首页> 外文期刊>ISPRS International Journal of Geo-Information >An Agent-based Model Simulation of Human Mobility Based on Mobile Phone Data: How Commuting Relates to Congestion
【24h】

An Agent-based Model Simulation of Human Mobility Based on Mobile Phone Data: How Commuting Relates to Congestion

机译:基于Agent的基于手机数据的人员出行模型仿真:通勤与交通拥堵的关系

获取原文
           

摘要

The commute of residents in a big city often brings tidal traffic pressure or congestions. Understanding the causes behind this phenomenon is of great significance for urban space optimization. Various spatial big data make the fine description of urban residents’ travel behaviors possible, and bring new approaches to related studies. The present study focuses on two aspects: one is to obtain relatively accurate features of commuting behaviors by using mobile phone data, and the other is to simulate commuting behaviors of residents through the agent-based model and inducing backward the causes of congestion. Taking the Baishazhou area of Wuhan, a local area of a mega city in China, as a case study, we simulated the travel behaviors of commuters: the spatial context of the model is set up using the existing urban road network and by dividing the area into space units. Then, using the mobile phone call detail records of a month, statistics of residents’ travel during the four time slots in working day mornings are acquired and then used to generate the Origin-Destination matrix of travels at different time slots, and the data are imported into the model for simulation. Under the preset rules of congestion, the agent-based model can effectively simulate the traffic conditions of each traffic intersection, and can induce backward the causes of traffic congestion using the simulation results and the Origin-Destination matrix. Finally, the model is used for the evaluation of road network optimization, which shows evident effects of the optimizing measures adopted in relieving congestion, and thus also proves the value of this method in urban studies.
机译:大城市居民的通勤常常带来潮汐交通压力或交通拥堵。理解这种现象背后的原因对于优化城市空间具有重要意义。各种空间大数据使对城市居民出行行为的精细描述成为可能,并为相关研究带来了新的方法。本研究着眼于两个方面:一是利用手机数据获得相对准确的通勤行为特征,二是通过基于智能体的模型模拟居民的通勤行为,并向后推导交通拥堵的原因。以中国大城市武汉市的白沙洲地区为例,我们模拟了通勤者的出行行为:该模型的空间背景是使用现有的城市道路网络并通过划分区域来建立的成空间单位。然后,使用一个月的手机通话详细记录,获取工作日早晨四个时段居民的出行统计,然后用于生成不同时段出行的始发地-目的地矩阵,数据分别为导入到模型中进行仿真。在预设的拥塞规则下,基于代理的模型可以有效地模拟每个交通路口的交通状况,并可以使用仿真结果和“原点-目的地”矩阵向后推导交通拥堵的原因。最后,将该模型用于路网优化评价,显示了缓解拥堵的优化措施的明显效果,从而证明了该方法在城市研究中的价值。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号