Estimating the time-dependent contact rate of SIR and SEIR models in mathematical epidemiology using physics-informed neural networks

Viktor Grimm, Alexander Heinlein, A. Klawonn, M. Lanser, J. Weber
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引用次数: 8

Abstract

The course of an epidemic can be often successfully described mathematically using compartment models. These models result in a system of ordinary differential equations. Two well-known examples are the SIR and the SEIR models. The transition rates between the different compartments are defined by certain parameters which are specific for the respective virus. Often, these parameters can be taken from the literature or can be determined from statistics. However, the contact rate or the related effective reproduction number are in general not constant and thus cannot easily be determined. Here, a new machine learning approach based on physics-informed neural networks is presented that can learn the contact rate from given data for the dynamical systems given by the SIR and SEIR models. The new method generalizes an already known approach for the identification of constant parameters to the variable or time-dependent case. After introducing the new method, it is tested for synthetic data generated by the numerical solution of SIR and SEIR models. Here, the case of exact and perturbed data is considered. In all cases, the contact rate can be learned very satisfactorily. Finally, the SEIR model in combination with physics-informed neural networks is used to learn the contact rate for COVID-19 data given by the course of the epidemic in Germany. The simulation of the number of infected individuals over the course of the epidemic, using the learned contact rate, is very promising.
利用物理信息神经网络估计数学流行病学中SIR和SEIR模型的时变接触率
利用隔室模型,通常可以成功地用数学方法描述流行病的过程。这些模型产生一个常微分方程组。两个著名的例子是SIR和SEIR模型。不同区室之间的转换速率由特定于各自病毒的某些参数定义。通常,这些参数可以从文献中获取,也可以从统计数据中确定。然而,接触率或相关的有效繁殖数通常不是恒定的,因此不容易确定。本文提出了一种基于物理信息神经网络的机器学习方法,该方法可以从SIR和SEIR模型给出的动力系统的给定数据中学习接触率。新方法将已知的常数参数辨识方法推广到变量或时变情况。介绍了新方法,并对SIR和SEIR模型数值解生成的综合数据进行了验证。这里考虑的是精确和扰动数据的情况。在所有情况下,接触率都能得到令人满意的结果。最后,将SEIR模型与物理信息神经网络相结合,对德国疫情过程中给出的COVID-19数据进行接触率学习。利用习得接触率来模拟流行病过程中受感染个体的数量,是非常有希望的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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