面向大规模车辆网络的近似空间查询

Lipeng Wan, Zhibo Wang, Zheng Lu, H. Qi, Wenjun Zhou, Qing Cao
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引用次数: 2

摘要

随着车对车通信技术的进步,未来的车辆将拥有一个通信通道,当两辆车靠近时,可以通过该通道发送和接收信息。这种启用技术使经过身份验证的用户能够通过多个跃点向感兴趣的车辆(例如位于某个地理区域内的车辆)发送查询,以实现各种应用程序目标。然而,一种幼稚的方法要求将查询淹没到一个区域中的每辆活动车辆,这将导致与区域大小和车辆密度成正比的总通信开销。在本文中,我们通过研究概率方法来研究车辆网络的空间查询问题,其中我们只尝试使用次线性开销在期望的置信区间内获得近似估计。我们认为这在空间查询结果可以近似或不精确时特别有用,这是许多潜在应用程序的情况。该方法已在真实世界车辆网络轨迹的快照上进行了测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards approximate spatial queries for large-scale vehicle networks
With advances in vehicle-to-vehicle communication, future vehicles will have access to a communication channel through which messages can be sent and received when two get close to each other. This enabling technology makes it possible for authenticated users to send queries to those vehicles of interest, such as those that are located within a geographic region, over multiple hops for various application goals. However, a naive method that requires flooding the queries to each active vehicle in a region will incur a total communication overhead that is proportional to the size of the area and the density of vehicles. In this paper, we study the problem of spatial queries for vehicle networks by investigating probabilistic methods, where we only try to obtain approximate estimates within desired confidence intervals using only sublinear overheads. We consider this to be particularly useful when spatial query results can be made approximate or not precise, as is the case with many potential applications. The proposed method has been tested on snapshots from real world vehicle network traces.
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