The impact of COVID-19 on subway passenger flow in Chicago: A study of spatial variation of influencing factors

Xinan Zhou, Xiaoqian Lu, Yicheng Song, Hongtai Yang
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引用次数: 1

Abstract

At the beginning of 2020, with the rapid spread of COVID-19 around the world, the passenger flow of subway has suffered from a serious impact. Based on the subway passenger flow data in Chicago, this article analyzes the impact of COVID-19 on rail transit passenger flow. ArcGIS is used to visualize the spatial-temporal distribution of the passenger flow of different stations during different time periods. Based on the fluctuation characteristics of passenger flow before and after the outbreak of COVID-19, one of the deep learning methods, the LSTM (Long-Short Term Memory) neural network model, is constructed to predict the passenger flow of each station in the scenario of no virus. The decline of passenger flow is calculated for each station. Stepwise regression model is constructed to determine factors that explain the decline in passenger flow, and significant factors are obtained: the original passenger flow, number of houses and jobs within 800m buffer zone, number of bus stops within 800m buffer zone, whether the station is a transfer station, distance from the station to the city center, and the number of low-income people. The results of the study show that after the outbreak of COVID-19, the passenger flow of the subway in Chicago experience a “cliff-like” decline in the short term. The passenger flow in most areas dropped by more than 80%, and the passenger flow of some severely impacted stations dropped by more than 90%. Characteristics of the station and built environment factors of different stations influence the decline of passenger flow.
新冠肺炎疫情对芝加哥地铁客流的影响:影响因素的空间分异研究
2020年初,新冠肺炎疫情在全球迅速蔓延,地铁客流受到严重影响。本文以芝加哥地铁客流数据为基础,分析新冠肺炎疫情对轨道交通客流的影响。利用ArcGIS对不同时段不同车站客流的时空分布进行可视化。基于疫情前后客流波动特征,构建深度学习方法之一的LSTM(长短期记忆)神经网络模型,预测无病毒情景下各车站客流。计算每个站点的客流降幅。构建逐步回归模型,确定客流下降的影响因素,得到原有客流、800m缓冲区内的住房和工作数量、800m缓冲区内的公交站点数量、该站是否为中转站、该站到市中心的距离、低收入人群数量等显著性因素。研究结果表明,新冠肺炎疫情爆发后,芝加哥地铁客流量在短期内出现了“断崖式”下降。大部分地区客流降幅超过80%,部分受影响严重的站点客流降幅超过90%。车站特点和不同车站的建成环境因素影响客流的下降。
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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