Epidemic spreading on spatial higher-order network.

IF 2.7 2区 数学 Q1 MATHEMATICS, APPLIED Chaos Pub Date : 2024-07-01 DOI:10.1063/5.0219759
Wenbin Gu, Yue Qiu, Wenjie Li, Zengping Zhang, Xiaoyang Liu, Ying Song, Wei Wang
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Abstract

Higher-order interactions exist widely in mobile populations and are extremely important in spreading epidemics, such as influenza. However, research on high-order interaction modeling of mobile crowds and the propagation dynamics above is still insufficient. Therefore, this study attempts to model and simulate higher-order interactions among mobile populations and explore their impact on epidemic transmission. This study simulated the spread of the epidemic in a spatial high-order network based on agent-based model modeling. It explored its propagation dynamics and the impact of spatial characteristics on it. Meanwhile, we construct state-specific rate equations based on the uniform mixing assumption for further analysis. We found that hysteresis loops are an inherent feature of high-order networks in this space under specific scenarios. The evolution curve roughly presents three different states with the initial value change, showing different levels of the endemic balance of low, medium, and high, respectively. Similarly, network snapshots and parameter diagrams also indicate these three types of equilibrium states. Populations in space naturally form components of different sizes and isolations, and higher initial seeds generate higher-order interactions in this spatial network, leading to higher infection densities. This phenomenon emphasizes the impact of high-order interactions and high-order infection rates in propagation. In addition, crowd density and movement speed act as protective and inhibitory factors for epidemic transmission, respectively, and depending on the degree of movement weaken or enhance the effect of hysteresis loops.

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空间高阶网络上的流行病传播。
高阶交互作用广泛存在于流动人群中,在流感等流行病的传播过程中极为重要。然而,对流动人群的高阶交互建模和上述传播动力学的研究仍然不足。因此,本研究尝试对流动人群之间的高阶互动进行建模和模拟,并探讨其对流行病传播的影响。本研究基于基于代理的建模方法,模拟了疫情在空间高阶网络中的传播。研究探讨了其传播动态以及空间特征对其的影响。同时,我们在均匀混合假设的基础上构建了特定状态的速率方程,以作进一步分析。我们发现,在特定情况下,滞后环是该空间中高阶网络的固有特征。随着初始值的变化,演化曲线大致呈现出三种不同的状态,分别显示出低、中、高不同程度的地方性平衡。同样,网络快照和参数图也显示了这三种平衡状态。空间中的种群自然形成不同大小和隔离度的组成部分,较高的初始种子在这个空间网络中产生较高阶的相互作用,导致较高的感染密度。这一现象强调了高阶相互作用和高阶感染率在传播中的影响。此外,人群密度和移动速度分别作为流行病传播的保护因素和抑制因素,并根据移动程度削弱或增强滞后环的效果。
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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来源期刊
Chaos
Chaos 物理-物理:数学物理
CiteScore
5.20
自引率
13.80%
发文量
448
审稿时长
2.3 months
期刊介绍: Chaos: An Interdisciplinary Journal of Nonlinear Science is a peer-reviewed journal devoted to increasing the understanding of nonlinear phenomena and describing the manifestations in a manner comprehensible to researchers from a broad spectrum of disciplines.
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