AeroLOBE:一种基于深度学习的新型空中通信负载均衡器,可提高6G网络的性能

Tushar Vrind;Debabrata Das
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引用次数: 0

摘要

虽然基于低空平台(LAP)的空中基站有助于提高电信运营商的覆盖范围和容量,但从资本支出(CAPEX)和运营支出(OPEX)的角度来看,空中基站的部署和管理都是一个不容忽视的问题。一方面,将机队规模保持在最小以减少资本支出是至关重要的,而另一方面,将用户设备(UE)与空中基站优化关联是至关重要的,以便最大限度地利用空中基站资源并为更多的UE服务。现有研究主要讨论了覆盖和容量优化等机制。据我们所知,这是我们第一次对每个用户的预测数据流量和ue间流量进行处理,以共同优化空中蜂窝的容量最大化、ue间通信的延迟最小化和空中机队规模最小化。为此,我们提出了一种基于深度学习的新型空中负载平衡器(AeroLOBE),用于空中通信,使用新的约束分数群多背包问题(F-GMKP)公式和背包优化(KO)将用户与lap关联,从而提高了网络的性能。通过数学建模和广泛的仿真,我们表明AeroLOBE将ue间通信的延迟降低了39%以上,将资源利用率提高了10%以上,同时保持阻塞率和机队减少目标与文献中可用的负载均衡方案相似或略好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AeroLOBE: A Deep Learning-Based Novel Load Balancer for Aerial Communication to Enhance the Performance of 6G Networks
While the low-altitude platform (LAP)-based aerial cells help improve the coverage and capacity for the telecom operator, the deployment and management of the aerial fleet is a non-trivial problem from both a capital expenditure (CAPEX) and an operational expenditure (OPEX) perspective. On the one hand, it is critical to keep the fleet size to a minimum to reduce CAPEX, while on the other hand, it is critical to optimally associate user equipment (UE) with aerial cells in order to maximize the use of aerial cell resources and serve more pieces of UE. Existing research on balancing UE load among aerial cells discusses mechanisms like coverage and capacity optimization. To the best of our knowledge, this is the first time we have treated the forecasted data traffic volume for each user as well as inter-UE traffic consideration to jointly optimize capacity maximization for aerial cells, latency minimization in inter-UE communication, and aerial fleet size minimization. To this end, we present a deep learning-based novel aerial load balancer (AeroLOBE) for aerial communication using a novel constraint fractional group multiple knapsack problem (F-GMKP) formulation and the knapsack optimization (KO) for associating users to LAPs, thereby enhancing performance for the network. Through mathematical modelling and extensive simulation, we show that AeroLOBE reduces the latency of inter-UE communication by over 39% and improves the resource utilization by over 10%, while keeping the blocking rate and fleet reduction targets similar or marginally better than the available load balancing schemes in the literature.
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