NeuralFlood:人工智能驱动的洪水敏感性指数

IF 2.6 Q2 WATER RESOURCES Frontiers in Water Pub Date : 2023-10-27 DOI:10.3389/frwa.2023.1291305
Justice Lin, Chhayly Sreng, Emma Oare, Feras A. Batarseh
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引用次数: 0

摘要

洪水事件有可能影响生活的方方面面,经济损失和人员伤亡可能很快与农业用地、基础设施和水质的破坏相结合。绘制洪水易感性地图是一种有效的方式,可以为社区提供有价值的信息,帮助他们准备和应对潜在洪水的影响。洪水指数和预测是复杂的,因为许多外部参数影响洪水。因此,本研究探索了利用人工智能(AI)技术(包括聚类和神经网络)开发洪水敏感性指数(即NeuralFlood)的潜力,该指数考虑了通常不考虑的多个因素。通过比较四个不同的子指数,我们的目标是创建一个综合指数,捕捉现有方法中没有发现的独特特征。使用聚类算法、模型调优和多个神经层对县级数据产生了深刻的结果。总体而言,四个子指数的模型对较低类别产生了准确的结果(准确率为0.87),但较高类别降低了真阳性率(所有类别的总体平均准确率为0.68)。我们的研究结果有助于决策者有效地分配资源和确定需要缓解的高风险领域。
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NeuralFlood: an AI-driven flood susceptibility index
Flood events have the potential to impact every aspect of life, economic loss and casualties can quickly be coupled with damages to agricultural land, infrastructure, and water quality. Creating flood susceptibility maps is an effective manner that equips communities with valuable information to help them prepare for and cope with the impacts of potential floods. Flood indexing and forecasting are nonetheless complex because multiple external parameters influence flooding. Accordingly, this study explores the potential of utilizing artificial intelligence (AI) techniques, including clustering and neural networks, to develop a flooding susceptibility index (namely, NeuralFlood) that considers multiple factors that are not generally considered otherwise. By comparing four different sub-indices, we aim to create a comprehensive index that captures unique characteristics not found in existing methods. The use of clustering algorithms, model tuning, and multiple neural layers produced insightful outcomes for county-level data. Overall, the four sub-indices' models yielded accurate results for lower classes (accuracy of 0.87), but higher classes had reduced true positive rates (overall average accuracy of 0.68 for all classes). Our findings aid decision-makers in effectively allocating resources and identifying high-risk areas for mitigation.
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来源期刊
Frontiers in Water
Frontiers in Water WATER RESOURCES-
CiteScore
4.00
自引率
6.90%
发文量
224
审稿时长
13 weeks
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