自然灾害
危害
脆弱性(计算)
比例(比率)
自然灾害
减少灾害风险
风险评估
风险分析(工程)
环境资源管理
自然(考古学)
环境规划
环境科学
地理
业务
计算机科学
地图学
气象学
计算机安全
考古
有机化学
化学
作者
Philip J. Ward,Veit Blauhut,Nadia Bloemendaal,James Daniell,Marleen de Ruiter,Melanie Duncan,Robert Emberson,Susanna F. Jenkins,Dalia Kirschbaum,Michael Kunz,Susanna Mohr,Sanne Muis,Graeme Riddell,Andreas Schaefer,Thomas Stanley,Ted Veldkamp,Hessel Winsemius
标识
DOI:10.5194/nhess-20-1069-2020
摘要
Abstract. Since 1990, natural hazards have led to over 1.6 million fatalities globally, and economic losses are estimated at an average of around USD 260–310 billion per year. The scientific and policy communities recognise the need to reduce these risks. As a result, the last decade has seen a rapid development of global models for assessing risk from natural hazards at the global scale. In this paper, we review the scientific literature on natural hazard risk assessments at the global scale, and we specifically examine whether and how they have examined future projections of hazard, exposure, and/or vulnerability. In doing so, we examine similarities and differences between the approaches taken across the different hazards, and we identify potential ways in which different hazard communities can learn from each other. For example, there are a number of global risk studies focusing on hydrological, climatological, and meteorological hazards that have included future projections and disaster risk reduction measures (in the case of floods), whereas fewer exist in the peer-reviewed literature for global studies related to geological hazards. On the other hand, studies of earthquake and tsunami risk are now using stochastic modelling approaches to allow for a fully probabilistic assessment of risk, which could benefit the modelling of risk from other hazards. Finally, we discuss opportunities for learning from methods and approaches being developed and applied to assess natural hazard risks at more continental or regional scales. Through this paper, we hope to encourage further dialogue on knowledge sharing between disciplines and communities working on different hazards and risk and at different spatial scales.
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