基于多目标遗传算法的VANET自适应加权聚类协议

Mohamed Hadded, Rachid Zagrouba, A. Laouiti, P. Mühlethaler, L. Saïdane
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引用次数: 64

摘要

车辆自组织网络(VANETs)是近年来智能交通系统(its)发展的一个重要组成部分。由于车辆的持续和快速运动,vanet具有高度动态和分割的网络拓扑。目前,在介质访问控制(MAC)、路由和安全协议中,广泛采用聚类算法作为控制方案来降低VANET拓扑的动态特性。一个有效的聚类算法必须考虑到与节点移动相关的所有必要信息。本文提出了一种针对车辆网络的自适应加权聚类协议(AWCP),该协议考虑了公路ID、车辆方向、位置、速度和相邻车辆数量等因素,以增强网络拓扑的稳定性。然而,我们的AWCP的多个控制参数使得参数调优成为一个非平凡的问题。为了优化协议,我们定义了一个多目标问题,其输入是AWCP的参数,其目标是:提供稳定的集群结构,最大化数据传输速率,减少聚类开销。我们用非支配排序遗传算法版本2 (NSGA-II)解决了这个多目标问题。我们将其与其他多目标优化技术:多目标粒子群优化(MOPSO)和多目标差分进化(MODE)进行了性能评估和比较。实验结果表明,NSGA-II算法在空间、分布、非支配解的比例和逆代距等性能指标上均优于MOPSO算法和MODE算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A multi-objective genetic algorithm-based adaptive weighted clustering protocol in VANET
Vehicular Ad hoc NETworks (VANETs) are a major component recently used in the development of Intelligent Transportation Systems (ITSs). VANETs have a highly dynamic and portioned network topology due to the constant and rapid movement of vehicles. Currently, clustering algorithms are widely used as the control schemes to make VANET topology less dynamic for Medium Access Control (MAC), routing and security protocols. An efficient clustering algorithm must take into account all the necessary information related to node mobility. In this paper, we propose an Adaptive Weighted Clustering Protocol (AWCP), specially designed for vehicular networks, which takes the highway ID, direction of vehicles, position, speed and the number of neighboring vehicles into account in order to enhance the stability of the network topology. However, the multiple control parameters of our AWCP, make parameter tuning a nontrivial problem. In order to optimize the protocol, we define a multi-objective problem whose inputs are the AWCP's parameters and whose objectives are: providing stable cluster structures, maximizing data delivery rate, and reducing the clustering overhead. We address this multi-objective problem with the Non-dominated Sorted Genetic Algorithm version 2 (NSGA-II). We evaluate and compare its performance with other multi-objective optimization techniques: Multi-objective Particle Swarm Optimization (MOPSO) and Multi-objective Differential Evolution (MODE). The experiments reveal that NSGA-II improves the results of MOPSO and MODE in terms of spacing, spread, ratio of non-dominated solutions, and inverse generational distance, which are the performance metrics used for comparison.
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