A Fuzzy Logic Approach for Improving Throughput of the UAV-Assisted Wireless Networks

Sadia Afrin, Md. Sakir Hossain, Md.R. Iqbal, Alif Refat, Ahsan U. Tamim
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Abstract

Unmanned aerial vehicle (UAV)-assisted wireless network is envisioned as a dominant network in 6G to cope with sudden surge of data rate demand and to provide flexible data connectivity. This network works as a moving hotspot. Existing UAV deployment techniques suffer from limited throughput and user satisfaction. In this paper, we propose a novel UAV deployment algorithm exploiting the fuzzy c-means clustering to overcome the limitations involved in k-means clustering so that a higher network throughput can be achieved and to ensure a higher user satisfaction. We compare the performance of the proposed UAV deployment algorithm with the performance of the state-of-the-art k-means algorithm. Simulation results show that the proposed method outperforms the k-means algorithm in terms of network throughput, user satisfaction ratio, and consistency in throughput. Up to 9% improvement in the network throughput is obtained due to the proposed method. We see that the network throughput is proportional to the number of UAVs, and more users can be satisfied by the proposed method.
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一种提高无人机辅助无线网络吞吐量的模糊逻辑方法
无人机(UAV)辅助无线网络被设想为6G中的主导网络,以应对突然激增的数据速率需求并提供灵活的数据连接。这个网络就像一个移动的热点。现有的无人机部署技术受到吞吐量和用户满意度的限制。在本文中,我们提出了一种新的无人机部署算法,利用模糊c均值聚类来克服k均值聚类的局限性,从而实现更高的网络吞吐量并确保更高的用户满意度。我们将提出的无人机部署算法的性能与最先进的k-means算法的性能进行了比较。仿真结果表明,该方法在网络吞吐量、用户满意度和吞吐量一致性方面优于k-means算法。由于所提出的方法,网络吞吐量提高了9%。我们看到,网络吞吐量与无人机数量成正比,并且通过提出的方法可以满足更多的用户。
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