Prediction of Flood in Bangladesh Using Different Classifier Model

Md. Sajid Hossain, Mohammad Zeyad
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Abstract

Bangladesh is highly affected by climate change scenarios notably floods due to its location on the world map in the South Asian region. Besides due to monsoon rains and high upstream rainfall in several areas eventually turn into floods. Thus, early flood forecasting might save human lives as well as agriculture crops. In this paper, we have applied different machine learning classifier models (Decision tree, Naive bayes, k-NN and Random forest) with a view to predicting the occurrence of flood. RapidMiner tool has been used extensively to perform data preparation, decision tree model generation, cross-validation, model selection and optimization of the model parameters. It is seen that the decision tree model has performed well by achieving an accuracy of 94.23% which is further optimized to reach 94.68%. Feature Selection using ‘correlation matrix’ is also a good aspect of this work by which we have achieved a good accuracy.
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基于不同分类器模型的孟加拉国洪水预测
由于孟加拉国在世界地图上位于南亚地区,它受到气候变化情景特别是洪水的严重影响。此外,由于季风降雨和上游一些地区的高降雨量最终变成洪水。因此,早期的洪水预报不仅可以拯救农作物,还可以拯救人类的生命。在本文中,我们应用了不同的机器学习分类器模型(决策树,朴素贝叶斯,k-NN和随机森林)来预测洪水的发生。RapidMiner工具已被广泛用于数据准备、决策树模型生成、交叉验证、模型选择和模型参数优化。可以看出,决策树模型的准确率达到了94.23%,进一步优化后达到了94.68%。使用“相关矩阵”的特征选择也是这项工作的一个很好的方面,通过它我们取得了很好的准确性。
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