Hu Songhua, Xiong Chenfeng, Yang Mofeng, Younes Hannah, Luo Weiyu, Zhang Lei
Maryland Transportation Institute (MTI), Department of Civil and Environmental Engineering, University of Maryland, College Park, MD 20742, United States.
Shock Trauma and Anesthesiology Research (STAR) Center, School of Medicine, University of Maryland, Baltimore, MD 21201, United States.
Transp Res Part C Emerg Technol. 2021 Mar;124:102955. doi: 10.1016/j.trc.2020.102955. Epub 2021 Jan 9.
During the unprecedented coronavirus disease 2019 (COVID-19) challenge, non-pharmaceutical interventions became a widely adopted strategy to limit physical movements and interactions to mitigate virus transmissions. For situational awareness and decision-support, quickly available yet accurate big-data analytics about human mobility and social distancing is invaluable to agencies and decision-makers. This paper presents a big-data-driven analytical framework that ingests terabytes of data on a daily basis and quantitatively assesses the human mobility trend during COVID-19. Using mobile device location data of over 150 million monthly active samples in the United States (U.S.), the study successfully measures human mobility with three main metrics at the county level: daily average number of trips per person; daily average person-miles traveled; and daily percentage of residents staying home. A set of generalized additive mixed models is employed to disentangle the policy effect on human mobility from other confounding effects including virus effect, socio-demographic effect, weather effect, industry effect, and spatiotemporal autocorrelation. Results reveal the policy plays a limited, time-decreasing, and region-specific effect on human movement. The stay-at-home orders only contribute to a 3.5%-7.9% decrease in human mobility, while the reopening guidelines lead to a 1.6%-5.2% mobility increase. Results also indicate a reasonable spatial heterogeneity among the U.S. counties, wherein the number of confirmed COVID-19 cases, income levels, industry structure, age and racial distribution play important roles. The data informatics generated by the framework are made available to the public for a timely understanding of mobility trends and policy effects, as well as for time-sensitive decision support to further contain the spread of the virus.
在前所未有的2019年冠状病毒病(COVID-19)挑战期间,非药物干预措施成为一种广泛采用的策略,用于限制身体移动和互动,以减轻病毒传播。对于态势感知和决策支持而言,关于人类流动性和社交距离的快速可得且准确的大数据分析,对机构和决策者来说非常宝贵。本文提出了一个大数据驱动的分析框架,该框架每天摄取数TB的数据,并定量评估COVID-19期间的人类流动性趋势。利用美国每月超过1.5亿个活跃样本的移动设备位置数据,该研究成功地在县一级用三个主要指标衡量了人类流动性:每人每日平均出行次数;每日人均出行英里数;以及每日居家居民的百分比。采用一组广义相加混合模型,将政策对人类流动性的影响与包括病毒影响、社会人口统计学影响、天气影响、行业影响和时空自相关在内的其他混杂影响区分开来。结果表明,政策对人类移动的影响有限、呈时间递减且具有区域特异性。居家令仅使人类流动性降低了3.5%-7.9%,而重新开放指南则使流动性增加了1.6%-5.2%。结果还表明美国各县之间存在合理的空间异质性,其中COVID-19确诊病例数、收入水平、产业结构、年龄和种族分布起着重要作用。该框架生成的数据信息可供公众使用,以便及时了解流动性趋势和政策效果,以及为时间敏感的决策提供支持,以进一步遏制病毒传播。