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Articles | Volume XLVI-4/W6-2021
https://doi.org/10.5194/isprs-archives-XLVI-4-W6-2021-65-2021
https://doi.org/10.5194/isprs-archives-XLVI-4-W6-2021-65-2021
18 Nov 2021
 | 18 Nov 2021

COVID-19 AGENT-BASED MODEL: AN EPIDEMIOLOGICAL SIMULATOR APPLIED IN VACCINATION SCENARIOS FOR QUEZON CITY, PHILIPPINES

V. P. Bongolan, K. K. Ang, J. J. Celeste, J. M. Minoza, S. Caoili, R. L. Rivera, and R. de Castro

Keywords: COVID-19, Vaccine Distribution, Agent-Based Model, Linear Programming

Abstract. COVID-19 vaccines are rolling out in the Philippines but the supply remains limited; there is a need to optimize the distribution. In this study, we developed a COVID-19 agent-based model for Quezon City, a COVID-19 hotspot in the country. This model, in conjunction with a multi-objective linear programming model for equitable vaccine distribution, was then used to simulate four vaccination scenarios. Experiments were conducted with the front-line workers always added to the groups: mobile workers, elderly and low-income. Main results are: prioritizing the mobile workers minimizes infections the most (by 4.34%), while prioritizing the low-income groups minimizes deaths the most (by 1.93%). These results demonstrate that protecting the population with the most interactions (mobile workers) effectively reduces future infections. On the other hand, protecting the most vulnerable population (low income and elderly) decreases the likelihood of death. These results may guide the policy-makers in Quezon City.