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Spatial and Temporal Characterization of Travel Patterns in a Traffic Network Using Vehicle Trajectories

机译:利用车辆轨迹的交通网络中出行方式的时空表征

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This paper presents a trajectory clustering method to discover spatial and temporal travel patterns in a traffic network. The study focuses on identifying spatially distinct traffic flow groups using trajectory clustering and investigating temporal traffic patterns of each spatial group. The main contribution of this paper is the development of a systematic framework for clustering and classifying vehicle trajectory data, which does not require a pre-processing step known as map-matching and directly applies to trajectory data without requiring the information on the underlying road network. The framework consists of four steps: similarity measurement, trajectory clustering, generation of cluster representative subsequences, and trajectory classification. First, we propose the use of the Longest Common Subsequence (LCS) between two vehicle trajectories as their similarity measure, assuming that the extent to which vehicles' routes overlap indicates the level of closeness and relatedness as well as potential interactions between these vehicles. We then extend a density-based clustering algorithm, DBSCAN, to incorporate the LCS-based distance in our trajectory clustering problem. The output of the proposed clustering approach is a few spatially distinct traffic stream clusters, which together provide an informative and succinct representation of major network traffic streams. Next, we introduce the notion of cluster representative subsequence (CRS), which reflects dense road segments shared by trajectories belonging to a given traffic stream cluster, and present the procedure of generating a set of CRSs by merging the pairwise LCSs via hierarchical agglomerative clustering. The CRSs are then used in the trajectory classification step to measure the similarity between a new trajectory and a cluster. The proposed framework is demonstrated using actual vehicle trajectory data collected from New York City, USA. A simple experiment was performed to illustrate the use of the proposed spatial traffic stream clustering in application areas such as network-level traffic flow pattern analysis and travel time reliability analysis.
机译:本文提出一种轨迹聚类方法,以发现交通网络中的时空旅行模式。该研究着重于使用轨迹聚类来识别空间上不同的交通流组,并研究每个空间组的时间交通模式。本文的主要贡献是开发了一种用于对车辆轨迹数据进行聚类和分类的系统框架,该框架不需要进行称为地图匹配的预处理步骤,而是直接应用于轨迹数据而无需基础道路网络上的信息。该框架包括四个步骤:相似性测量,轨迹聚类,生成簇代表子序列和轨迹分类。首先,我们建议使用两条车辆轨迹之间的最长公共子序列(LCS)作为它们的相似性度量,假设车辆路线重叠的程度指示了这些车辆之间的亲密程度和相关性以及潜在的相互作用。然后,我们扩展基于密度的聚类算法DBSCAN,以将基于LCS的距离纳入我们的轨迹聚类问题。所提出的聚类方法的输出是几个空间上不同的流量流群集,它们一起提供了主要网络流量流的信息丰富且简洁的表示。接下来,我们介绍集群代表子序列(CRS)的概念,该概念反映了属于给定交通流集群的轨迹所共享的密集路段,并介绍了通过分层聚类聚类合并成对LCS来生成一组CRS的过程。然后,在轨迹分类步骤中使用CRS来测量新轨迹和聚类之间的相似性。使用从美国纽约市收集的实际车辆轨迹数据演示了拟议的框架。进行了一个简单的实验,以说明所提出的空间交通流聚类在诸如网络级交通流模式分析和旅行时间可靠性分析等应用领域中的使用。

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