Abstract
AbstractAs the global pandemic of the COVID-19 continues, the statistical modeling and analysis of the spreading process of COVID-19 have attracted widespread attention. Various propagation simulation models have been proposed to predict the spread of the epidemic and the effectiveness of related control measures. These models play an indispensable role in understanding the complex dynamic situation of the epidemic. Most existing work studies the spread of epidemic at two levels including population and agent. However, there is no comprehensive statistical analysis of community lockdown measures and corresponding control effects. This paper performs a statistical analysis of the effectiveness of community lockdown based on the Agent-Level Pandemic Simulation (ALPS) model. We propose a statistical model to analyze multiple variables affecting the COVID-19 pandemic, which include the timings of implementing and lifting lockdown, the crowd mobility, and other factors. Specifically, a motion model followed by ALPS and related basic assumptions is discussed first. Then the model has been evaluated using the real data of COVID-19. The simulation study and comparison with real data have validated the effectiveness of our model.
Funder
Science and Technology Planning Project of Shenzhen Municipality
Publisher
Springer Science and Business Media LLC
Reference30 articles.
1. Alzu’bi AA, Alasal SIA, Watzlaf VJ (2021) A simulation study of coronavirus as an epidemic disease using agent-based modeling. Perspectives in Health Information Management 18(Winter)
2. Bao L, Deng W, Gao H, Xiao C, Liu J, Xue J, Lv Q, Liu J, Yu P, Xu Y et al (2020) Reinfection could not occur in sars-cov-2 infected rhesus macaques. BioRxiv
3. Bobashev GV, Goedecke DM, Yu F, Epstein JM (2007) A hybrid epidemic model: combining the advantages of agent-based and equation-based approaches. In: 2007 winter simulation conference. IEEE, pp 1532–1537
4. Carley KM, Fridsma DB, Casman E, Yahja A, Altman N, Chen LC, Kaminsky B, Nave D (2006) Biowar: scalable agent-based model of bioattacks. IEEE Transactions on Systems, Man, and Cybernetics-Part A: Systems and Humans 36(2):252–265
5. Catelli R, Gargiulo F, Casola V, De Pietro G, Fujita H, Esposito M (2020) Crosslingual named entity recognition for clinical de-identification applied to a covid-19 italian data set. Appl Soft Comput 97:106779
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