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Implementation of evolutionary algorithms in vehicular ad-hoc network for cluster optimization

机译:车辆自组织网络中用于集群优化的进化算法的实现

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摘要

Among many other sub-types, one sub-type of ad hoc network is Vehicular ad hoc Network (VANET). VANET can be further categorized in sub-domains like Vehicle to Infrastructure (V2I), Vehicle to Vehicle (V2V), Vehicle to pedestrian or other equipment (V2X) and Hybrid (V2V+V2I+V2X). V2V communication is the primary focus of this paper. Different methodologies are available in the literature for optimization of V2V communication. Clustering is one of them, in clustering vehicles, the same vicinity are grouped together for efficient communication. Different evolutionary algorithms for clustering already have been implemented to route information among nodes. Two evolutionary algorithms are applied for optimizing communication among the vehicles and the clustering problem in the VANETs. The bio inspired evolutionary algorithms are Comprehensive Learning Particle Swarm Optimization (CLPSO) and Multi-Objective Particle Swarm Optimization (MOPSO). After implementation, comparison for the mentioned algorithms is used to depict the results. The experimental results show that CLPSO is providing better results than MOPSO.
机译:在许多其他子类型中,自组织网络的一种子类型是车载自组织网络(VANET)。 VANET可以进一步细分为子域,例如,车辆到基础设施(V2I),车辆到车辆(V2V),车辆到行人或其他设备(V2X)和混合动力车(V2V + V2I + V2X)。 V2V通信是本文的重点。文献中提供了不同的方法来优化V2V通信。群集是其中之一,在群集车辆中,将同一附近分组在一起以进行有效的通信。已经实现了用于群集的不同进化算法以在节点之间路由信息。应用了两种进化算法来优化车辆之间的通信和VANET中的聚类问题。受生物启发的进化算法是综合学习粒子群优化(CLPSO)和多目标粒子群优化(MOPSO)。实施后,将使用上述算法的比较来描述结果。实验结果表明,CLPSO比MOPSO提供更好的结果。

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