利用台北捷运智能卡数据研究 COVID-19 影响下的时空移动模式和捷运使用率变化。

IF 2.3 Q2 TRANSPORTATION SCIENCE & TECHNOLOGY Public Transport Pub Date : 2022-01-01 Epub Date: 2021-08-16 DOI:10.1007/s12469-021-00280-2
Christian Martin Mützel, Joachim Scheiner
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引用次数: 0

摘要

现代公共交通系统通常采用与智能卡相结合的自动收费系统(AFC)。这些系统被动地收集大量详细的时空出行数据,从而为公共交通规划和管理提供了新的可能性,也为城市规划者提供了新的见解。我们利用台湾台北市的智能卡出行数据,对一周内地铁站与站之间的时空出行模式进行了深入分析。根据简单的线性回归和折线图,确定了一周中具有相似时间客流模式的日子和时间。我们根据实际的地理位置将客流量的大小可视化。通过比较 2019 年 1 月至 3 月和 2020 年 1 月至 3 月的客流量,我们研究了在冠状病毒大流行(COVID-19)的影响下地铁出行量的变化,该病毒大流行导致 2020 年全球进入紧急状态。我们的研究结果表明,在 COVID-19 的影响下,地铁的使用率并没有均匀地下降,而是在空间和时间上都有很大的差异。
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Investigating spatio-temporal mobility patterns and changes in metro usage under the impact of COVID-19 using Taipei Metro smart card data.

Modern public transit systems are often run with automated fare collection (AFC) systems in combination with smart cards. These systems passively collect massive amounts of detailed spatio-temporal trip data, thus opening up new possibilities for public transit planning and management as well as providing new insights for urban planners. We use smart card trip data from Taipei, Taiwan, to perform an in-depth analysis of spatio-temporal station-to-station metro trip patterns for a whole week divided into several time slices. Based on simple linear regression and line graphs, days of the week and times of the day with similar temporal passenger flow patterns are identified. We visualize magnitudes of passenger flow based on actual geography. By comparing flows for January to March 2019 and for January to March 2020, we look at changes in metro trips under the impact of the coronavirus pandemic (COVID-19) that caused a state of emergency around the globe in 2020. Our results show that metro usage under the impact of COVID-19 has not declined uniformly, but instead is both spatially and temporally highly heterogeneous.

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来源期刊
Public Transport
Public Transport TRANSPORTATION SCIENCE & TECHNOLOGY-
CiteScore
5.40
自引率
15.40%
发文量
19
期刊介绍: The scope and purpose of the journal includes, but is not limited to, any type of research in the area of Public Transport: Planning and Operations. As its core it serves the primary mission of advancing the state of the art and the state of the practice in computer-aided systems and scheduling in public transport. The journal considers any type of subjects in this area especially with a focus to planning and scheduling, the common ground is the use of computer-aided methods and operations research techniques to improve information management, network and route planning, vehicle and crew scheduling and rostering, vehicle monitoring and management, and practical experience with scheduling and public transport planning methods. Besides theoretical papers, the journal also publishes case studies and applications. Public Transport addresses transport operators, consulting firms and academic institutions involved in development, utilization or research of computer-aided planning and scheduling in public transport.Officially cited as: Public Transp
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