Performance Evaluation of Link Metrics in Vehicle Networks: A Study from the Cologne Case

Jun Zhang, Mengying Ren, H. Labiod
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引用次数: 12

Abstract

In vehicle ad hoc networks, the link duration is an important concept for clustering and dissemination. Many link metrics are proposed to predict it based on the vehicles' velocities and distance between vehicles. However, there is a lack of comparison of these metrics under the same framework. In this paper, we compare several common adopted link metrics, LLT (link life time), SLS (spatial locality similarity), and SF (similarity function), in the performance of link duration prediction, according to a real vehicular mobility trace of the city of Cologne, Germany. We find that there exists a large gap in between the predicted link duration order and real link duration order for the real traffic trace, and there is no winning link metric in all scenarios. Furthermore, as an example, we show that, by combining existing link metrics intelligently, it is possible to create a new link metric that predicts link duration better.
车辆网络中链路度量的性能评价:基于科隆案例的研究
在车载自组织网络中,链路持续时间是影响聚类和传播的重要因素。基于车辆的速度和车辆之间的距离,提出了许多链路度量来预测它。然而,缺乏在同一框架下对这些指标的比较。在本文中,我们比较了几种常用的链路度量,LLT(链路寿命),SLS(空间位置相似度)和SF(相似函数),在链接持续时间预测的性能,根据德国科隆市的真实车辆移动轨迹。我们发现,对于真实流量轨迹,预测的链路持续时间顺序与实际链路持续时间顺序之间存在很大差距,并且在所有场景中都不存在获胜的链路度量。此外,作为一个例子,我们表明,通过智能地组合现有的链接度量,可以创建一个更好地预测链接持续时间的新链接度量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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