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Effects of Weather and Calendar Events on Mode-Choice Behaviors for Public Transportation

机译:天气和日历事件对公共交通模式选择行为的影响

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摘要

Understanding travel behavior decisions is a fundamental aim of transportation planning. However, data from surveys or travel diaries that were traditionally used for travel mode-choice modeling are costly and have certain inaccuracies and cover limited populations. Therefore, recently, smart card data collected from automated fare collection systems have gradually become more popular for travel behavior analysis and modeling, but relatively little attention has been paid to investigating the daily variability in travel behavior decisions using more than 1-year smart card data, apart for some descriptive studies. In this study, mode-choice behaviors in public transit were investigated in Seoul using 20-month smart card data to investigate the daily variability in the ratio of the number of subway passengers depending on origin and destination. For this aim, the effects of temporal features such as weather and calendar events as well as the route information and built environments of origin and destination stations were considered on a daily basis for different time periods. To overcome the limitation that the purpose of travel cannot be identified from smart card data, this study attempted to precisely estimate subway connections and extract travel records for commuting from regular commuters' cards. The models were trained using 1-year data and were validated using 8-month data, which verified that the selected factors explain the daily variability in mode-choice behaviors for public transportation.
机译:了解旅行行为决策是运输规划的根本目标。然而,传统上用于旅行模式选择建模的调查或旅行日记的数据成本高,并且具有一定的不准确性和涵盖有限的人口。因此,最近,从自动票价系列系统收集的智能卡数据逐渐变得更加流行,可以更受欢迎,可以更受欢迎,用于旅行行为分析和建模,但在使用超过1年的智能卡数据的情况下调查旅行行为决策的日常变异相对较少,除了一些描述性研究。在这项研究中,使用20个月的智能卡数据在首尔调查了公共交通中的模式 - 选择行为,以调查地铁乘客数量的日常变异,这取决于原点和目的地。为此目的,在不同的时间段的情况下,每天考虑日期特征如天气和日历事件等诸如天气和日历事件的效果以及原产地站的路由信息​​和内置环境。为了克服旅行目的无法从智能卡数据识别出来的限制,这项研究试图精确估计地铁连接和从常规通勤卡上提取的旅行记录。该模型使用1年数据培训,并使用8个月的数据进行了验证,验证了所选因素解释了公共交通模式选择行为的日常变异性。

著录项

  • 来源
    《Journal of Transportation Engineering》 |2020年第7期|04020056.1-04020056.11|共11页
  • 作者

    Kim Kyoungok;

  • 作者单位

    Seoul Natl Univ Sci & Technol SeoulTech Informat Technol Management Programme Int Fusion Sch 232 Gongreungno Seoul 01811 South Korea;

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  • 正文语种 eng
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