Experimental Demonstration of Latency Aware Optimization for Collaborative UAV-Aided VANET
编号:11访问权限:仅限参会人更新:2024-09-19 15:06:51浏览:404次张贴报告
报告开始:2024年10月25日 15:50(Asia/Bangkok)
报告时间:5min
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摘要
In vehicular communication, the unmanned aerial vehicles (UAVs) are incorporated to overcome the drawbacks in the vehicle such as unpredictable mobility and rapid topological changes. The aerial vehicles are highly flexible and cost effective so that it is able to control the vehicles in a better manner. Currently the aerial vehicles are used to perform highly confidential data transmission in a collaborative way. Several challenges occurred in search works in terms of limited battery power and environmental condition. To overcome this in this article latency aware optimization for collaborative aerial vehicles (ELAOC-UAVs) are developed. The core modules of this process are traffic model and trajectory design creation and optimization among the UAVs using glowworm swarm optimization (GSO) algorithm. With the presence of this process the delay occurrences among the aerial vehicles are greatly reduced and that helps to improve the overall performance of the network. The ELAOC-UAVs model is constructed in the software NS3 and the perimeters which are used to measure the performance of the network are data accuracy, data loss, routing overhead, network throughput and average delay. From the final result it is proven that the ELAOC-UAVs obtained better results in terms of throughput and data accuracy when compared with the earlier baseline methodology.
关键词
Unmanned Aerial Vehicles (UAVs), Latency Aware Optimization, Glowworm Swarm Optimization (GSO) Algorithm, Traffic Model and Trajectory Design.
报告人
Mohammed Habelalmateen
The Islamic University
稿件作者
Gayatri ParasaKoneru Lakshmaiah Education Foundation
Rizgar Rahman GhafourNational University of Science and Technology
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