利用机器学习模型进行洪水预测:以尼日利亚Kebbi州为例

Zaharaddeen Karami Lawal, Hayati Yassin, R. Zakari
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引用次数: 4

摘要

用于洪水预测的机器学习(ML)模型可用于洪水警报和洪水减少或预防。为此,机器学习(ML)技术由于其低计算要求和主要依赖于观测数据而受到欢迎。这项研究旨在创建一个机器学习模型,该模型可以基于33年的历史降雨数据集(33)来预测Kebbi州的洪水,从而可以将其用于尼日利亚其他洪水风险高的州。在本文中,评估和比较了三种机器学习算法,即决策树,逻辑回归和支持向量分类(SVR)的准确性,召回率和接受者工作特征(ROC)得分。与其他两种算法相比,逻辑回归算法给出了更准确的结果,并提供了更高的性能准确性和召回率。此外,决策树优于支持向量分类器。由于其高于平均水平的准确率和低于平均水平的召回分数,决策树表现得相当好。我们发现支持向量分类在数据集较小的情况下表现不佳,召回得分为0,低于平均准确率得分和明显平均的roc得分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Flood Prediction Using Machine Learning Models: A Case Study of Kebbi State Nigeria
Machine Learning (ML) models for flood prediction can be beneficial for flood alerts and flood reduction or prevention. To that end, machine-learning (ML) techniques have gained popularity due to their low computational requirements and reliance mostly on observational data. This study aimed to create a machine learning model that can predict floods in Kebbi state based on historical rainfall dataset of thirty-three years (33), so that it can be used in other Nigerian states with high flood risk. In this article, the Accuracy, Recall, and Receiver Operating Characteristics (ROC) scores of three machine learning algorithms, namely Decision Tree, Logistic Regression, and Support Vector Classification (SVR), were evaluated and compared. Logistic Regression, when compared with the other two algorithms, gives more accurate results and provides high performance accuracy and recall. In addition, the Decision Tree outperformed the Support Vector Classifier. Decision Tree performed reasonably well due to its above-average accuracy and below-average recall scores. We discovered that Support Vector Classification performed poorly with a small size of dataset, with a recall score of 0, below average accuracy score and a distinctly average roc score.
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