A reductive analysis of a compartmental model for COVID-19: data assimilation and forecasting for the United Kingdom
G. Ananthakrishna, Jagadish Kumar

TL;DR
This paper presents a simplified, analytically solvable compartmental model for COVID-19 in the UK, demonstrating its effectiveness in data fitting and forecasting disease progression under intervention scenarios.
Contribution
It introduces a reduced logistic model based on the 'accessible population' hypothesis, simplifying the complex COVID-19 model while maintaining accuracy in data fitting and forecasting.
Findings
The logistic model fits UK COVID-19 data well.
The model predicts a saturation of infections around 352,000.
The model indicates a slowing down of infection spread.
Abstract
We introduce a deterministic model that partitions the total population into the susceptible, infected, quarantined, and those traced after exposure, the recovered and the deceased. We hypothesize 'accessible population for transmission of the disease' to be a small fraction of the total population, for instance when interventions are in force. This hypothesis, together with the structure of the set of coupled nonlinear ordinary differential equations for the populations, allows us to decouple the equations into just two equations. This further reduces to a logistic type of equation for the total infected population. The equation can be solved analytically and therefore allows for a clear interpretation of the growth and inhibiting factors in terms of the parameters in the full model. The validity of the 'accessible population' hypothesis and the efficacy of the reduced logistic model…
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Taxonomy
TopicsCOVID-19 epidemiological studies · COVID-19 Pandemic Impacts · COVID-19 impact on air quality
