LIVIVO - The Search Portal for Life Sciences

zur deutschen Oberfläche wechseln
Advanced search

Search results

Result 1 - 1 of total 1

Search options

Article: Social distancing mediated generalized model to predict epidemic spread of COVID-19.

Yasir, Kashif Ammar / Liu, Wu-Ming

Nonlinear dynamics

2021  Volume 106, Issue 2, Page(s) 1187–1195

Abstract: ... with social distancing in generalized Richard model and by using the data of confirmed COVID-19 cases in China, USA and ... model is needed. In this manuscript, we propose a social distancing mediated generalized model ... of COVID-19, a mechanism for social distancing is indispensable. Also, to predict the effectiveness and ...

Abstract The extensive proliferation of recent coronavirus (COVID-19), all over the world, is the outcome of social interactions through massive transportation, gatherings and population growth. To disrupt the widespread of COVID-19, a mechanism for social distancing is indispensable. Also, to predict the effectiveness and quantity of social distancing for a particular social network, with a certain contagion, a generalized model is needed. In this manuscript, we propose a social distancing mediated generalized model to predict the pandemic spread of COVID-19. By considering growth rate as a temporal harmonic function damped with social distancing in generalized Richard model and by using the data of confirmed COVID-19 cases in China, USA and India, we find that, with time, the cumulative spread grows more rapidly due to weak social distancing as compared to the stronger social distancing, where it is explicitly decreasing. Furthermore, we predict the possible outcomes with various social distancing scenarios by considering highest growth rate as an initial state, and illustrate that the increase in social distancing tremendously decreases growth rate, even it tends to reach zero in lockdown regimes. Our findings not only provide epidemic growth scenarios as a function of social distancing but also provide a modified growth model to predict controlled information flow in any network.
Language English
Publishing date 2021-04-11
Publishing country Netherlands
Document type Journal Article
ZDB-ID 2012600-1
ISSN 1573-269X ; 0924-090X
ISSN (online) 1573-269X
ISSN 0924-090X
DOI 10.1007/s11071-021-06424-0
Database MEDical Literature Analysis and Retrieval System OnLINE

More links

Kategorien

To top