The emergence of infectious disease COVID-19 has challenged and changed the world in an unprecedented manner. The integration of wireless networks with edge computing (namely wireless edge networks) brings opportunities to address this crisis. In this paper, we aim to investigate the prediction of the infectious probability and propose precautionary measures against COVID-19 with the assistance of wireless edge networks. Due to the availability of the recorded detention time and the density of individuals within a wireless edge network, we propose a stochastic geometry-based method to analyze the infectious probability of individuals. The proposed method can well keep the privacy of individuals in the system since it does not require to know the location or trajectory of each individual. Moreover, we also consider three types of mobility models and the static model of individuals. Numerical results show that analytical results well match with simulation results, thereby validating the accuracy of the proposed model. Moreover, numerical results also offer many insightful implications. Thereafter, we also offer a number of countermeasures against the spread of COVID-19 based on wireless edge networks. This study lays the foundation toward predicting the infectious risk in realistic environment and points out directions in mitigating the spread of infectious diseases with the aid of wireless edge networks.
翻译:传染性疾病COVID-19的出现以前所未有的方式挑战并改变了世界。无线网络与边缘计算(即无线边缘网络)的整合带来了应对这一危机的机会。在本文件中,我们的目标是在无线边缘网络的协助下,对传染性概率的预测进行调查,并提出针对COVID-19的预防措施。由于有记录的拘留时间和无线边缘网络内个人的密度,我们提议了一种基于随机几何方法来分析个人的传染性概率。拟议的方法可以很好地保持个人在系统中的隐私,因为它不需要了解每个人的位置或轨迹。此外,我们还考虑三种类型的移动模型和个人静态模型。数字结果显示分析结果与模拟结果完全吻合,从而证实拟议模型的准确性。此外,数字结果也具有许多深刻的影响。随后,我们还提出了针对基于无线边缘网络的COVID-19扩散的一些对策。这项研究为预测现实环境中的传染性风险奠定了基础,并指明了减少传染性疾病传播的趋势和无线边缘网络的援助。