Spatial Scale Effects in COVID-19 Spread Models
Marlon N. Gonzaga
Programa de Pós-Graduação em Modelagam Matemática e Computacional
Centro Federal de Educação Tecnológica de Minas Gerais - CEFET-MG
Ave. Amazonas, 7675 - Nova Gameleira
Belo Horizonte, Minas Gerais, Brazil
Marcelo M. de Oliveira
Allbens A. P. Faria
Programa de Pós-Graduação em Modelagam Matemática e Computacional
Laboratório de Sistemas Complexos e Sistemas Dinâmicos
Ave. Amazonas, 7675 - Nova Gameleira
Belo Horizonte, Minas Gerais, Brazil
Abstract
The COVID-19 pandemic has highlighted epidemiological models as important forecasting methods and planning strategies, with studies conducted using a wide variety of analytical and computational techniques. Knowing that more pandemic episodes may occur, it is essential that epidemiological modeling present increasingly credible results. From this perspective, this paper aims to highlight the influence of spatial distribution on an epidemic dynamic, using agent-based modeling. To calibrate the behavioral profile of the population, data was taken on mobility, population pyramid, individual behavior and government policies of a real population during the pandemic. Two different initial spatial distribution scenarios are tested and the robustness of the infection is analyzed. Totalistic rules were designed to assess the influence of infected individuals in the vicinity of an agent, a factor that must not be ignored in modeling respiratory diseases with viruses capable of spreading by aerosols, such as SARS-CoV-2. It is shown that the scenario with nonuniform distribution of agents is much more robust, generating an epidemic process even when uniform distribution, for the same parameters, did not propagate the infection. Our results also suggest that herd immunity is attained in different levels of recovered individuals, showing higher values in denser regions. In conclusion, it is reinforced that the nonuniform feature of the spatial distribution of individuals plays a key role in the infection dynamics and should receive more attention when building epidemiological models.
Keywords: complex systems; epidemiological modeling; spatial scale effects; spatial distribution in power laws; COVID-19
Cite this publication as:
M. N. Gonzaga, M. M. de Oliveira and A. A. P. Faria, “Spatial Scale Effects in COVID-19 Spread Models,” Complex Systems, 32(1), 2023 pp. 71–87.
https://doi.org/10.25088/ComplexSystems.32.1.71