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A Data Science Methodology Based on Machine Learning Algorithms for Flood Severity Prediction

机译:基于机器学习算法的洪水严重性预测数据科学方法

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In this paper, a novel application of machine learning algorithms including Neural Network architecture is presented for the prediction of flood severity. Floods are considered natural disasters that cause wide-scale devastation to areas affected. The phenomenon of flooding is commonly caused by runoff from rivers and precipitation, specifically during periods of extremely high rainfall. Due to the concerns surrounding global warming and extreme ecological effects, flooding is considered a serious problem that has a negative impact on infrastructure and humankind. This paper attempts to address the issue of flood mitigation through the presentation of a new flood dataset, comprising 2000 annotated flood events, where the severity of the outcome is categorised according to 3 target classes, demonstrating the respective severities of floods. The paper also presents various types of machine learning algorithms for predicting flood severity and classifying outcomes into three classes, normal, abnormal, and high-risk floods. Extensive research indicates that artificial intelligence algorithms could produce enhancement when utilised for the pre-processing of flood data. These approaches helped in acquiring better accuracy in the classification techniques. Neural network architectures generally produce good outcomes in many applications, however, our experiments results illustrated that random forest classifier yields the optimal results in comparison with the benchmarked models.
机译:在本文中,提出了一种包括神经网络体系结构在内的机器学习算法在洪水严重程度预测中的新应用。洪水被认为是自然灾害,会对受灾地区造成大规模破坏。洪水现象通常是由河流径流和降雨引起的,特别是在降雨量极高的时期。由于担心全球变暖和极端的生态影响,洪水被认为是一个严重的问题,对基础设施和人类产生了负面影响。本文试图通过提供一个新的洪水数据集来解决洪水缓解问题,该数据集包括2000个带注释的洪水事件,其中根据3个目标类别对结果的严重程度进行了分类,展示了洪水的严重程度。本文还提出了各种类型的机器学习算法,用于预测洪水严重程度并将结果分为正常,异常和高风险洪水三类。广泛的研究表明,人工智能算法在用于洪水数据的预处理时可以产生增强作用。这些方法有助于获得更好的分类技术准确性。神经网络体系结构通常在许多应用中都能产生良好的结果,但是,我们的实验结果表明,与基准模型相比,随机森林分类器可产生最佳结果。

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