利用智能模糊秃鹰优化技术最大化 VANET 的簇头选择性能

IF 5.8 2区 计算机科学 Q1 TELECOMMUNICATIONS Vehicular Communications Pub Date : 2024-02-01 DOI:10.1016/j.vehcom.2023.100660
Maria Christina Blessy A , Brindha S
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引用次数: 0

摘要

车载无线网络(Vehicular Ad-hoc Network,VANET)是一种无线网络,它允许车辆和路边装置之间进行通信,以开发先进的智能交通系统。VANET 的成功取决于车辆间无线通信的稳定性,但由于车辆速度快、拓扑结构变化快、通信链路不稳定,要实现这一点非常困难。此外,VANET 中车辆的移动性导致的网络不稳定性也降低了网络的性能。VANET 中的聚类是组织网络的关键技术,也是路由协议的基础。聚类算法是专为 VANET 高效运行而设计的,在做出聚类决策之前,必须将几个阶段整合到整个过程中。因此,本文提出了一种新颖的智能模糊白头鹰(IFBE)优化方法,通过优化簇头选择(CHS)过程来提高 VANET 的性能。实验结果证明,IFBE 方法在能耗、端到端延迟和数据包交付率方面优于其他现有机制。所提出的机制利用智能模糊系统优化集群选择过程。模糊系统使用一组规则和成员函数来评估候选节点是否适合担任簇头。秃鹰搜索(BES)优化元启发式算法用于找到模糊系统成员函数的最佳值。使用 MATLAB 仿真器对所提出的机制进行了评估。最后,实验结果表明,IFBE 方法实现了 13.58 ms 和 15.5 J 的最低延迟和能耗,以及 94.15% 和 97.65% 的较高聚类效率和数据包交付率,这表明它的性能优于其他现有方法。
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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Maximizing VANET performance in cluster head selection using Intelligent Fuzzy Bald Eagle optimization

Vehicular Ad-hoc Network (VANET) is a type of wireless network that allows communication among vehicles and roadside units to develop advanced intelligent transportation systems. The success of VANETs depends on the stability of wireless communication, among vehicles, which is challenging to achieve due to high vehicle speed, rapidly changing topology, and unstable communication links. Moreover, the instability of the network caused by the mobile nature of vehicles in VANET reduces the performance of the network. Clustering in VANETs is a crucial technique that organizes the network and forms the basis of the routing protocol. Clustering algorithms are designed for VANETs to work efficiently and require several phases that must be integrated into the process before a clustering decision can be made. Therefore, this paper presents a novel Intelligent Fuzzy Bald Eagle (IFBE) optimization to enhance the performance of VANETs by optimizing the cluster head selection (CHS) process. The experimental results prove that the IFBE approach outperforms other existing mechanisms in terms of energy consumption, end-to-end delay, and packet delivery ratio. The proposed mechanism utilizes an intelligent fuzzy system to optimize the CHS process. The fuzzy system uses a set of rules and membership functions to evaluate the candidate nodes' suitability for being cluster heads. The Bald Eagle Search (BES) optimization meta-heuristic algorithm is used to find the optimal values for the fuzzy system's membership functions. The proposed mechanism was evaluated using the MATLAB simulator. Finally, the experimental result proved that the IFBE approach achieved minimum delay and energy consumption of 13.58 ms, and 15.5 J, and higher clustering efficiency and packet delivery rate of 94.15% and 97.65% respectively, which show that it performs better than other existing approaches.

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来源期刊
Vehicular Communications
Vehicular Communications Engineering-Electrical and Electronic Engineering
CiteScore
12.70
自引率
10.40%
发文量
88
审稿时长
62 days
期刊介绍: Vehicular communications is a growing area of communications between vehicles and including roadside communication infrastructure. Advances in wireless communications are making possible sharing of information through real time communications between vehicles and infrastructure. This has led to applications to increase safety of vehicles and communication between passengers and the Internet. Standardization efforts on vehicular communication are also underway to make vehicular transportation safer, greener and easier. The aim of the journal is to publish high quality peer–reviewed papers in the area of vehicular communications. The scope encompasses all types of communications involving vehicles, including vehicle–to–vehicle and vehicle–to–infrastructure. The scope includes (but not limited to) the following topics related to vehicular communications: Vehicle to vehicle and vehicle to infrastructure communications Channel modelling, modulating and coding Congestion Control and scalability issues Protocol design, testing and verification Routing in vehicular networks Security issues and countermeasures Deployment and field testing Reducing energy consumption and enhancing safety of vehicles Wireless in–car networks Data collection and dissemination methods Mobility and handover issues Safety and driver assistance applications UAV Underwater communications Autonomous cooperative driving Social networks Internet of vehicles Standardization of protocols.
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