Quantitative study of storm surge risk assessment in an undeveloped coastal area of China based on deep learning and geographic information system techniques: a case study of Double Moon Bay

Lichen Yu, Hao Qin, Shining Huang, Wei Wei, Haoyu Jiang, Lin Mu
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Abstract

Abstract. Storm surges are a common natural hazard in China's southern coastal area which usually cause a great loss of human life and financial damages. With the economic development and population concentration of coastal cities, storm surges may result in more impacts and damage in the future. Therefore, it is of vital importance to conduct risk assessment to identify high-risk areas and evaluate economic losses. However, quantitative study of storm surge risk assessment in undeveloped areas of China is difficult, since there is a lack of building character and damage assessment data. Aiming at the problem of data missing in undeveloped areas of China, this paper proposes a methodology for conducting storm surge risk assessment quantitatively based on deep learning and geographic information system (GIS) techniques. Five defined storm surge inundation scenarios with different typhoon return periods are simulated by the coupled FVCOM–SWAN (Finite Volume Coastal Ocean Model–Simulating WAves Nearshore) model, the reliability of which is validated using official measurements. Building footprints of the study area are extracted through the TransUNet deep learning model and remote sensing images, while building heights are obtained through unoccupied aerial vehicle (UAV) measurements. Subsequently, economic losses are quantitatively calculated by combining the adjusted depth–damage functions and overlaying an analysis of the buildings exposed to storm surge inundation. Zoning maps of the study area are provided to illustrate the risk levels according to economic losses. The quantitative risk assessment and zoning maps can help the government to provide storm surge disaster prevention measures and to optimize land use planning and thus to reduce potential economic losses in the coastal area.
基于深度学习和地理信息系统技术的中国沿海不发达地区风暴潮风险评估定量研究:双月湾案例研究
摘要风暴潮是中国南方沿海地区常见的自然灾害,通常会造成巨大的人员伤亡和经济损失。随着沿海城市经济的发展和人口的集聚,未来风暴潮可能会造成更大的影响和损失。因此,开展风险评估以确定高风险区域和评估经济损失至关重要。然而,由于缺乏建筑特征和损失评估数据,对中国不发达地区风暴潮风险评估的定量研究十分困难。针对中国不发达地区数据缺失的问题,本文提出了一种基于深度学习和地理信息系统(GIS)技术的风暴潮风险定量评估方法。本文采用 FVCOM-SWAN(有限体积近岸海洋模型-模拟近岸风暴潮)耦合模型模拟了不同台风重现期的五种风暴潮淹没情景,并利用官方测量数据验证了该模型的可靠性。研究区域的建筑物足迹通过 TransUNet 深度学习模型和遥感图像提取,建筑物高度则通过无人驾驶飞行器(UAV)测量获得。随后,结合调整后的深度破坏函数,并叠加对暴露于风暴潮淹没的建筑物的分析,定量计算出经济损失。研究区域的分区图根据经济损失说明了风险等级。定量风险评估和分区图有助于政府提供风暴潮灾害预防措施,优化土地利用规划,从而减少沿海地区潜在的经济损失。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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