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首页> 外文期刊>Journal of circuits, systems and computers >Middle-Order Vehicle-Based Clustering Model for Reducing Packet Loss in Vehicular Ad-hoc Networks
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Middle-Order Vehicle-Based Clustering Model for Reducing Packet Loss in Vehicular Ad-hoc Networks

机译:基于中序的基于车辆的聚类模型,用于降低车辆ad-hoc网络中的数据包丢失

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摘要

Vehicular Ad-hoc NETworks (VANETs) are typically termed as a wireless ad-hoc network that contains extreme node mobility and also the network carries a great significance in various traffic-oriented commercial applications and safety services. Due to its high mobility, routing in VANET has been a challenging work and also proving a higher rate of packet delivery ratio with reduced packet loss has been more important to be considered in route formations. With that note, this paper contributes to developing a clustering model called Middle-Order Vehicle-based Clustering (MOVC) model for managing the frequent topological change and high vehicle mobility, and efficiently handling the typical road traffic scenario. Moreover, the algorithm is intended to maintain the cluster to be constant for managing the vehicles in effective ways and also to provide uninterrupted communication between the vehicles. An algorithm for Effective Cluster Head Election (ECHE) is also derived in this paper for proficiently handling the frequency variation on the highways. Further, the model is simulated and evaluated on the basis of various metrics of VANET routing, specifically packet loss, packet delivery ratio, network lifetime and throughput. The results show that the proposed mechanism outperforms the results of existing models.
机译:车辆ad-hoc网络(VANET)通常被称为包含极端节点移动性的无线ad-hoc网络,并且网络在各种流量导向的商业应用和安全服务中也具有重要意义。由于其高迁移率,Vanet的路由已经有挑战性的工作,并且在路线形成中考虑了众所周知,在减少的分组损失中,证明了较高的分组输送比率。通过该注意,本文有助于开发一种称为中等基于车辆的聚类(MOVC)模型的聚类模型,用于管理频繁的拓扑变化和高车辆移动性,并有效处理典型的道路交通方案。此外,该算法旨在将集群保持恒定,以便以有效的方式管理车辆,并且还提供车辆之间的不间断通信。本文还得出了一种用于有效簇头选级(回电)的算法,以熟练处理高速公路上的频率变化。此外,基于VANET路由,特别是丢包,分组传递比,网络生命周期和吞吐量的各种度量来模拟和评估模型。结果表明,该机制优于现有模型的结果。

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