论文标题
STSIR:具有迁移率数据的空间时间大流行模型
STSIR: Spatial Temporal Pandemic Model with Mobility Data
论文作者
论文摘要
随着Covid-19的爆发,如何减轻和抑制其传播是政府的一个大问题。公共卫生部需要强大的模型来建模和预测这种大流行的趋势和规模。可以评估公共政策效果的模型对于与Covid-19的战斗也至关重要。现有模型的主要局限性是,他们只能通过在感染发生后计算$ r_0 $来评估策略,而不是提供可观察的索引。为了解决这个问题,根据Covid-19的传输特征,我们预先准备了一种新型的框架时空 - 敏感性感染感染的回旋(STSIR)模型。特别是,我们将城市内和城市间移动性指数与传统的SIR动力学合并,并使其成为动态系统。我们证明了STSIR系统是一个封闭的系统,它使系统自吻合。最后,我们提出了一种多阶段模拟退火(MSSA)算法,以找到系统的最佳参数。在我们的实验中,基于百度移动性数据集以及Dingxiangyuan提供的中国大流行数据集,我们的模型可以有效地预测大流行的总规模,并通过可观察的指数提供明确的政策分析。
With the outbreak of COVID-19, how to mitigate and suppress its spread is a big issue to the government. Department of public health need powerful models to model and predict the trend and scale of such pandemic. And models that could evaluate the effect of the public policy are also essential to the fight with the COVID-19. A main limitation of existing models is that they can only evaluate the policy by calculating $R_0$ after infection happens instead of giving observable index. To tackle this, based on the transmission character of the COVID-19, we preposed a novel framework Spatial-Temporal-Susceptible-Infected-Removed (STSIR) model. In particular, we merged both intra-city and inter-city mobility index with the traditional SIR dynamics and make it a dynamic system. And we proved that the STSIR system is a closed system which makes the system self-consistent. And finally we proposed a Multi-Stage Simulated Annealing (MSSA) algorithm to find optimal parameter of the system. In our experiments, based on Baidu Mobility dataset, and China pandemic dataset provided by Dingxiangyuan, our model can effectively predict the total scale of the pandemic and also gives clear policy analysis with observable index.