This paper proposes a graph-based approach to representing spatio-temporal trajectory data that allows an effective visualization and characterization of city-wide traffic dynamics. With the advance of sensor, mobile, and Internet of Things (IoT) technologies, vehicle and passenger trajectories are being increasingly collected on a massive scale and are becoming a critical source of insight into traffic pattern and traveller behaviour. To leverage such trajectory data to better understand traffic dynamics in a large-scale urban network, this study develops a trajectory-based network traffic analysis method that converts individual trajectory data into a sequence of graphs that evolve over time (known as dynamic graphs or time-evolving graphs) and analyses network-wide traffic patterns in terms of a compact and informative graph-representation of aggregated traffic flows. First, we partition the entire network into a set of cells based on the spatial distribution of data points in individual trajectories, where the cells represent spatial regions between which aggregated traffic flows can be measured. Next, dynamic flows of moving objects are represented as a time-evolving graph, where regions are graph vertices and flows between them are treated as weighted directed edges. Given a fixed set of vertices, edges can be inserted or removed at every time step depending on the presence of traffic flows between two regions at a given time window. Once a dynamic graph is built, we apply graph mining algorithms to detect change-points in time, which represent time points where the graph exhibits significant changes in its overall structure and, thus, correspond to change-points in city-wide mobility pattern throughout the day (e.g., global transition points between peak and off-peak periods).
翻译:本文提出一个基于图表的办法来代表时空轨迹数据, 以便有效地直观地描述和描述整个城市的交通动态。 随着Thing(IoT)技术的传感器、 移动和互联网的进步, 车辆和乘客轨迹正在日益大规模地收集, 并正在成为深入了解交通模式和旅行行为的关键来源。 为了利用这种轨迹数据来更好地了解大型城市网络中的交通动态, 本研究开发了一个基于轨迹的网络流量分析方法, 将单个轨迹数据转换成一系列随时间变化的图表( 称为动态图表或时间变化图) 。 随着Things( IoT)技术的传感器、 移动和互联网的传感器、 汽车和旅客轨迹的推进, 我们根据单个轨迹中的数据点的空间分布将整个网络分成一组细胞, 以空间区域为空间区域, 可以测量总流量变化之间的空间区域。 下一步, 移动物体的动态流动是时间动态的图表, 区域在一天的图表和时间变化中是显著的曲线和时间变化, 其间平流在每一个时平流区域之间, 被固定地平的移动 。