谷歌Earth Engine中基于hand的洪水风险评估工具在美国数据稀缺地区的开发

IF 2.5 3区 环境科学与生态学 Q3 ENVIRONMENTAL SCIENCES
Jobin Thomas , Subhami Mohan , Saumik Mallik , Thomas Oommen , Pengfei Xue , Guy Meadows , Navin Tony Thalakkottukara , Ryan Williams
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引用次数: 0

摘要

尽管大湖区农村社区对洪水的抗灾能力有所下降,但由于数据不足和缺乏了解洪水风险的适当工具,减轻洪水的努力受到阻碍。这类资源的开发往往需要数据和计算密集型方法,这在数据匮乏的条件下具有挑战性。本研究提出在谷歌Earth Engine (GEE)中开发一个用于洪水风险评估的web应用程序。该应用程序利用最近排水高度(HAND)模型和综合评级曲线(SRC)进行河流洪水淹没建模,模拟近岸波浪(SWAN)模型用于沿海洪水淹没建模,美国地质调查局(USGS)区域回归方程用于估计峰值流量,以及HAZUS-MH洪水模型的深度损伤函数用于估计建筑物水平影响造成的损失。基于gee的地理空间网络应用程序在密歇根州西部上半岛(WUP)的五个县运行,满足了社区和决策者评估该地区洪水造成的风险的要求。我们在密歇根州的Ontonagon河演示了该工具的适用性,结果表明该平台在实施决策、长期规划和理解洪水风险方面具有合理的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of a HAND-based flood risk assessment tool in Google Earth Engine for a data-scarce region in the US
Despite the decreased disaster resilience of rural communities in the Great Lakes region to flooding, flood mitigation efforts have been impeded by inadequate data and lack of appropriate tools for understanding flood risk. Development of such resources often requires data and computationally intensive approaches, which are challenging in data-scarce conditions. This study presents the development of a web application in Google Earth Engine (GEE) for flood risk assessment. The application utilizes the Height Above the Nearest Drainage (HAND) model and synthetic rating curve (SRC) for fluvial flood inundation modeling, the Simulating WAves Nearshore (SWAN) model for coastal flood inundation modeling, the United States Geological Survey (USGS) regional regression equations for estimating peak discharge, and depth-damage functions of the HAZUS-MH flood model for estimating losses due to building-level impacts. The GEE-based geospatial web application, which is operational across five counties in the Western Upper Peninsula (WUP) of Michigan, fulfills the requirement of the community and decision-makers to assess the risks caused by flooding in the region. We demonstrated the applicability of the tool in the Ontonagon River, Michigan, and the results indicate the suitability of the platform for implementing decisions, long-term planning, and understanding flood risk with a reasonable degree of accuracy.
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来源期刊
Journal of Great Lakes Research
Journal of Great Lakes Research 生物-海洋与淡水生物学
CiteScore
5.10
自引率
13.60%
发文量
178
审稿时长
6 months
期刊介绍: Published six times per year, the Journal of Great Lakes Research is multidisciplinary in its coverage, publishing manuscripts on a wide range of theoretical and applied topics in the natural science fields of biology, chemistry, physics, geology, as well as social sciences of the large lakes of the world and their watersheds. Large lakes generally are considered as those lakes which have a mean surface area of >500 km2 (see Herdendorf, C.E. 1982. Large lakes of the world. J. Great Lakes Res. 8:379-412, for examples), although smaller lakes may be considered, especially if they are very deep. We also welcome contributions on saline lakes and research on estuarine waters where the results have application to large lakes.
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