A network-based analysis of critical resource accessibility during floods
Type de ressource
            
        Auteurs/contributeurs
                    - Preisser, Matthew (Auteur)
- Passalacqua, Paola (Auteur)
- Bixler, R. Patrick (Auteur)
- Boyles, Stephen D. (Auteur)
Titre
            A network-based analysis of critical resource accessibility during floods
        Résumé
            Numerous government and non-governmental agencies are increasing their efforts to better quantify the disproportionate effects of climate risk on vulnerable populations with the goal of creating more resilient communities. Sociodemographic based indices have been the primary source of vulnerability information the past few decades. However, using these indices fails to capture other facets of vulnerability, such as the ability to access critical resources (e.g., grocery stores, hospitals, pharmacies, etc.). Furthermore, methods to estimate resource accessibility as storms occur (i.e., in near-real time) are not readily available to local stakeholders. We address this gap by creating a model built on strictly open-source data to solve the user equilibrium traffic assignment problem to calculate how an individual's access to critical resources changes during and immediately after a flood event. Redundancy, reliability, and recoverability metrics at the household and network scales reveal the inequitable distribution of the flood's impact. In our case-study for Austin, Texas we found that the most vulnerable households are the least resilient to the impacts of floods and experience the most volatile shifts in metric values. Concurrently, the least vulnerable quarter of the population often carries the smallest burdens. We show that small and moderate inequalities become large inequities when accounting for more vulnerable communities' lower ability to cope with the loss of accessibility, with the most vulnerable quarter of the population carrying four times as much of the burden as the least vulnerable quarter. The near-real time and open-source model we developed can benefit emergency planning stakeholders by helping identify households that require specific resources during and immediately after hazard events.
        Volume
            5
        Date
            2023-10-31
        Extra
            DOI: 10.3389/frwa.2023.1278205
MAG ID: 4388047088
        Référence
            Preisser, M., Passalacqua, P., Bixler, R. P., & Boyles, S. D. (2023). A network-based analysis of critical resource accessibility during floods. 5. https://doi.org/10.3389/frwa.2023.1278205
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