An integro-differential model for the spread of diseases
Moritz Sch\"afer, Karol Niedzielewski, Thomas G\"otz, Tyll, Kr\"uger

TL;DR
This paper introduces an integro-differential model for disease spread that incorporates non-homogeneous mixing, derives analytical solutions, and validates it against agent-based models, enabling efficient optimal control strategies.
Contribution
The study develops a novel integro-differential SIR/SIS model with analytical solutions and demonstrates its effectiveness as a computationally efficient proxy for agent-based models.
Findings
Model accurately simulates disease spread with non-homogeneous mixing.
Optimal control strategies are identified for various implementation scenarios.
Model validation shows close agreement with agent-based benchmarks.
Abstract
In this study, we present an integro-differential model to simulate the local spread of infections. The model incorporates a standard susceptible-infected-recovered (\textit{SIR}-) model enhanced by an integral kernel, allowing for non-homogeneous mixing between susceptibles and infectives. We define requirements for the kernel function and derive analytical results for both the \textit{SIR}- and a reduced susceptible-infected-susceptible (\textit{SIS}-) model, especially the uniqueness of solutions. In order to optimize the balance between disease containment and the social and political costs associated with lockdown measures, we set up requirements for the implementation of control function, and show examples for three different formulations for the control: continuous and time-dependent, continuous and space- and time-dependent, and piecewise constant space- and time-dependent.…
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Taxonomy
TopicsMathematical and Theoretical Epidemiology and Ecology Models · COVID-19 epidemiological studies · Evolution and Genetic Dynamics
