极端天气
自然灾害
保护
条件概率
风险分析(工程)
概率分布
极值理论
计算机科学
风险评估
决策者
运筹学
精算学
业务
工程类
气候变化
统计
数学
地理
气象学
国际贸易
生物
计算机安全
生态学
作者
G. Papadakis,Zaid Chalabi,Swarna Khare,Angie Bone,Shakoor Hajat,Sari Kovats
出处
期刊:American journal of disaster medicine
[Weston Medical Publishers]
日期:2018-10-01
卷期号:13 (4): 227-236
被引量:3
标识
DOI:10.5055/ajdm.2018.0303
摘要
Objective: There is a need to develop cost-effective methods to support public health policy makers plan ahead and make robust decisions on protective measures to safeguard against severe impacts of extreme weather events and natural disasters in the future, given competing demands on the social and healthcare resources, large uncertainty associated with extreme events and their impacts, and the opportunity costs associated with making ineffective decisions.Design: The authors combine a physics-based method known as nonextensive statistical mechanics for modeling the probability distribution of systems or processes exhibiting extreme behavior, with a decision-analytical method known as partitioned multiobjective risk method to determine the optimal decision option when planning for potential extreme events.Results: The method is illustrated using a simple hypothetical example. It is shown that partitioning the exceedance probability distribution of health impact into three ranges (low severity/high exceedance probability, moderate severity/medium exceedance probability, and high severity/low exceedance probability) leads to the correct estimation of the conditional expected impact in each range. Multiobjective optimization is used to determine the optimal decision option based on the perspective of the policy maker.Conclusion: This method constitutes a robust generic framework for the quantification of impacts and supporting decision-making under scenarios of extreme and catastrophic health risks.
科研通智能强力驱动
Strongly Powered by AbleSci AI