Spatiotemporal patterns of Covid-19 pandemic in India: Inferences of pandemic dynamics from data analysis
Modeling and analysis of the large scale Covid-19 pandemic data can yield inferences about it's dynamics and characteristics of disease propagation. These inferences can then be correlated with contextual factors like population density, effects of strategic interventions, heterogeneous disease...
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Main Authors | , |
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Format | Journal Article |
Language | English |
Published |
06.07.2022
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Subjects | |
Online Access | Get full text |
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Summary: | Modeling and analysis of the large scale Covid-19 pandemic data can yield
inferences about it's dynamics and characteristics of disease propagation.
These inferences can then be correlated with contextual factors like population
density, effects of strategic interventions, heterogeneous disease propagation
etc, and such set of validated inferences can serve as precedents for designing
of subsequent mitigation strategies. In this work, we present the analysis of
Covid-19 pandemic data in Indian context using growth functions fitting
procedure and harmonic analysis method. Our results of growth function fitting
to the data indicate that the growth function parameters are quite sensitive to
the growth of the infected population indicating positive impact of lockdown
strategy, identification of inflection point and nearly synchronous statistical
features of disease spreading. The harmonic analysis of the data shows the
countrywide synchronous incident features due to simultaneous implementation of
control strategies. However, if one analyzes the data from each state of the
India, one can see various forms of travelling waves in the countrywide wave
pattern. Hence, one needs to do these analysis from time to time to understand
the effectiveness of any control strategy and to closely look at the disease
propagation to devise the required type of mitigation strategies. |
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DOI: | 10.48550/arxiv.2207.02586 |