Decentralized clustering in VANET using adaptive resonance theory

Z. Merhi, O. Tahan, Samih Abdul-Nabi, A. Haj-Ali, M. Bayoumi
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引用次数: 4

Abstract

Nowadays VANETs are becoming a dominating technology in automotive industries where vehicles communicate with each other to deliver safety messages or any type of information to other vehicles. However, the increasing numbers of vehicles on the roads poses a challenge on designing an efficient communication protocol for VANETs. The scalability issue in VANETs has a deteriorating effect on latency and on the stability of the network. Clustering is one technique used for solving this issue. In this work, we propose a clustering technique that creates mini clusters that are in the same communication range of the vehicles with the help of Adaptive resonance theory (ART). These mini clusters are created based on speed where it categorizes the vehicle in one of three levels: high, medium or low speeds. ART is an unsupervised neural network model that classifies inputs based on the degree of similarities of the input. By carefully tuning ART, three clusters are always obtained corresponding to the above speed classifications. The proposed work was simulated and compared against traditional clustering methods where our work presented a 50% advantage over these techniques.
基于自适应共振理论的VANET分散聚类
如今,vanet正在成为汽车行业的主导技术,车辆相互通信以向其他车辆传递安全信息或任何类型的信息。然而,道路上车辆数量的增加对设计有效的vanet通信协议提出了挑战。VANETs中的可扩展性问题对延迟和网络稳定性的影响越来越大。聚类是用于解决此问题的一种技术。在这项工作中,我们提出了一种聚类技术,该技术可以在自适应共振理论(ART)的帮助下创建与车辆处于相同通信范围内的迷你集群。这些迷你集群是根据速度创建的,它将车辆分为三个级别:高、中、低速。ART是一种基于输入相似度对输入进行分类的无监督神经网络模型。通过仔细调优ART,总能得到三个与上述速度分类相对应的簇。所提出的工作进行了模拟,并与传统的聚类方法进行了比较,其中我们的工作比这些技术具有50%的优势。
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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