Analysis and prediction of COVID-19 based on the SIR-B model

Yijun Shen, Xin-wei Guo
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Abstract

With the spread of the global COVID-19 epidemic, an increasing number of asymptomatic infectors are being detected, and are having an increasingly significant impact on the epidemic spread. To address this problem, a modified SIR-B model based on the time-varying is proposed, which takes into account the presence of asymptomatic infectors on the basis of the traditional SIR model, and predicts the impact of asymptomatic infectors on the subsequent development of epidemic by a Particle Swarm Optimization (PSO) algorithm which changes the adaptation function. Simulation experiments show that the SIR-B model has about one-third more infectors than the SIR model, which is closer to the actual situation, and that the SIR-B model is more adaptive and more accurate in predicting the epidemic than the traditional SIR model.
基于SIR-B模型的COVID-19分析与预测
随着新冠肺炎全球疫情的蔓延,越来越多的无症状感染者被发现,对疫情传播的影响越来越大。针对这一问题,提出了一种基于时变的改进SIR- b模型,该模型在传统SIR模型的基础上考虑了无症状感染者的存在,并通过改变自适应函数的粒子群优化(PSO)算法预测无症状感染者对疫情后续发展的影响。仿真实验表明,SIR- b模型的感染人数比SIR模型多1 / 3左右,更接近实际情况,并且SIR- b模型比传统SIR模型具有更强的适应性和更准确的疫情预测能力。
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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