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An adaptive Flying Ad-hoc Network (FANET) for disaster response operations to improve quality of service (QoS)

机译:用于灾难响应操作的自适应飞行ad-hoc网络(FANET),以提高服务质量(QoS)

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摘要

Flying Ad-hoc Networks (FANETs) and Unmanned Aerial Vehicles (UAVs) are widely utilized in various rescues, disaster management and military operations nowadays. The limited battery power and high mobility of UAVs create problems like small flight duration and unproductive routing. In this paper, these problems will be reduced by using efficient hybrid K-Means-Fruit Fly Optimization Clustering Algorithm (KFFOCA). The performance and efficiency of K-Means clustering is improved by utilizing the Fruit Fly Optimization Algorithm (FFOA) and the results are analyzed against other optimization techniques like CLPSO, CACONET, GWOCNET and ECRNET on the basis of several performance parameters. The simulation results show that the KFFOCA has obtained better performance than CLPSO, CACONET, GWOCNET and ECRNET based on Packet Delivery Ratio (PDR), throughput, cluster building time, cluster head lifetime, number of clusters, end-to-end delay and consumed energy.
机译:飞行ad-hoc网络(FANET)和无人驾驶航空公司(无人机)在现在广泛利用各种救援,灾害管理和军事行动。 无人机的电池电量和高迁移率有限创造出小型飞行持续时间和非生产性路由等问题。 在本文中,通过使用高效的混合k型果实飞行优化聚类聚类算法(KffoCa)将减少这些问题。 通过利用果蝇优化算法(FFOA)来提高K-Means聚类的性能和效率,并根据几个性能参数,根据CLPSO,CACONET,GWOCNET和ECRNET的其他优化技术分析结果。 仿真结果表明,KFFOCA基于CLPSO,CACONET,GWOCNET和ECRNET基于数据包传递比(PDR),吞吐量,群集建筑时间,群集头寿命,集群数,端到端延迟和消耗的群体比CLPSO,CACONET,GWOCNET和ECRNET获得了更好的性能 活力。

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