COVID-19: Optimal Allocation of Ventilator Supply under Uncertainty and Risk
Xuecheng Yin, I. Esra Buyuktahtakin, Bhumi P. Patel

TL;DR
This paper develops a risk-averse multi-stage stochastic model for optimal ventilator allocation during COVID-19, accounting for uncertainties like asymptomatic infections and human migration, to minimize infections and deaths.
Contribution
It introduces a novel epidemiological logistics model incorporating risk measures and dynamic transmission rates, tailored for resource allocation under uncertainty during pandemics.
Findings
Migration significantly impacts disease transmission.
Optimal ventilator distribution depends on initial infections and capacity.
Model validated with real COVID-19 data from New York and New Jersey.
Abstract
This study presents a new risk-averse multi-stage stochastic epidemics-ventilator-logistics compartmental model to address the resource allocation challenges of mitigating COVID-19. This epidemiological logistics model involves the uncertainty of untested asymptomatic infections and incorporates short-term human migration. Disease transmission is also forecasted through a new formulation of transmission rates that evolve over space and time with respect to various non-pharmaceutical interventions, such as wearing masks, social distancing, and lockdown. The proposed multi-stage stochastic model overviews different scenarios on the number of asymptomatic individuals while optimizing the distribution of resources, such as ventilators, to minimize the total expected number of newly infected and deceased people. The Conditional Value at Risk (CVaR) is also incorporated into the multi-stage…
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Taxonomy
TopicsCOVID-19 epidemiological studies · Disaster Response and Management · Disaster Management and Resilience
