建立基于城市地点的复原力模型:洪灾复原力评估指数的混合方法

IF 2.6 3区 经济学 Q2 ENVIRONMENTAL STUDIES Environment and Planning B: Urban Analytics and City Science Pub Date : 2024-04-08 DOI:10.1177/23998083241243104
Brad Bottoms, Julie Arbit, Earl Lewis, Alford Young
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引用次数: 0

摘要

洪水灾害评估中常用的大规模社会经济脆弱性模型受到数据限制,难以充分反映美国社会政治历史造成的脆弱性和抗灾能力的多样性。为此,我们开发了一个基于地方的洪水复原力评估指数(FRAI)原型,该指数使用了区级地理数据,说明了美国以人为本的洪水复原力量化框架。该框架可与洪水风险模型结合使用。在地理空间处理方面,我们采用了混合方法,包括数据插值和网络分析,以建立访问模型。我们还按百分比将变量标准化,以便进行时间分析和以公平为中心的叙述框架。虽然五县试点研究得出的分数与主要的脆弱性指数相关,但 FRAI 利用不同的数据源和新颖的方法来代表不断变化的地貌、资源以及城市核心和不断发展的郊区的需求。FRAI 未来的发展轨迹将继续定义和完善适用于不同数据集的方法,采用应急管理人员和洪水易发社区居民参与的方法进行价值设定、加权和验证,并确定政策和实践途径。
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Towards urban place-based resilience modeling: Mixed methods for a flood resilience assessment index
Large-scale socioeconomic vulnerability models commonly used in flood hazard assessments grapple with data limitations and struggle to fully capture diversity in vulnerability and resilience stemming from America’s sociopolitical history. In response, we developed a prototype for a place-based Flood Resilience Assessment Index (FRAI) using tract-level geographies that illustrates human-centric frameworks for quantifying flood resilience in the U.S. For these purposes, we define flood resilience as the likelihood a tract will rebound from a flood disaster. This framework can be used in tandem with flood risk models. We employ mixed methods in geospatial processing, including dasymetric interpolation and network analysis to model access. We also standardize variables by percentage to enable temporal analyses and equity-centered narrative framing. While the resulting scores for a five-county pilot study correlate with those of leading vulnerability indices, FRAI leverages diverse data sources and novel methods to represent the changing landscapes, resources, and needs of urban cores and growing suburbs. Future trajectories for FRAI will continue to define and refine methods for diverse datasets, employ participatory methods for emergency managers and residents of flood-prone communities in value-setting, weighting, and validation, and identify policy and practice avenues.
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来源期刊
CiteScore
6.10
自引率
11.40%
发文量
159
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