定量数据匮乏情况下社区复原力的空间量化:以津巴布韦穆扎拉巴尼地区为例

IF 1.7 Q2 GEOGRAPHY
Emmanuel Mavhura, Bernard Manyena
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引用次数: 7

摘要

过去10年,衡量经济韧性的工具激增。尽管取得了这些进展,但我们认为,在多种灾害背景下,特别是在发展中国家,很少有研究关注复原力的空间量化。本文特别强调地理对恢复力研究的贡献,研究了津巴布韦穆扎拉巴尼社区对灾害恢复力的空间变化。从2012年全国人口普查报告中选取地方适应力变量,制定穆扎拉巴尼地区的抗灾能力指数。主成分分析技术用于分析弹性的总体和子成分,以确定需要政策干预的病房。利用地理信息系统工具对社区恢复力及其子成分的空间变化进行建模,我们发现穆扎拉巴尼地区的社区恢复力存在地理差异,大多数地区的整体恢复力得分较低或低于低水平。虽然我们认为这项研究是对定性研究的补充,但似乎量化和可视化弹性为决策者提供了可能的解释和所需的行动,以广泛地解决弹性差距和减少灾害风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Spatial quantification of community resilience in contexts where quantitative data are scarce: The case of Muzarabani district in Zimbabwe

Spatial quantification of community resilience in contexts where quantitative data are scarce: The case of Muzarabani district in Zimbabwe

There has been an upsurge in tools for measuring resilience of the past decade. Despite this progress, we argue, there are few studies focusing on the spatial quantification of resilience in the context of multiple hazards, particularly in developing countries. Placing a particular emphasis on the contribution of geography to resilience studies, this paper examines the spatial variation of community resilience to disasters in Muzarabani, Zimbabwe. Place-specific resilience variables are selected from the 2012 national census report to develop a disaster resilience index for Muzarabani district. A principal component analysis technique was used to analyse the overall and subcomponents of resilience to identify wards that needed policy intervention. Using the Geographical Information Systems tool to model the spatial variation of community resilience and its subcomponents, we found a geographic variation in community resilience across Muzarabani district, with the majority of the wards scoring low to below low levels of overall resilience. Although we view this study as being complementary to qualitative studies, it would appear quantifying and visualising resilience provide possible explanations and actions required for decision-makers to address the resilience gaps and disaster risk reduction broadly.

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来源期刊
CiteScore
3.20
自引率
0.00%
发文量
12
审稿时长
25 weeks
期刊介绍: Geo is a fully open access international journal publishing original articles from across the spectrum of geographical and environmental research. Geo welcomes submissions which make a significant contribution to one or more of the journal’s aims. These are to: • encompass the breadth of geographical, environmental and related research, based on original scholarship in the sciences, social sciences and humanities; • bring new understanding to and enhance communication between geographical research agendas, including human-environment interactions, global North-South relations and academic-policy exchange; • advance spatial research and address the importance of geographical enquiry to the understanding of, and action about, contemporary issues; • foster methodological development, including collaborative forms of knowledge production, interdisciplinary approaches and the innovative use of quantitative and/or qualitative data sets; • publish research articles, review papers, data and digital humanities papers, and commentaries which are of international significance.
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