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Successful Delivery in VANETs with Damaged Infrastructures Based on Double Cluster Head Selection

机译:基于双簇头选择的基础设施受损的VANET成功交付

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Disconnected communication is one of the results of infrastructure failure due to the direct impact of natural disasters. This paper proposes a solution to the failure of packet transmission in Vehicular ad-hoc networks (VANET) in disaster cases where vehicles encounter disconnected communication. Clustering is one of the most common routing protocols in VANET. Clustering protocols are proven to be highly effective in a scalable network. For stable cluster formation in VANET, some constraints such as vehicles velocity and vehicles separation distance must be considered while selecting the cluster head. The cluster head is the node responsible for data propagation to the infrastructure. This paper tackles the problem when the cluster head is unable to successfully transmit the packets to the infrastructure due to its failure in crisis scenario. A new clustering algorithm based on a weighted formula for cluster head selection is proposed. The weighted formula is based on three parameters: the trust, the distance, and the velocity. The protocol will ensure to have overlapping clusters with double cluster heads thus guaranteeing the successful packet delivery to the destination. The proposed protocol had been simulated using MATLAB to ensure that the packets are delivered to their destination in a reasonable delay.
机译:由于自然灾害的直接影响,通信中断是基础设施故障的结果之一。本文提出了一种解决方案,用于在车辆遇到通信中断的灾难情况下,车辆自组织网络(VANET)中的数据包传输失败。群集是VANET中最常见的路由协议之一。事实证明,群集协议在可扩展网络中非常有效。为了在VANET中稳定地形成群集,在选择群集头时必须考虑一些约束条件,例如车辆速度和车辆分离距离。群集头是负责将数据传播到基础结构的节点。本文解决了当群集头由于在危机情况下发生故障而无法将数据包成功传输到基础结构时的问题。提出了一种基于加权公式的簇头选择聚类算法。加权公式基于三个参数:信任度,距离和速度。该协议将确保具有双簇头的重叠簇,从而确保成功将数据包传递到目的地。所提出的协议已使用MATLAB进行了仿真,以确保将数据包以合理的延迟传递到目的地。

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