction of rainfall can effectively aid the decision making process for agriculture and natural disaster management of the country. However the chaotic nature of rainfall due to climate change has made the task of rainfall prediction challenging through traditional statistical models. In this study, we analyze the performance of six machine learning algorithms: Decision Tree (DT), K-Nearest Neighbours (KNN), Random Forest (RF), Extreme Gradient Boosting (XGB), Light Gradient Boosting (LGB) and Multi-Layered Perceptron (MLP) in predicting daily rainfall as both regression and classification. In addition we try out an approach called Zero Inflated Regression (ZIR) to address the excessive amount of zero rainfall values in the dataset. The models were trained with and without feature selection and/or sampling techniques (for classification). During training 10-fold cross validation and hyperparameter tuning was performed on the train set and afterwards the selected models were applied to the test set for evaluation. For regression LGB with SelectKBest feature selection had the best performance on the test set with R2-score of 0.203, MAE of 6.40 and RMSE of 15.44. Among the classifiers, XGB with no feature selection and no sampling technique resulted with best test accuracy of 0.787 and test macro fl-score of 0.62. The ZIR model consisting of XGB classifier and LGB regressor with no feature selection yielded R2-score of 0.189, MAE of 5.789 and RMSE of 15.575 on the test set. Interestingly the ZIR models produced lower MAE compared to the regression models but the regression models had better R2-score.
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预测孟加拉国降雨的机器学习方法评估
在孟加拉国,降雨是一个至关重要的天气参数。降雨预测可以有效地帮助国家农业和自然灾害管理的决策过程。然而,由于气候变化导致的降雨的混沌性,使得传统的统计模型对降雨的预测具有挑战性。在这项研究中,我们分析了六种机器学习算法的性能:决策树(DT)、k近邻(KNN)、随机森林(RF)、极端梯度增强(XGB)、光梯度增强(LGB)和多层感知器(MLP)在预测日降雨量方面的回归和分类。此外,我们尝试了一种称为零膨胀回归(ZIR)的方法来解决数据集中零降雨值过多的问题。对模型进行训练时使用或不使用特征选择和/或抽样技术(用于分类)。在训练期间,对训练集进行10倍交叉验证和超参数调优,然后将选择的模型应用于测试集进行评估。对于回归,使用SelectKBest特征选择的LGB在测试集上表现最好,r2得分为0.203,MAE为6.40,RMSE为15.44。在分类器中,没有特征选择和没有采样技术的XGB分类器的测试精度为0.787,测试宏观fl-score为0.62。不进行特征选择的XGB分类器和LGB回归器组成的ZIR模型在测试集上的R2-score为0.189,MAE为5.789,RMSE为15.575。有趣的是,与回归模型相比,ZIR模型产生的MAE较低,但回归模型的r2得分较高。
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