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Performance Evaluation of OLSR Using Swarm Intelligence and Hybrid Particle Swarm Optimization Using Gravitational Search Algorithm

机译:基于群体智能的OLSR性能评价和引力搜索算法的混合粒子群优化。

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The aim of this research is to evaluate the performance of OLSR using swarm intelligence and HPSO with Gravitational search algorithm to lower the jitter time, data drop and end to end delay and improve the network throughput. Simulation was carried out for multimedia traffic and video streamed network traffic using OPNET Simulator. Routing is exchanging of information from one host to another in a network. Routing forwards packets to destination using an efficient path. Path efficiency is measured through metrics like hop number, traffic and security. Each host node acts as a specialized router in Ad-hoc networks. A table driven proactive routing protocol Optimized Link State Protocol (OLSR) has available topology information and routes. OLSR's efficiency depends on Multipoint relay selection. Various studies were conducted to decrease control traffic overheads through modification of existing OLSR routing protocol and traffic shaping based on packet priority. This study proposes a modification of OLSR using swarm intelligence, Hybrid Particle Swarm Optimization (HPSO) using Gravitational Search Algorithm (GSA) and evaluation of performance of jitter, end to end delay, data drop and throughput. Simulation was carried out to investigate the proposed method for the network's multimedia traffic.
机译:这项研究的目的是使用群体智能和具有引力搜索算法的HPSO评估OLSR的性能,以减少抖动时间,数据丢失和端到端延迟,并提高网络吞吐量。使用OPNET Simulator对多媒体流量和视频流网络流量进行了仿真。路由是将信息从网络中的一台主机交换到另一台主机。路由使用有效路径将数据包转发到目标。路径效率是通过跳数,流量和安全性等指标来衡量的。每个主机节点都充当Ad-hoc网络中的专用路由器。表驱动的主动路由协议“优化的链路状态协议”(OLSR)具有可用的拓扑信息和路由。 OLSR的效率取决于多点继电器的选择。通过修改现有的OLSR路由协议和基于数据包优先级的流量整形,进行了各种研究来减少控制流量开销。这项研究提出了使用群智能的OLSR修改,使用引力搜索算法(GSA)的混合粒子群优化(HPSO)以及抖动性能,端到端延迟,数据丢失和吞吐量的评估。通过仿真研究了提出的用于网络多媒体流量的方法。

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