利用机器学习方法绘制国家级洪水易感性地图

Applied AI letters Pub Date : 2023-12-15 DOI:10.1002/ail2.88
Geoffrey Dawson, Junaid Butt, Anne Jones, Paolo Fraccaro
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引用次数: 0

摘要

河水(河流)、地表水(冲积水)和沿海洪水给英国带来了巨大风险。因此,对洪水风险进行评估非常重要,尤其是预计气候变化将导致洪水影响加剧。在此,我们展示了一张高分辨率的英格兰河流和冲积洪水易发性综合地图。该洪水易发性模型是通过使用过去的洪水事件和一系列有意义的水文参数来训练机器学习模型而创建的。我们测试了不同机器学习算法的相对性能,包括分类树和回归树、随机森林和 XGBoost,发现 XGBoost 性能最佳,接收器工作特征 ROC 曲线下面积 (AUC) 为 0.93。我们还发现该模型在未见过的地区表现良好,并讨论了将其扩展到没有过去洪水事件信息的地区的可能性。此外,为了帮助了解哪些因素可能会影响特定地区的洪水风险,我们使用了夏普利加法解释,这使我们能够研究特定地点的预测洪水概率对洪水因素的敏感性。
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Flood susceptibility mapping at the country scale using machine learning approaches
River (fluvial), surface water (pluvial) and coastal flooding pose a significant risk to the United Kingdom. Therefore, it is important to assess flood risk particularly as the impacts of flooding are projected to increase due to climate change. Here we present a high resolution combined fluvial and pluvial flood susceptibility map of England. This flood susceptibility model is created by using past flood events and a series of meaningful hydrological parameters to a training machine learning model. We tested the relative performance of different machine learning algorithms, including Classification and Regression Trees, Random Forest and XGBoost and found the XGBoost performed the best, with an area under the receiver operating characteristic ROC Curve (AUC) of 0.93. We also found the model performed well on unseen areas, and we discuss the possibility of extending to regions that has no information on past flood events. Additionally, to aid in understanding what factors may impact flood risk to a particular area, we used Shapley additive explanations which allowed us to investigate the sensitivity of the predicted flood probability to flood factors at a given location.
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