Analysis of the dynamic relationship between traffic accident events and road network topology based on connectivity and graph analytics offers a new approach to identifying, ranking and profiling traffic accident high risk-locations at different levels of space and time granularities. Previous studies on traffic accident hot spots have mostly adopted spatial statistics and Geographic Information Systems (GIS) where spatial point patterns are discovered based only on spatial dependence with no recognition of the temporal dependence of the events. A limitation arises from the fact that the results are either under or over-estimated because of the temporal aggregation of the events to an absolute time point. Furthermore, the existing methods apart from the Network Kernel Density Estimation (NETKDE), consider traffic accident events as events randomly on a 2-D geographic space. However, traffic accident events are network constrained events that happens majorly on the road network space. Therefore, in this paper, we adopt the connectivity of graph on a network space approach that identifies accident high risk-locations based on space-time-varying connectivity between traffic accident events and the road network geometry. A simple but extensible traffic accident space time-varying graph (STVG) model is developed and implemented for this study. Traffic accident high risk-locations are identified and ranked in space and time using time-dependent degree centrality and PageRank centrality graph metrics respectively through time-incremental graph queries. This study offers urban traffic accident analysts with a new and efficient approach to identify, rank and profile accident-prone areas in space and time at different scales.
翻译:对交通事故事件与基于连通性和图表分析的公路网络地形学之间的动态关系进行分析后发现,对交通事故事件与基于连通性和图表分析的公路网络地形学进行了动态关系分析,这提供了一种新的方法,用以确定、分级和定性不同空间和时间颗粒的交通事故高风险地点,而以前对交通事故热点的研究大多采用空间统计和地理信息系统(GIS),这些空间点模式仅以空间依赖为基础,而没有认识到事件的时间依赖性。由于事故事件暂时集中在绝对时间点上,结果要么处于低位或过高估计之中。此外,除了网络Cernel Density Estimation(NETKDE)之外,现有的方法将交通事故事件视为2D地理空间上随机发生的事件。然而,交通事故事故事件事件是主要发生在公路网络空间空间上的网络受限事件。因此,在本文件中,我们采用了网络空间空间方法图的连通性图,根据交通事故事故事故事件与公路网络地理测量之间的时间偏差连接性连接性,在轨迹上简单但可扩展的交通事故时空难时间-时间分布图和地标定中心点的轨道上,分别采用该模型和地标和地标和地标的轨道定位。