Trevor Reckell, Beckett Sterner, Petar Jevtić, Reggie Davidrajuh
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引用次数: 0
摘要
Petri 网是一种很有前途的流行病学建模框架,包括疾病在人群中或个体内部的传播。其中,易感-传染-复发(SIR)区隔模型是人群流行病学建模的基础,并已在之前的多项 Petri 网研究中得到应用。然而,SIR 模型通常是一个具有连续时间和变量的常微分方程(ODE)系统,而 Petri 网则是离散事件模拟。据我们所知,此前没有任何研究探讨过 Petri 网 SIR 模型与经典 ODE 表述的数值等价性。我们介绍了在用于 Petri 网仿真的 GPenSim 软件包中实现 SIR 模型的关键数值技术。结果表明,这些技术对于 Petri 网 SIR 模型至关重要,在生物相关参数范围内,与 ODE 模拟相比,它们的均方根误差小于 1%。我们的结论是,Petri 网为利用生物相关参数值模拟 SIR 型动力学提供了一个有效的框架,前提是我们概述的其他 PN 结构也得到了实现。
A Numerical Comparison of Petri Net and Ordinary Differential Equation SIR Component Models
Petri nets are a promising modeling framework for epidemiology, including the
spread of disease across populations or within an individual. In particular,
the Susceptible-Infectious-Recovered (SIR) compartment model is foundational
for population epidemiological modeling and has been implemented in several
prior Petri net studies. However, the SIR model is generally stated as a system
of ordinary differential equations (ODEs) with continuous time and variables,
while Petri nets are discrete event simulations. To our knowledge, no prior
study has investigated the numerical equivalence of Petri net SIR models to the
classical ODE formulation. We introduce crucial numerical techniques for
implementing SIR models in the GPenSim package for Petri net simulations. We
show that these techniques are critical for Petri net SIR models and show a
relative root mean squared error of less than 1% compared to ODE simulations
for biologically relevant parameter ranges. We conclude that Petri nets provide
a valid framework for modeling SIR-type dynamics using biologically relevant
parameter values provided that the other PN structures we outline are also
implemented.