A taxonomy-based understanding of community flood resilience
Chapagain, Dipesh, Hochrainer-Stigler, Stefan, Velev, Stefan, Keating, Adriana, Hyun, Jung Hee, Rubenstein, Naomi and Mechler, Reinhard, (2024). A taxonomy-based understanding of community flood resilience. Ecology and Society, 29(4), n/a-n/a
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Sub-type Journal article Author Chapagain, Dipesh
Hochrainer-Stigler, Stefan
Velev, Stefan
Keating, Adriana
Hyun, Jung Hee
Rubenstein, Naomi
Mechler, ReinhardTitle A taxonomy-based understanding of community flood resilience Appearing in Ecology and Society Volume 29 Issue No. 4 Publication Date 2024-12 Place of Publication Dedham Publisher Resilience Alliance Start page n/a End page n/a Language eng Abstract Reducing disaster risk and enhancing resilience are major global societal challenges. To inform this challenge, understanding resilience at the community level is especially important because the impact of disasters and the potential for resilient development are particularly acute at this scale. The last decade has seen a surge in efforts in measuring resilience to a variety of hazards, yet measurement frameworks lack empirical validation and widespread application. To bridge this information gap, we provide analysis into an unprecedented dataset: a standardized, empirically validated approach to community flood resilience measurement, applied in over 290 communities across 20 developing countries. The analysis is based on the Flood Resilience Measurement for Communities (FRMC) framework and tool designed to provide a holistic approach to measuring community flood resilience and to support implementation of resilience-strengthening interventions. Our analysis starts with an assessment of the validity and reliability of the data and leads into querying whether and how to organize the wealth of information of community contexts into a discrete set of clusters. Although we appreciate that fostering resilience has to be strongly context-aware, we also present a taxonomy related to flood risk and socioeconomic community characteristics, which, using multinomial and random forest methods, leads us to identifying five distinct community clusters based on their resilience profiles and capital scores. This clustering taxonomy provides a way to group communities by similarities and differences between absolute and distributional resilience levels and socioeconomic community characteristics. These clusters may serve as a resource for further examining efforts for building resilience, analyzing resilience dynamics over time, and informing policy options across the world. Keyword Capital approach
Community characteristics
Community resilience measurement
Flooding
Global
Local
taxonomyCopyright Holder The Authors Copyright Year 2024 Copyright type Creative commons DOI 10.5751/ES-15654-290436 -
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