论文标题

人工智能授权超可靠和低潜伏期无线网络的多个访问权限

Artificial Intelligence Empowered Multiple Access for Ultra Reliable and Low Latency THz Wireless Networks

论文作者

Boulogeorgos, Alexandros-Apostolos A., Yaqub, Edwin, Desai, Rachana, Sanguanpuak, Tachporn, Katzouris, Nikos, Lazarakis, Fotis, Alexiou, Angeliki, Di Renzo, Marco

论文摘要

Terahertz(THZ)无线网络有望催化第五代(B5G)时代。但是,由于THZ链接的定向性质和视线需求以及THZ网络的超密集部署,因此需要面对中等访问控制(MAC)层的许多挑战。更详细地,通过合并能够在复杂且经常变化的环境中提供“实时”解决方案的人工智能(AI)来重新思考用户协会和资源分配策略的需求变得很明显。此外,为了满足几种B5G应用的超可靠性和低延迟需求,需要采用新颖的移动性管理方法。在此激励的情况下,本文提出了一种整体MAC层方法,该方法可以实现智能用户协会和资源分配以及灵活和自适应移动性管理,同时通过最小化最大化系统的可靠性。更详细地,记录了一种新型的元启发式计算机学习框架的快速和集中的联合用户协会,无线电资源分配和避免阻塞,从而最大程度地提高了THZ网络的性能,同时将关联延迟最小化了大约三个幅度。为了支持在接入点(AP)覆盖范围内,移动性管理和避免阻塞的范围内,讨论了对梁选择的深入强化学习(DRL)方法。最后,为了支持邻居AP的覆盖范围之间的用户移动性,报告了一种基于AI辅助快速通道预测的主动手部机制。

Terahertz (THz) wireless networks are expected to catalyze the beyond fifth generation (B5G) era. However, due to the directional nature and the line-of-sight demand of THz links, as well as the ultra-dense deployment of THz networks, a number of challenges that the medium access control (MAC) layer needs to face are created. In more detail, the need of rethinking user association and resource allocation strategies by incorporating artificial intelligence (AI) capable of providing "real-time" solutions in complex and frequently changing environments becomes evident. Moreover, to satisfy the ultra-reliability and low-latency demands of several B5G applications, novel mobility management approaches are required. Motivated by this, this article presents a holistic MAC layer approach that enables intelligent user association and resource allocation, as well as flexible and adaptive mobility management, while maximizing systems' reliability through blockage minimization. In more detail, a fast and centralized joint user association, radio resource allocation, and blockage avoidance by means of a novel metaheuristic-machine learning framework is documented, that maximizes the THz networks performance, while minimizing the association latency by approximately three orders of magnitude. To support, within the access point (AP) coverage area, mobility management and blockage avoidance, a deep reinforcement learning (DRL) approach for beam-selection is discussed. Finally, to support user mobility between coverage areas of neighbor APs, a proactive hand-over mechanism based on AI-assisted fast channel prediction is~reported.

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