Niño-Torres David, Ríos-Gutiérrez Andrés, Arunachalam Viswanathan, Ohajunwa Comfort, Seshaiyer Padmanabhan
Department of Statistics, Universidad Nacional de Colombia, Bogotá, Colombia.
George Mason University, Fairfax, VA, USA.
Infect Dis Model. 2022 Mar;7(1):199-211. doi: 10.1016/j.idm.2021.12.008. Epub 2021 Dec 31.
In this paper, a stochastic epidemiological model is presented as an extension of a compartmental SEIR model with random perturbations to analyze the dynamics of the COVID-19 pandemic in the city of Bogotá D.C., Colombia. This model incorporates the spread of COVID-19 impacted by social behaviors in the population and allows for projecting the number of infected, recovered, and deceased individuals considering the mitigation measures, namely confinement and partial relaxed restrictions. Also, the role of randomness using the concept of Brownian motion is emphasized to explain the behavior of the population. Computational experiments for the stochastic model with random perturbations were performed, and the model is validated through numerical simulations for actual data from Bogotá D.C.
本文提出了一种随机流行病学模型,作为具有随机扰动的分区SEIR模型的扩展,以分析哥伦比亚首都波哥大市新冠疫情的动态。该模型纳入了受人群社会行为影响的新冠病毒传播情况,并考虑缓解措施(即封锁和部分放宽限制)来预测感染、康复和死亡人数。此外,强调了利用布朗运动概念的随机性作用来解释人群行为。对具有随机扰动的随机模型进行了计算实验,并通过对波哥大市实际数据的数值模拟对该模型进行了验证。