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Comparative Performance of Supervised Learning Algorithms for Flood Prediction in Kemaman, Terengganu

机译:黎诚本克姆曼洪水预测监督学习算法的比较绩效

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Flood is one of the most destructive phenomena all over the world. Because the flooding uncertainties and the urgency to prepare for disaster management, three specific technique approaches are compared in this study to predict the flood occurrence based on historical rainfall data. The study involved the rainfall data in Kemaman, Terengganu between 2017 and 2018 extracted from the official portal of the state of Terengganu. The dataset covers daily rainfall reading between January to December of the particular year in millimeter (mm) per day along with flood risks occurrence. This prediction experiment will be conducted using three variations algorithms, which are Decision Tree, Naive Bayes and Support Vector Machine. The comparison using three different algorithms was used to define the best algorithms that work with historical rainfall datasets to predict flood in terms of accuracy, precision, recall and F1-score. In the future, the prediction results are hoped to alert government authorities to make an early strategy to handle flood problems in Malaysia by analyzing the rainfall pattern.
机译:洪水是世界各地最具破坏性的现象之一。由于洪水不确定性和准备灾害管理的紧迫性,在本研究中比较了三种特定的技术方法,以预测基于历史降雨数据的洪水发生。该研究涉及克麦汉·克米曼的降雨数据,于2017年至2018年间从Terengganu官方门户网站提取。 DataSet每天于1月至12月之间覆盖每日降雨读数,每天毫米(MM)以及洪水风险发生。该预测实验将使用三种变体算法进行,该算法是决策树,天真贝叶斯和支持向量机。使用三种不同算法的比较用于定义与历史降雨数据集合作的最佳算法,以预测精度,精度,召回和F1分数。未来,预测结果希望通过分析降雨模式,提醒政府当局提出早期战略来处理马来西亚的洪水问题。

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