Analyzing Spatiotemporal Congestion Pattern on Urban Roads Based on Taxi GPS Data

Kaisheng Zhang, D. Sun, S. Shen, Yi Zhu
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引用次数: 59

Abstract

With the development of in-vehicle data collection devices, GPS trajectory has become a priority source to identify traffic congestion and understand the operational states of road network in recent years. This study aims to investigate the relationship between traffic congestion and built environment, including traffic related factors and land use. Fuzzy C-means clustering was used to conduct an exhaustive study on 24-hour congestion pattern of road segments in urban area, so that the spatial autoregressive moving average model (SARMA) was introduced to analyze the output from the clustering analysis to establish the relationship between built environment and the 24-hour congestion pattern. The clustering result classified the road segments into four congestion levels, while the regression explained 12 traffic-related factors and land use factors’ impact on road congestion pattern. The continuous congestion was found to mainly occur in the city center, and the factors, such as road type, bus station in the vicinity, ramp nearby, commercial land use and so on have large impact on congestion formation. The Fuzzy C-means clustering was proposed to be combined with quantitative spatial regression, and the overall evaluation process will assist to assess the spatial-temporal levels of service of traffic from the congestion perspective.
基于出租车GPS数据的城市道路拥堵时空格局分析
近年来,随着车载数据采集设备的发展,GPS轨迹已成为识别交通拥堵和了解路网运行状态的优先来源。本研究旨在探讨交通拥堵与建筑环境的关系,包括交通相关因素和土地利用。采用模糊c均值聚类方法对城区道路段的24小时拥堵模式进行了详尽的研究,并引入空间自回归移动平均模型(SARMA)对聚类分析结果进行分析,建立了建成环境与24小时拥堵模式的关系。聚类结果将道路分段划分为4个拥堵等级,回归解释了12个交通相关因素和土地利用因素对道路拥堵格局的影响。发现持续拥堵主要发生在城市中心,道路类型、附近公交车站、匝道附近、商业用地等因素对拥堵形成影响较大。提出了模糊c均值聚类与定量空间回归相结合的方法,综合评价过程有助于从拥堵角度评价交通服务的时空水平。
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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