A robust prediction from a minimal model of COVID-19 — Can we avoid the third wave?
COVID-19 pandemic is one of the major disasters that humanity has ever faced. In this paper, we try to model the effect of vaccination in controlling the pandemic, particularly in context to the third wave which is predicted to hit globally. Here, we have modified the susceptible–exposed–infected–re...
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Published in | International journal of modern physics. C, Computational physics, physical computation Vol. 33; no. 7 |
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Main Authors | , , |
Format | Journal Article |
Language | English |
Published |
Singapore
World Scientific Publishing Company
01.07.2022
World Scientific Publishing Co. Pte., Ltd |
Subjects | |
Online Access | Get full text |
ISSN | 0129-1831 1793-6586 |
DOI | 10.1142/S012918312250098X |
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Abstract | COVID-19 pandemic is one of the major disasters that humanity has ever faced. In this paper, we try to model the effect of vaccination in controlling the pandemic, particularly in context to the third wave which is predicted to hit globally. Here, we have modified the susceptible–exposed–infected–recovered–dead model by introducing a vaccination term. One of our main assumptions is that the infection rate (
β
(
t
)
) is oscillatory. This oscillatory nature has been discussed earlier in literature with reference to the seasonality of epidemics. However, in our case, we invoke this nature of the infection rate (
β
(
t
)
) to model the cyclical behavior of the COVID-19 pandemic within a short period. This study focuses on a minimalistic approach where we have logically deduced that the infection rate (
β
(
t
)
) and the vaccination rate (
λ
) are the most important parameters while the other parameters can be assumed to be constants throughout the simulation. Finally, we have studied the rich interplay between the infection rate (
β
(
t
)
) and the vaccination rate (
λ
) on the infectious cases of COVID-19 and made some robust conclusions regarding the global behavior of this pandemic in near future. |
---|---|
AbstractList | COVID-19 pandemic is one of the major disasters that humanity has ever faced. In this paper, we try to model the effect of vaccination in controlling the pandemic, particularly in context to the third wave which is predicted to hit globally. Here, we have modified the susceptible–exposed–infected–recovered–dead model by introducing a vaccination term. One of our main assumptions is that the infection rate (β(t)) is oscillatory. This oscillatory nature has been discussed earlier in literature with reference to the seasonality of epidemics. However, in our case, we invoke this nature of the infection rate (β(t)) to model the cyclical behavior of the COVID-19 pandemic within a short period. This study focuses on a minimalistic approach where we have logically deduced that the infection rate (β(t)) and the vaccination rate (λ) are the most important parameters while the other parameters can be assumed to be constants throughout the simulation. Finally, we have studied the rich interplay between the infection rate (β(t)) and the vaccination rate (λ) on the infectious cases of COVID-19 and made some robust conclusions regarding the global behavior of this pandemic in near future. COVID-19 pandemic is one of the major disasters that humanity has ever faced. In this paper, we try to model the effect of vaccination in controlling the pandemic, particularly in context to the third wave which is predicted to hit globally. Here, we have modified the susceptible–exposed–infected–recovered–dead model by introducing a vaccination term. One of our main assumptions is that the infection rate ([Formula: see text]) is oscillatory. This oscillatory nature has been discussed earlier in literature with reference to the seasonality of epidemics. However, in our case, we invoke this nature of the infection rate ([Formula: see text]) to model the cyclical behavior of the COVID-19 pandemic within a short period. This study focuses on a minimalistic approach where we have logically deduced that the infection rate ([Formula: see text]) and the vaccination rate ([Formula: see text]) are the most important parameters while the other parameters can be assumed to be constants throughout the simulation. Finally, we have studied the rich interplay between the infection rate ([Formula: see text]) and the vaccination rate ([Formula: see text]) on the infectious cases of COVID-19 and made some robust conclusions regarding the global behavior of this pandemic in near future. COVID-19 pandemic is one of the major disasters that humanity has ever faced. In this paper, we try to model the effect of vaccination in controlling the pandemic, particularly in context to the third wave which is predicted to hit globally. Here, we have modified the susceptible–exposed–infected–recovered–dead model by introducing a vaccination term. One of our main assumptions is that the infection rate ( β ( t ) ) is oscillatory. This oscillatory nature has been discussed earlier in literature with reference to the seasonality of epidemics. However, in our case, we invoke this nature of the infection rate ( β ( t ) ) to model the cyclical behavior of the COVID-19 pandemic within a short period. This study focuses on a minimalistic approach where we have logically deduced that the infection rate ( β ( t ) ) and the vaccination rate ( λ ) are the most important parameters while the other parameters can be assumed to be constants throughout the simulation. Finally, we have studied the rich interplay between the infection rate ( β ( t ) ) and the vaccination rate ( λ ) on the infectious cases of COVID-19 and made some robust conclusions regarding the global behavior of this pandemic in near future. |
Author | Roychowdhury, Suparna Chowdhury, Sourav Chaudhuri, Indranath |
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Cites_doi | 10.1016/j.ijid.2020.12.075 10.7326/M20-0504 10.1016/S0022-5193(84)80150-2 10.1016/j.physa.2020.125723 10.1103/PhysRevE.84.061911 10.1007/BF00276232 10.1098/rspa.1927.0118 10.1142/S012918312150128X 10.1371/journal.pone.0237417 10.1016/S1473-3099(20)30287-5 10.1109/CEC45853.2021.9504738 10.1098/rsif.2020.0599 10.2307/j.ctvcm4gk0 10.1103/PhysRevE.103.032212 10.1016/j.idm.2021.11.001 10.4103/ijmr.ijmr_1627_21 10.1038/s41598-021-95025-3 10.1016/j.jfma.2021.05.015 10.21276/apjhs.2021.8.3.09 10.18562/IJEE.053 10.1007/s11587-017-0348-6 |
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Title | A robust prediction from a minimal model of COVID-19 — Can we avoid the third wave? |
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