论文标题

网络约束点数据的长度L功能

Length L-function for Network-Constrained Point Data

论文作者

Fang, Zidong, Song, Ci, Shu, Hua, Chen, Jie, Liu, Tianyu, Wang, Xi, Chen, Xiao, Pei, Tao

论文摘要

网络约束点被称为限于道路网络的点,例如出租车上升和下车位置。网络约束点的重要模式称为聚集。例如,接送点的聚集可能表明特定地区的出租车需求很高。尽管已经提出了使用最短路径网络距离的网络k函数来检测点聚集,但其统计单元仍然基于半径。尤其是R邻域的网络长度不一致,这是因为道路网络的复杂配置会导致网络中不公平​​的计数和识别错误(例如,位于交叉路口的R邻域的长度长于直路上的时间更长,这可能包括更多点)。在这项研究中,我们得出了网络约束点的长度L函数,以通过将新型邻居设计为统计单元来识别聚集。整个网络的总长度是一致的。与网络k函数相比,我们的方法可以检测到真实的生命聚合量表,确定较高网络密度的聚合,并确定网络k函数无法的聚合。我们使用出租车旅行验证了我们的方法,在北京的中冈地区收集位置数据,分析了工作日和周末之间最大汇总的差异,以了解早晨和晚上峰值的出租车需求。

Network constrained points are referred to as points restricted to road networks, such as taxi pick up and drop off locations. A significant pattern of network constrained points is referred to as an aggregation; e.g., the aggregation of pick up points may indicate a high taxi demand in a particular area. Although the network K function using the shortest path network distance has been proposed to detect point aggregation, its statistical unit is still radius based. R neighborhood, in particular, has inconsistent network length owing to the complex configuration of road networks which cause unfair counts and identification errors in networks (e.g., the length of the r neighborhood located at an intersection is longer than that on straight roads, which may include more points). In this study, we derived the length L function for network constrained points to identify the aggregation by designing a novel neighborhood as the statistical unit; the total length of this is consistent throughout the network. Compared to the network K function, our method can detect a true to life aggregation scale, identify the aggregation with higher network density, as well as identify the aggregations that the network K function cannot. We validated our method using taxi trips pick up location data within Zhongguancun Area in Beijing, analyzing differences in maximal aggregation between workdays and weekends to understand taxi demand in the morning and evening peak.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源