改进的C-DRIVE:车辆环境下基于方向的聚类

N. Maslekar, J. Mouzna, H. Labiod, Manoj Devisetty, M. Pai
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引用次数: 31

摘要

VANETs中的效率应用侧重于通过管理交通流量和监测道路状况来提高道路资源的生产力。大多数此类应用的性能依赖于对周围车辆的有效密度估计。在各种方法中,聚类被证明是实现这一目标的有效概念。然而,由于高机动性,在车辆框架内实现稳定的集群是困难的。在这项工作中,我们提出了一种新的基于方向的聚类算法C-DRIVE簇头选举策略。该策略有助于获得更好的稳定性,从而准确地估计集群内的密度。仿真结果表明,通过新的簇头选举策略,通过在网络中选举较少的簇头,使C-DRIVE具有较好的稳定性。这支持以更少的开销获得更高的密度估计精度。
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Modified C-DRIVE: Clustering based on direction in vehicular environment
Efficiency applications in VANETs are focused on increasing the productivity of the road resources by managing the traffic flow and monitoring the road conditions. The performance of most such applications is dependent on an effective density estimation of the vehicles in the surroundings. Of the various methods, clustering demonstrates to be an effective concept to implement this. However due to high mobility a stable cluster, within a vehicular framework, is difficult to implement. In this work, we propose a new clusterhead election policy for direction based clustering algorithm C-DRIVE. This policy facilitates to attain better stability and thus accurate density estimation within the clusters. Simulation results show that the C-DRIVE is rendered stability through new clusterhead election policy by electing fewer clusterheads in the network. This supports for a better accuracy in density estimation with fewer overheads.
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