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Baseline Resilience Indicators for Communities×Disaster Recovery Curve Analysis×
NozareDisaster StudiesDisaster Studies
SaimeProcess / pipelineProcess / pipeline
Izcelsmes gads20102006
AutorsSusan L. Cutter, Christopher G. Burton & Christopher T. EmrichScott B. Miles & Stephanie E. Chang
TipsComposite indicator pipeline for inherent community resilienceTime-trajectory model of functional recovery and resilience
PirmavotsCutter, S. L., Burton, C. G., & Emrich, C. T. (2010). Disaster Resilience Indicators for Benchmarking Baseline Conditions. Journal of Homeland Security and Emergency Management, 7(1), Article 51. DOI ↗Miles, S. B., & Chang, S. E. (2006). Modeling Community Recovery from Earthquakes. Earthquake Spectra, 22(2), 439-458. DOI ↗
Citi nosaukumiBRIC Resilience Index, BRIC Index, Community Resilience Indicator IndexRecovery Trajectory Analysis, Resilience Curve Analysis, Community Recovery Modeling
Saistītās33
KopsavilkumsThe Baseline Resilience Indicators for Communities (BRIC) is a composite-index method, introduced by Susan Cutter, Christopher Burton, and Christopher Emrich in 2010, for benchmarking the inherent, pre-event resilience of places to hazards and disasters. Rather than measuring how a community actually performed after a specific event, BRIC measures the standing conditions — social, economic, community-capital, institutional, infrastructural, and environmental — that theory and evidence link to a community's capacity to prepare for, absorb, and recover from shocks. Indicators are normalized, sign-corrected so that higher always means more resilient, averaged within each dimension into subindices, and summed into a single comparable score for every place. The 2014 refinement standardized the dimensions and demonstrated the index across all U.S. counties, making BRIC one of the most widely used baseline resilience metrics in disaster studies.Disaster recovery curve analysis represents the recovery of a community or system after a disaster as a trajectory of functionality over time and uses that trajectory to quantify resilience. Building on the resilience-triangle concept and formalized for community recovery by Scott Miles and Stephanie Chang in 2006, the approach tracks a performance indicator — population, employment, housing occupancy, service capacity, or composite functionality — from its pre-event baseline, through the abrupt drop caused by the disaster, along the path back toward (or beyond) the baseline. From the curve, analysts read the magnitude of the initial loss, the speed and shape of recovery, the time to return, and the cumulative resilience loss represented by the area between the baseline and the recovery path. Comparing curves across communities or scenarios reveals what drives faster, fuller recovery and complements loss-estimation models that stop at the moment of impact.
ScholarGateDatu kopa
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  1. v1
  2. 2 Avoti
  3. PUBLISHED

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ScholarGateSalīdzināt metodes: Baseline Resilience Indicators for Communities · Disaster Recovery Curve Analysis. Izgūts 2026-06-25 no https://scholargate.app/lv/compare