用于分析 COVID-19 对公共交通流动性影响的无监督起点-终点流量估算

IF 6 1区 经济学 Q1 URBAN STUDIES
Lan Zhang, Kaijian Liu
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引用次数: 0

摘要

COVID-19 的爆发对公共交通服务造成了前所未有的破坏。因此,本文提出了一种分析 COVID-19 对公共交通流动性影响的方法。该方法包括(1) 一种新的无监督机器学习(UML)方法,利用解码器-编码器架构和基于流量属性的学习目标函数,从上下车数据中估算公共交通系统的起点-终点(OD)流量;(2) 一种时空分析方法,分析 COVID-19 之前和期间的 OD 流量变化,以揭示其在时间和空间上对流动性的影响。UML 方法的验证结果表明,该方法在利用登机-下机数据估算 OD 流量时,确定系数达到 0.836。验证成功后,建议的方法被用于分析 COVID-19 对纽约市地铁系统流动性的影响。实施结果表明:(1) COVID-19 每周新增病例数的增加加剧了对公共交通流动性的影响,但不如公共卫生干预措施那样强烈;(2) 流入和流出市中心的人群对 COVID-19 的影响更为敏感。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised origin-destination flow estimation for analyzing COVID-19 impact on public transport mobility

The outbreak of COVID-19 caused unprecedented disruptions to public transport services. As such, this paper proposes a methodology for analyzing COVID-19 impact on public transport mobility. The proposed methodology includes: (1) a new unsupervised machine learning (UML) method, which utilizes a decoder-encoder architecture and a flow property-based learning objective function, to estimate the origin-destination (OD) flows of public transport systems from boarding-alighting data; and (2) a temporal-spatial analysis method to analyze OD flow change before and during COVID-19 to unveil its impact on mobility across time and space. The validation of the UML method showed that it achieved a coefficient of determination of 0.836 when estimating OD flows using boarding-alighting data. Upon the successful validation, the proposed methodology was implemented to analyze the impact of COVID-19 on the mobility of the New York City subway system. The implementation results indicate that (1) the rise in the number of weekly new COVID-19 cases intensified the impact on the public transport mobility, but not as strongly as public health interventions; and (2) the inflows to and outflows from the center of the city were more sensitive to the impact of COVID-19.

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来源期刊
Cities
Cities URBAN STUDIES-
CiteScore
11.20
自引率
9.00%
发文量
517
期刊介绍: Cities offers a comprehensive range of articles on all aspects of urban policy. It provides an international and interdisciplinary platform for the exchange of ideas and information between urban planners and policy makers from national and local government, non-government organizations, academia and consultancy. The primary aims of the journal are to analyse and assess past and present urban development and management as a reflection of effective, ineffective and non-existent planning policies; and the promotion of the implementation of appropriate urban policies in both the developed and the developing world.
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