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MobCovid:基于时间序列预测的城市热点人群确诊病例动态

MobCovid: Confirmed Cases Dynamics Driven Time Series Prediction of Crowd in Urban Hotspot.

出版信息

IEEE Trans Neural Netw Learn Syst. 2024 Oct;35(10):13397-13410. doi: 10.1109/TNNLS.2023.3268291. Epub 2024 Oct 7.

Abstract

Monitoring the crowd in urban hot spot has been an important research topic in the field of urban management and has high social impact. It can allow more flexible allocation of public resources such as public transportation schedule adjustment and arrangement of police force. After 2020, because of the epidemic of COVID-19 virus, the public mobility pattern is deeply affected by the situation of epidemic as the physical close contact is the dominant way of infection. In this study, we propose a confirmed case-driven time-series prediction of crowd in urban hot spot named MobCovid. The model is a deviation of Informer, a popular time-serial prediction model proposed in 2021. The model takes both the number of nighttime staying people in downtown and confirmed cases of COVID-19 as input and predicts both the targets. In the current period of COVID, many areas and countries have relaxed the lockdown measures on public mobility. The outdoor travel of public is based on individual decision. Report of large amount of confirmed cases would restrict the public visitation of crowded downtown. But, still, government would publish some policies to try to intervene in the public mobility and control the spread of virus. For example, in Japan, there are no compulsory measures to force people to stay at home, but measures to persuade people to stay away from downtown area. Therefore, we also merge the encoding of policies on measures of mobility restriction made by government in the model to improve the precision. We use historical data of nighttime staying people in crowded downtown and confirmed cases of Tokyo and Osaka area as study case. Multiple times of comparison with other baselines including the original Informer model prove the effectiveness of our proposed method. We believe our work can make contribution to the current knowledge on forecasting the number of crowd in urban downtown during the Covid epidemic.

摘要

监测城市热点地区的人群一直是城市管理领域的一个重要研究课题,具有很高的社会影响。它可以允许更灵活地分配公共资源,例如公共交通时刻表的调整和警力的安排。2020 年之后,由于 COVID-19 病毒的流行,公众的出行模式受到疫情的深刻影响,因为身体近距离接触是主要的感染方式。在这项研究中,我们提出了一种基于确诊病例的城市热点人群时间序列预测模型,称为 MobCovid。该模型是 2021 年提出的流行时间序列预测模型 Informer 的一个变体。该模型同时将市中心夜间停留人数和 COVID-19 的确诊病例作为输入,并预测两个目标。在当前 COVID 时期,许多地区和国家已经放宽了对公共交通的封锁措施。公众的户外出行是基于个人决策的。大量确诊病例的报告将限制公众对拥挤市中心的访问。但是,政府仍会发布一些政策,试图干预公众的流动性并控制病毒的传播。例如,在日本,没有强制要求人们呆在家里的措施,但有措施说服人们远离市中心。因此,我们还在模型中合并了政府对流动性限制措施的编码,以提高精度。我们使用东京和大阪地区市中心夜间停留人数和确诊病例的历史数据作为研究案例。与包括原始 Informer 模型在内的其他基线进行多次比较证明了我们提出的方法的有效性。我们相信我们的工作可以为当前关于预测 COVID 期间城市市中心人群数量的知识做出贡献。

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