Sub-Optimal Control in the Zika Virus Epidemic Model Using Differential Evolution
Abstract
:1. Introduction
2. Dynamical Control Model for ZIKV Infection
3. Differential Evolution
4. Numerical Simulations for Sub-Optimal Control Problem
4.1. Sub-Optimal Control Problem
4.2. Numerical Simulations
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
WHO | World Health Organization |
GA | Genetic Algorithm |
DE | Differential Evolution |
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Variable | Definition |
Susceptible newborn babies and adults | |
Exposed newborn babies and adults | |
Asymptomatically infected newborn babies and adults | |
Symptomatically infected newborn babies without microcephaly and symptomatically | |
infected adults | |
Newborn babies and adults with microcephaly | |
Recovered newborn babies and adults | |
Susceptible vectors | |
Exposed vectors | |
Infected vectors | |
Parameter | Definition |
Birth rate of newborn babies | |
Maturity rate of babies | |
p | Fraction of symptomatic infection |
Remaining fraction of symptomatic infection | |
Fraction of newborn babies who are infected from pregnant adult of each class | |
Fraction of newborn babies who are infected with microcephaly | |
Transmission probability per contact from infected vectors to susceptible newborn babies | |
and adults | |
Transmission probability per contact from infected humans to susceptible vectors | |
Transmission probability per sexual contact from infected humans to susceptible humans | |
Exposure modification parameter in babies | |
Infectivity modification parameters in exposed babies and adults | |
Sexual infectivity modification parameters in exposed adults | |
Progression rate of exposed newborn babies and adults | |
Recovery rate of newborn babies and adults | |
Natural death rate of newborn babies and adults | |
Recruitment rate of mosquitoes | |
b | Biting rate of mosquitoes |
Progression rate of exposed mosquitoes | |
Mortality rate of mosquitoes |
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Chaikham, N.; Sawangtong, W. Sub-Optimal Control in the Zika Virus Epidemic Model Using Differential Evolution. Axioms 2018, 7, 61. https://doi.org/10.3390/axioms7030061
Chaikham N, Sawangtong W. Sub-Optimal Control in the Zika Virus Epidemic Model Using Differential Evolution. Axioms. 2018; 7(3):61. https://doi.org/10.3390/axioms7030061
Chicago/Turabian StyleChaikham, Nonthamon, and Wannika Sawangtong. 2018. "Sub-Optimal Control in the Zika Virus Epidemic Model Using Differential Evolution" Axioms 7, no. 3: 61. https://doi.org/10.3390/axioms7030061
APA StyleChaikham, N., & Sawangtong, W. (2018). Sub-Optimal Control in the Zika Virus Epidemic Model Using Differential Evolution. Axioms, 7(3), 61. https://doi.org/10.3390/axioms7030061