5G D2D Transmission Mode Selection Performance & Cluster Limits Evaluation of Distributed AI and ML Techniques

I. Ioannou, C. Christophorou, V. Vassiliou, A. Pitsillides
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引用次数: 2

Abstract

5G D2D Communication promises improvements in energy and spectral efficiency, overall system capacity, and higher data rates. However, to achieve optimum results, it is essential to select wisely the Transmission mode of the D2D Device to form clusters in the most advantageous positions in terms of Sum Rate and Power Consumption. Towards this end, this paper investigates the use of Distributed Artificial Intelligence (DAI) and innovative D2D, Machine Learning (ML) approaches (i.e., DAIS, FuzzyART, DBSCAN and MEC) to achieve satisfactory results in terms of Spectral Efficiency (SE), Power Consumption (PC) and execution time, with the creation of clusters and back-hauling links in D2D network under existing Base Station. Additionally, this paper focuses on a small number of Devices (i.e., <=200), targeting the identification of the limits of each approach in terms of the low number of devices. More specifically, we investigate when an operator must consider implementing a D2D network (that requires extra complexity), therefore when the cluster members are sufficient enough to achieve better results than the classic mobile network. So, this research identifies where it is beneficial to form a cluster, investigate the critical point that gains increases rapidly and in the end, examine the applicability of 5G requirements. Additionally, prior work presented a Distributed Artificial Intelligence (DAI) Solution/Framework in D2D, and a DAIS Transmission Mode Selection (TMS) plan was proposed. In this paper, DAIS is further examined, improved in terms of thresholds evaluation (i.e., Weighted Data Rate (WDR), Battery Power Level (BPL)), evaluated, and compared with other approaches (AI/ML). The results obtained demonstrate the exceptional performance of DAIS and FuzzyART, compared to all other related approaches in terms of SE, PC, execution time and cluster formation. Also, results show that the investigated AI/ML approaches are also beneficial for Transmission Mode Selection (TMS) in 5G D2D communication, even with fewer devices (i.e., >=5 for clustering, >=50 for backhauling) as lower limits.
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分布式AI和ML技术的5G D2D传输模式选择性能及聚类限制评估
5G D2D通信有望提高能源和频谱效率、整体系统容量和更高的数据速率。然而,为了达到最佳效果,必须明智地选择D2D器件的传输模式,以便在Sum Rate和Power Consumption方面形成最有利的簇。为此,本文研究了使用分布式人工智能(DAI)和创新的D2D,机器学习(ML)方法(即DAIS, FuzzyART, DBSCAN和MEC)在频谱效率(SE),功耗(PC)和执行时间方面取得令人满意的结果,并在现有基站的D2D网络中创建集群和回拉链路。此外,本文将重点放在少数设备(即集群=5,回运>=50)作为下限。
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