Open and shut: Identifying activity patterns by volunteer organizations active in disaster using space-time permutation scan statistics

Byron Ifediora, Bethany B. Cutts
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Abstract

After a catastrophic flood, the pace of residential cleanup is an important precondition of community resilience. When the process is fast, cleanup reduces additional health or economic risks by preventing structural or electrical damage from escalating. Mobilizing volunteers to complete cleanup work quickly is a challenge that the U.S. Natural Disaster Recovery Framework has assigned to the nonprofit sector. Nonprofit coordination networks—such as those convened through volunteer organizations active in disaster (VOAD) in the United States—aim to create systems of communication that improve the efficiency and equity of post-disaster cleanup. However, the process of coordination and the conditions that encourage quick action remain understudied. The aim of this paper is to identify the impacts of network coordination on the timeline of post-disaster cleanup using geospatial analytics. To do this, we apply a space-time permutation scan statistic (STPSS) to data on the speed at which organizations from the North Carolina VOAD (NC VOAD) closed requests for volunteer assistance following Hurricane Florence in 2018. STPSS results identify clusters of requests that were filled at different speeds through space and time. In total, we identified six space-time clusters indicative of coordinated cleanup. Exploration of clustered data helps to generate new questions about why coordination sometimes happened months after the disaster and suggests ways to use data exploration to inform network function and to leverage the unique capacities of individual nonprofits while also prioritizing housing resilience in socially vulnerable communities.
打开和关闭:使用时空排列扫描统计信息识别在灾难中活跃的志愿者组织的活动模式
在一场灾难性的洪水之后,住宅清理的速度是社区恢复力的一个重要前提。当过程快速时,通过防止结构或电气损坏升级,清理可以减少额外的健康或经济风险。动员志愿者迅速完成清理工作是美国自然灾害恢复框架(U.S. Natural Disaster Recovery Framework)指派给非营利部门的一项挑战。非营利组织的协调网络——比如美国的救灾志愿者组织(VOAD)——旨在建立沟通系统,提高灾后清理工作的效率和公平性。然而,协调过程和鼓励迅速行动的条件仍未得到充分研究。本文的目的是利用地理空间分析来确定网络协调对灾后清理时间表的影响。为此,我们将时空排列扫描统计(STPSS)应用于2018年佛罗伦萨飓风后北卡罗来纳州VOAD (NC VOAD)组织关闭志愿者援助请求的速度数据。STPSS结果确定了在空间和时间上以不同速度填充的请求集群。总的来说,我们确定了六个时空集群,表明协调清理。对集群数据的探索有助于产生新的问题,即为什么有时会在灾难发生几个月后才进行协调,并建议如何利用数据探索来告知网络功能,并利用个别非营利组织的独特能力,同时优先考虑社会脆弱社区的住房弹性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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