首页> 外文期刊>Journal of advanced transportation >Comparative Analysis of Travel Patterns from Cellular Network Data and an Urban Travel Demand Model
【24h】

Comparative Analysis of Travel Patterns from Cellular Network Data and an Urban Travel Demand Model

机译:从蜂窝网络数据和城市旅行需求模型的旅行模式的比较分析

获取原文
       

摘要

Data on travel patterns and travel demand are an important input to today’s traffic models used for traffic planning. Traditionally, travel demand is modelled using census data, travel surveys, and traffic counts. Problems arise from the fact that the sample sizes are rather limited and that they are expensive to collect and update the data. Cellular network data are a promising large-scale data source to obtain a better understanding of human mobility. To infer travel demand, we propose a method that starts by extracting trips from cellular network data. To find out which types of trips can be extracted, we use a small-scale cellular network dataset collected from 20 mobile phones together with GPS tracks collected on the same device. Using a large-scale dataset of cellular network data from a Swedish operator for the municipality of Norrk?ping, we compare the travel demand inferred from cellular network data to the municipality’s existing urban travel demand model as well as public transit tap-ins. The results for the small-scale dataset show that, with the proposed trip extraction methods, the recall (trip detection rate) is about 50% for short trips of 1-2?km, while it is 75–80% for trips of more than 5?km. Similarly, the recall also differs by a travel mode with more than 80% for public transit, 74% for car, but only 53% for bicycle and walking. After aggregating trips into an origin-destination matrix, the correlation is weak (R20.2) using the original zoning used in the travel demand model with 189 zones, while it is significant with R2=0.82 when aggregating to 24 zones. We find that the choice of the trip extraction method is crucial for the travel demand estimation as we find systematic differences in the resulting travel demand matrices using two different methods.
机译:关于旅行模式和旅行需求的数据是对今天的交通规范的重要输入。传统上,使用人口普查数据,旅行调查和交通计数建模旅行需求。问题出现了来自样本尺寸相当有限的事实,并且它们收集和更新数据昂贵。蜂窝网络数据是有希望的大规模数据源,以获得对人类移动性的更好理解。为了推断出旅行需求,我们提出了一种通过从蜂窝网络数据中提取跳闸来开始的方法。要找出可以提取哪些类型的旅行,我们使用从20个移动电话收集的小型蜂窝网络数据集与同一设备上收集的GPS轨道一起。使用来自瑞典运营商的蜂窝网络数据的大规模数据集,为NORRK的市,我们将从蜂窝网络数据推断的旅行需求与市政当局的现有城市旅行需求模型以及公共交通拖运机进行比较。小规模数据集的结果表明,随着拟议的旅行提取方法,召回(跳闸检测率)为1-2 km的短途旅行的大约50%,而更多的时间为75-80%超过5 km。同样,召回也与公共交通超过80%的旅行模式不同,汽车74%,但自行车和行走只有53%。在将跳过到原始目标矩阵之后,使用具有189个区域的旅行需求模型中使用的原始分区,相关性是弱(R2 <0.2),而在聚合到24个区域时,它与R2 = 0.82显着。我们发现旅行提取方法的选择对于旅行需求估算至关重要,因为我们发现使用两种不同方法所产生的旅行需求矩阵的系统差异。

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