Quantitative risk assessment of storm surge using GIS techniques and open data: A case study of Daya Bay Zone, China

Storm surge is a natural disaster, often causing economic damage and loss of human life in the coastal communities. In recent decades, with more people attracted to coastal areas, the potential economic losses resulted from storm surges are increasing. Therefore, it is important to make risk assessm...

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Veröffentlicht in:Journal of environmental management 2021-07, Vol.289, p.112514-112514, Article 112514
Hauptverfasser: Wang, Si, Mu, Lin, Qi, Mengnan, Yu, Zekun, Yao, Zhenfeng, Zhao, Enjin
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Mu, Lin
Qi, Mengnan
Yu, Zekun
Yao, Zhenfeng
Zhao, Enjin
description Storm surge is a natural disaster, often causing economic damage and loss of human life in the coastal communities. In recent decades, with more people attracted to coastal areas, the potential economic losses resulted from storm surges are increasing. Therefore, it is important to make risk assessments to identify areas at risk and design risk reduction strategies. However, the quantitative risk assessment of storm surge for coastal cities in China is often difficult due to the lack of adequate data regarding the building footprint and vulnerability curves. This paper aims to provide a methodology for conducting the quantitative risk assessment of storm surge, estimating direct tangible damage, by using Geographical Information System (GIS) techniques and open data. The proposed methodology was applied to a coastal area with a high concentration of petroleum industries in the Daya Bay zone. At first, five individual typhoon scenarios with different return periods (1000, 100, 50, 20, and 10 years) were defined. Then, the Advanced Circulation model and the Simulating Waves Nearshore model were utilized to simulate storm surge. The model outputs were imported into GIS software, transformed into inundation area and inundation depth. Subsequently, the building footprint data were extracted by the use of GIS techniques, including spatial analysis and image analysis. The layer containing building footprints was superimposed on the inundation area layer to identify and quantify the exposed elements to storm surge hazard. Combining the exposed elements with their related depth–damage functions, the quantitative risk assessment translates the spatial extent and depth of storm surge into the estimation of economic losses. The quantitative risk assessment and zonation maps for sub-zones in the study area can help local decision-makers to prioritize the sub-zones that are more likely to be affected by storm surge, make risk mitigation strategies, and develop long-term urban plans. [Display omitted] •The risk assessment was made by integrating three components with GIS techniques.•It is the first to make a risk assessment based on depth-damage functions in China.•The quantitative risk can be utilized to make a cost-benefit analysis.•The risk zonation maps are helpful to make strategies based on different risk levels.•The analysis and maps have been used in practice by the local decision-makers.
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subjects Bays
Building footprint
China
Cities
Depth–damage function
Geographic Information Systems
GIS
Hazard assessment
Humans
Risk Assessment
Risk zonation map
Storm surge modeling
title Quantitative risk assessment of storm surge using GIS techniques and open data: A case study of Daya Bay Zone, China
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