Title of article :
Controlling the Spread of COVID-19: Optimal Control Analysis
Author/Authors :
Madubueze, Chinwendu E Department of Mathematics/Statistics/Computer Science - University of Agriculture Makurdi - Markurdi, Nigeria , Dachollom, Sambo Department of Mathematics/Statistics - Akanu Ibiam Federal Polytechnic - Unwana - Afikpo - Ebonyi State, Nigeria , Obiajulu Onwubuya, Isaac Department of Mathematics - Airforce Institute of Technology - Kaduna, Nigeria
Abstract :
Coronavirus disease 2019 (COVID-19) is a disease caused by severe acute respiratory syndrome coronavirus 2 (SARS CoV-2). It
was declared on March 11, 2020, by the World Health Organization as pandemic disease. The disease has neither approved
medicine nor vaccine and has made governments and scholars search for drastic measures in combating the pandemic.
Regrettably, the spread of the virus and mortality due to COVID-19 has continued to increase daily. Hence, it is imperative to
control the spread of the disease particularly using nonpharmacological strategies such as quarantine, isolation, and public
health education. This work studied the effect of these different control strategies as time-dependent interventions using
mathematical modeling and optimal control approach to ascertain their contributions in the dynamic transmission of COVID19. The model was proven to have an invariant region and was well-posed. The basic reproduction number and effective
reproduction numbers were computed with and without interventions, respectively, and were used to carry out the sensitivity
analysis that identified the critical parameters contributing to the spread of COVID-19. The optimal control analysis was carried
out using the Pontryagin’s maximum principle to figure out the optimal strategy necessary to curtail the disease. The findings of
the optimal control analysis and numerical simulations revealed that time-dependent interventions reduced the number of
exposed and infected individuals compared to time-independent interventions. These interventions were time-bound and best
implemented within the first 100 days of the outbreak. Again, the combined implementation of only two of these interventions
produced a good result in reducing infection in the population. While, the combined implementation of all three interventions
performed better, even though zero infection was not achieved in the population. This implied that multiple interventions need
to be deployed early in order to reduce the virus to the barest minimum.
Keywords :
COVID-19 , Optimal , Analysis
Journal title :
Computational and Mathematical Methods in Medicine