A network-based analysis of critical resource accessibility during floods

IF 2.6 Q2 WATER RESOURCES
Matthew Preisser, Paola Passalacqua, R. Patrick Bixler, Stephen Boyles
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Abstract

Numerous government and non-governmental agencies are increasing their efforts to better quantify the disproportionate effects of climate risk on vulnerable populations with the goal of creating more resilient communities. Sociodemographic based indices have been the primary source of vulnerability information the past few decades. However, using these indices fails to capture other facets of vulnerability, such as the ability to access critical resources (e.g., grocery stores, hospitals, pharmacies, etc.). Furthermore, methods to estimate resource accessibility as storms occur (i.e., in near-real time) are not readily available to local stakeholders. We address this gap by creating a model built on strictly open-source data to solve the user equilibrium traffic assignment problem to calculate how an individual's access to critical resources changes during and immediately after a flood event. Redundancy, reliability, and recoverability metrics at the household and network scales reveal the inequitable distribution of the flood's impact. In our case-study for Austin, Texas we found that the most vulnerable households are the least resilient to the impacts of floods and experience the most volatile shifts in metric values. Concurrently, the least vulnerable quarter of the population often carries the smallest burdens. We show that small and moderate inequalities become large inequities when accounting for more vulnerable communities' lower ability to cope with the loss of accessibility, with the most vulnerable quarter of the population carrying four times as much of the burden as the least vulnerable quarter. The near-real time and open-source model we developed can benefit emergency planning stakeholders by helping identify households that require specific resources during and immediately after hazard events.
基于网络的洪水期间关键资源可及性分析
许多政府和非政府机构正在加大努力,以更好地量化气候风险对弱势群体的不成比例影响,目标是建立更具复原力的社区。过去几十年来,基于社会人口统计学的指数一直是脆弱性信息的主要来源。然而,使用这些指数无法捕捉脆弱性的其他方面,例如获取关键资源(例如,杂货店、医院、药房等)的能力。此外,在风暴发生时(即近实时)估计资源可及性的方法对当地利益相关者来说并不容易获得。我们通过创建一个基于严格开源数据的模型来解决这一差距,以解决用户均衡流量分配问题,以计算个人对关键资源的访问在洪水事件期间和之后如何变化。家庭和网络规模的冗余、可靠性和可恢复性指标揭示了洪水影响的不公平分布。在我们对德克萨斯州奥斯汀的案例研究中,我们发现最脆弱的家庭对洪水的影响最没有弹性,并且经历了最不稳定的度量值变化。同时,人口中最不脆弱的四分之一往往承担的负担最小。我们表明,当考虑到更脆弱的社区应对可达性丧失的能力较低时,小而中等的不平等就会变成大的不平等,最脆弱的人群承担的负担是最不脆弱人群的四倍。我们开发的近实时和开源模型可以帮助确定在灾害事件期间和之后立即需要特定资源的家庭,从而使应急规划利益相关者受益。
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来源期刊
Frontiers in Water
Frontiers in Water WATER RESOURCES-
CiteScore
4.00
自引率
6.90%
发文量
224
审稿时长
13 weeks
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