TL;DR
COVID-ABS is an agent-based model simulating COVID-19 spread and effects of various social distancing policies, aiding policymakers in evaluating health and economic impacts of interventions.
Contribution
The paper introduces COVID-ABS, a flexible, open-source agent-based model for simulating COVID-19 dynamics and policy effects, including economic and health outcomes.
Findings
Scenarios with face masks and partial isolation balance health and economic impacts.
Lockdowns reduce deaths but have high economic costs.
Model is adaptable to different societies and policy scenarios.
Abstract
The COVID-19 pandemic due to the SARS-CoV-2 coronavirus has directly impacted the public health and economy worldwide. To overcome this problem, countries have adopted different policies and non-pharmaceutical interventions for controlling the spread of the virus. This paper proposes the COVID-ABS, a new SEIR (Susceptible-Exposed-Infected-Recovered) agent-based model that aims to simulate the pandemic dynamics using a society of agents emulating people, business and government. Seven different scenarios of social distancing interventions were analyzed, with varying epidemiological and economic effects: (1) do nothing, (2) lockdown, (3) conditional lockdown, (4) vertical isolation, (5) partial isolation, (6) use of face masks, and (7) use of face masks together with 50% of adhesion to social isolation. In the impossibility of implementing scenarios with lockdown, which present the lowest…
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