行人出行监测的进展:使用犹他州交通信号灯的行人按钮数据的时间模式和空间特征

IF 1.6 4区 工程技术 Q4 TRANSPORTATION Journal of Transport and Land Use Pub Date : 2021-12-17 DOI:10.5198/jtlu.2021.2112
Prasanna Humagain, P. Singleton
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引用次数: 0

摘要

在这项研究中,我们使用一种新的数据源来改进行人出行监测:一年内,从犹他州1500多个信号交叉口的存档交通信号控制器日志中获得的行人按钮按下量。本研究的目的是:(1)量化行人活动模式;(2) 根据这些时间模式创建因子组和扩展/调整因子;(3)探索模式与空间特征之间的关系。使用经验聚类,我们根据归一化的每小时/每周计数(每小时占每周总数的比例,或扩展因子的倒数)将信号分为五组,以及具有类似月度调整因子的三组。我们还使用多项logit模型来识别与不同时间模式相关的空间特征(土地利用、建筑环境、社会经济特征和气候区域)。例如,我们发现学校附近的信号灯更有可能出现双峰式的每日高峰时间,而在校外月份,行人活动较少。尽管取得了这些良好的结果,但我们每小时/工作日的模式与过去的研究相比差异较小,这突出了现有基础设施在捕捉各种活动模式方面的局限性。尽管如此,我们证明,在更广泛的行人交通监测计划中,带有按钮数据的信号是对现有永久计数器的有用补充。
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Advances in pedestrian travel monitoring: Temporal patterns and spatial characteristics using pedestrian push-button data from Utah traffic signals
In this study, we advanced pedestrian travel monitoring using a novel data source: pedestrian push-button presses obtained from archived traffic signal controller logs at more than 1,500 signalized intersections in Utah over one year. The purposes of this study were to: (1) quantify pedestrian activity patterns; (2) create factor groups and expansion/adjustment factors from these temporal patterns; and (3) explore relationships between patterns and spatial characteristics. Using empirical clustering, we classified signals into five groups, based on normalized hourly/weekly counts (each hour’s proportion of weekly totals, or the inverse of the expansion factors), and three clusters with similar monthly adjustment factors. We also used multinomial logit models to identify spatial characteristics (land use, built environment, socio-economic characteristics, and climatic regions) associated with different temporal patterns. For example, we found that signals near schools were much more likely to have bimodal daily peak hours and lower pedestrian activity during out-of-school months. Despite these good results, our hourly/weekday patterns differed less than in past research, highlighting the limits of existing infrastructure for capturing all kinds of activity patterns. Nevertheless, we demonstrated that signals with push-button data are a useful supplement to existing permanent counters within a broader pedestrian traffic monitoring program.
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来源期刊
CiteScore
3.40
自引率
5.30%
发文量
34
审稿时长
30 weeks
期刊介绍: The Journal of Transport and Land Usepublishes original interdisciplinary papers on the interaction of transport and land use. Domains include: engineering, planning, modeling, behavior, economics, geography, regional science, sociology, architecture and design, network science, and complex systems. Papers reporting innovative methodologies, original data, and new empirical findings are especially encouraged.
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