Flood Prediction Using Ensemble Machine Learning Model

Tanvir Rahman, Miah Mohammad Asif Syeed, Maisha Farzana, Ishadie Namir, Ipshita Ishrar, Meherin Hossain Nushra, Bhoktear Mahbub Khan
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引用次数: 1

Abstract

India experiences recurrent natural disasters in the form of floods, which result in substantial destruction of both human life and property. Accurately predicting the onset and progression of floods in real-time is crucial for minimizing their impact. This research paper focuses on a comparative study of various machine learning models for flood prediction in India. The evaluated models include K-Nearest Neighbor (KNN), Support Vector Classifier (SVC), Decision tree Classifier, Binary Logistic Regression, and Stacked Generalization (Stacking). We used a dataset of rainfall to train and test the models. Our results indicate that the stacked generalization model outperforms the other models, achieving an accuracy of 93.3% and Standard Deviation of 0.098. Our findings suggest that machine learning models can provide accurate and timely flood predictions, enabling disaster management authorities to take appropriate measures to minimize damage and save lives.
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基于集成机器学习模型的洪水预测
印度经常遭受以洪水形式出现的自然灾害,这些灾害给人的生命和财产造成了巨大的破坏。实时准确预测洪水的发生和发展对于最大限度地减少其影响至关重要。这篇研究论文的重点是对印度洪水预测的各种机器学习模型进行比较研究。评估的模型包括k -最近邻(KNN)、支持向量分类器(SVC)、决策树分类器、二元逻辑回归和堆叠泛化(Stacking)。我们使用降雨数据集来训练和测试模型。结果表明,叠加泛化模型的准确率为93.3%,标准差为0.098,优于其他模型。我们的研究结果表明,机器学习模型可以提供准确、及时的洪水预测,使灾害管理部门能够采取适当措施,最大限度地减少损失,挽救生命。
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