A Stackelberg Based Leadership Algorithm for RAT Selection in Heterogeneous Networks

Samin Nili-Ahmadabadi, Behrad Soleimani, V. Shah-Mansouri
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Abstract

To address the increasing demand of data rate for data-hungry smart devices, next generation cellular networks are heterogeneous (HetNet) environments where multiple types of base transceiver stations provide service to users using different radio access technologies (RATs). Mobile network operators deploy WiFi or micro-cell base stations along with macro-cell base stations to enhance the coverage, provide load balancing and extensively improve the throughput of their networks. Various challenges arise when users have the option for their access connection, where the most important one is the selection of the appropriate RAT. Different objectives can be considered for RAT selection, including throughput, power consumption, fairness, and etc. In this paper, we study a RAT selection problem for a HetNet network with WiFi and a 5G gNB. We model this multi-objective problem using a Stackelberg game. To tackle the computational complexity of this model, we propose a novel technique by estimating the interacting functions between the users and the RATs. The numerical results show the tightness of the estimation. Moreover, the RAT selection heuristic solution is 90 % of the times in 30 % proximity of the optimal solution.
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基于Stackelberg的异构网络中RAT选择的领导算法
为了满足数据饥渴型智能设备对数据速率日益增长的需求,下一代蜂窝网络是异构(HetNet)环境,其中多种类型的基收发器站使用不同的无线电接入技术(rat)向用户提供服务。移动网络运营商将WiFi或微蜂窝基站与宏蜂窝基站一起部署,以增强覆盖范围,提供负载均衡并广泛提高其网络的吞吐量。当用户对其访问连接有选择时,会出现各种各样的挑战,其中最重要的是选择适当的RAT。RAT选择可以考虑不同的目标,包括吞吐量、功耗、公平性等。在本文中,我们研究了具有WiFi和5G gNB的HetNet网络的RAT选择问题。我们使用Stackelberg博弈来模拟这个多目标问题。为了解决该模型的计算复杂性,我们提出了一种新的技术,通过估计用户和rat之间的交互函数。数值结果表明了估计的严密性。此外,RAT选择启发式解决方案在最优解决方案的30%接近度中有90%的时间。
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