Title of article :
Identification of an Epidemiological Model to Simulate the COVID-19 Epidemic Using Robust Multiobjective Optimization and Stochastic Fractal Search
Author/Authors :
Lobato, Fran Sérgio Federal University of Uberlândia - Uberlândia, Brazil , Libotte, Gustavo Barbosa National Laboratory for Scientific Computing - Petrópolis, Brazil , Platt, Gustavo Mendes School of Chemistry and Food - Federal University of Rio Grande - Santo Antônio da Patrulha, Brazil
Pages :
7
From page :
1
To page :
7
Abstract :
Traditionally, the identification of parameters in the formulation and solution of inverse problems considers that models, variables, and mathematical parameters are free of uncertainties. This aspect simplifies the estimation process, but does not consider the influence of relatively small changes in the design variables in terms of the objective function. In this work, the SIDR (Susceptible, Infected, Dead, and Recovered) model is used to simulate the dynamic behavior of the novel coronavirus disease (COVID-19), and its parameters are estimated by formulating a robust inverse problem, that is, considering the sensitivity of design variables. For this purpose, a robust multiobjective optimization problem is formulated, considering the minimization of uncertainties associated with the estimation process and the maximization of the robustness parameter. To solve this problem, the Multiobjective Stochastic Fractal Search algorithm is associated with the Effective Mean concept for the evaluation of robustness. The results obtained considering real data of the epidemic in China demonstrate that the evaluation of the sensitivity of the design variables can provide more reliable results.
Keywords :
COVID-19 , Optimization , SEIR
Journal title :
Computational and Mathematical Methods in Medicine
Serial Year :
2020
Full Text URL :
Record number :
2613050
Link To Document :
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