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Prediction of Flood in Bangladesh using k-Nearest Neighbors Algorithm

机译:k-incolly邻居算法孟加拉国洪水预测

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Bangladesh is a flood-prone country. With limited resources and a major portion of the population living below the poverty line, flood impacts are severe. Deaths, malnutrition, widespread diseases, damage to infrastructure, disruption in the economy are some of the after-effects of this cataclysm. In order to put a flood management system into effect, it is essential to predict flooding events ahead of time. In this work, we applied different correlation coefficients for feature selection and k-nearest neighbors (k-NN) algorithm for the prediction of flood. The detailed result analysis shows that we achieved a high testing accuracy of 94.91%, average precision of 92.00% and an average recall of 91.00% using the k-NN machine learning model.
机译:孟加拉国是一个普遍的国家。利用有限的资源和生活在贫困线以下的人口的主要部分,洪水影响严重。死亡,营养不良,普遍疾病,基础设施损害,经济中断的破坏是这种大灾变的一些效果。为了使洪水管理系统效仿,必须提前预测洪水事件。在这项工作中,我们应用了用于预测洪水的特征选择和k最近邻居(K-NN)算法的不同相关系数。详细结果分析表明,我们使用K-NN机器学习模型实现了94.91%,平均召回的高94.91%,平均召回量为92.00%,平均召回量为91.00%。

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