揭示家庭/工作活动之外的流动模式:利用公交智能卡和土地使用数据的主题建模方法

IF 5.1 2区 工程技术 Q1 TRANSPORTATION Travel Behaviour and Society Pub Date : 2024-09-20 DOI:10.1016/j.tbs.2024.100905
Nima Aminpour, Saeid Saidi
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引用次数: 0

摘要

本文采用了一种名为潜狄利克特分配(Latent Dirichlet Allocation,LDA)的概率主题建模算法,以无监督的方式从智能卡交通数据中揭示的活动属性推断出行目的。大多数文献都集中于寻找家庭和工作活动的模式,而我们则进一步研究了与家庭和工作无关的活动,以发现与之相关的模式。活动的时间属性是从德黑兰地铁自动收费系统记录的行程信息中提取的。此外,还纳入了土地使用数据,以进一步增强非居家/工作活动的空间属性。除了土地使用数据外,我们还利用开始时间、持续时间和频率等各种活动属性来推断活动目的和模式。根据非通勤活动的时间和空间属性,我们确定了 14 种不同的非通勤活动模式,包括教育、娱乐、商业、健康和其他与服务相关的活动类型。通过比较所发现的活动模式,我们调查了 COVID-19 大流行之前和期间乘客的活动模式和行为变化。在娱乐活动方面,我们发现不仅娱乐活动的数量减少了,而且娱乐活动的持续时间也缩短了。在 COVID-19 期间,上午的教育活动模式也被淘汰,商业活动的数量也有所减少。所提出的模型证明了利用智能卡交通数据捕捉不同干扰情况下的出行行为变化的能力,而无需进行昂贵和耗时的人工调查,这对当局和决策者非常有用。
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Unveiling mobility patterns beyond home/work activities: A topic modeling approach using transit smart card and land-use data

In this paper, a probabilistic topic modeling algorithm called Latent Dirichlet Allocation (LDA) is implemented to infer trip purposes from activity attributes revealed from smart card transit data in an unsupervised manner. While most literature focused on finding patterns for home and work activities, we further investigated non-home and non-work-related activities to detect patterns associated with them. Temporal attributes of activities are extracted from trip information recorded by Tehran subway’s automatic fare collection system. In addition, land-use data is also incorporated to further enhance spatial attributes for non-home/work activities. Various activity attributes such as start time, duration, and frequency in addition to land-use data are used to infer the activity purposes and patterns. We identified 14 different patterns related to non-commuting activities on the basis of both their temporal and spatial attributes including educational, recreational, commercial, and health and other service-related activity types. We investigated passengers’ activity pattern and behavior changes before and during COVID-19 pandemic by comparing the discovered patterns. For recreational patterns it is revealed that not only has the number of recreational patterns dropped, but also the duration of recreational activities decreased. Morning patterns of educational activities have also been eliminated and number of commercial activities was decreased during COVID-19. The proposed model demonstrates the ability to capture travel behavior changes for different disruptions using smart card transit data without performing costly and time consuming manual surveys which can be useful for authorties and decision makers.

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来源期刊
CiteScore
9.80
自引率
7.70%
发文量
109
期刊介绍: Travel Behaviour and Society is an interdisciplinary journal publishing high-quality original papers which report leading edge research in theories, methodologies and applications concerning transportation issues and challenges which involve the social and spatial dimensions. In particular, it provides a discussion forum for major research in travel behaviour, transportation infrastructure, transportation and environmental issues, mobility and social sustainability, transportation geographic information systems (TGIS), transportation and quality of life, transportation data collection and analysis, etc.
期刊最新文献
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