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Auteurs principaux: Talha, Md Abu, Xu, Yongjia, Zhao, Shan, Geng, Weihua
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2409.10556
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author Talha, Md Abu
Xu, Yongjia
Zhao, Shan
Geng, Weihua
author_facet Talha, Md Abu
Xu, Yongjia
Zhao, Shan
Geng, Weihua
contents The SIR model is a classical model characterizing the spreading of infectious diseases. This model describes the time-dependent quantity changes among Susceptible, Infectious, and Recovered groups. By introducing space-depend effects such as diffusion and creation in addition to the SIR model, the Fisher's model is in fact a more advanced and comprehensive model. However, the Fisher's model is much less popular than the SIR model in simulating infectious disease numerically due to the difficulties from the parameter selection, the involvement of 2-d/3-d spacial effects, the configuration of the boundary conditions, etc. This paper aim to address these issues by providing numerical algorithms involving space and time finite difference schemes and iterative methods, and its open-source Python code for solving the Fisher's model. This 2-D Fisher's solver is second order in space and up to the second order in time, which is rigorously verified using test cases with analytical solutions. Numerical algorithms such as SOR, implicit Euler, Staggered Crank-Nicolson, and ADI are combined to improve the efficiency and accuracy of the solver. It can handle various boundary conditions subject to different physical descriptions. In addition, real-world data of Covid-19 are used by the model to demonstrate its practical usage in providing prediction and inferences.
format Preprint
id arxiv_https___arxiv_org_abs_2409_10556
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Temporal and Spacial Studies of Infectious Diseases: Mathematical Models and Numerical Solvers
Talha, Md Abu
Xu, Yongjia
Zhao, Shan
Geng, Weihua
Quantitative Methods
Dynamical Systems
The SIR model is a classical model characterizing the spreading of infectious diseases. This model describes the time-dependent quantity changes among Susceptible, Infectious, and Recovered groups. By introducing space-depend effects such as diffusion and creation in addition to the SIR model, the Fisher's model is in fact a more advanced and comprehensive model. However, the Fisher's model is much less popular than the SIR model in simulating infectious disease numerically due to the difficulties from the parameter selection, the involvement of 2-d/3-d spacial effects, the configuration of the boundary conditions, etc. This paper aim to address these issues by providing numerical algorithms involving space and time finite difference schemes and iterative methods, and its open-source Python code for solving the Fisher's model. This 2-D Fisher's solver is second order in space and up to the second order in time, which is rigorously verified using test cases with analytical solutions. Numerical algorithms such as SOR, implicit Euler, Staggered Crank-Nicolson, and ADI are combined to improve the efficiency and accuracy of the solver. It can handle various boundary conditions subject to different physical descriptions. In addition, real-world data of Covid-19 are used by the model to demonstrate its practical usage in providing prediction and inferences.
title Temporal and Spacial Studies of Infectious Diseases: Mathematical Models and Numerical Solvers
topic Quantitative Methods
Dynamical Systems
url https://arxiv.org/abs/2409.10556