To optimally cover users in millimeter-Wave (mmWave) networks, clustering is needed to identify the number and direction of beams. The mobility of users motivates the need for an online clustering scheme to maintain up-to-date beams towards those clusters. Furthermore, mobility of users leads to varying patterns of clusters (i.e., users move from the coverage of one beam to another), causing dynamic traffic load per beam. As such, efficient radio resource allocation and beam management is needed to address the dynamicity that arises from mobility of users and their traffic. In this paper, we consider the coexistence of Ultra-Reliable Low-Latency Communication (URLLC) and enhanced Mobile BroadBand (eMBB) users in 5G mmWave networks and propose a Quality-of-Service (QoS) aware clustering and resource allocation scheme. Specifically, Density-Based Spatial Clustering of Applications with Noise (DBSCAN) is used for online clustering of users and the selection of the number of beams. In addition, Long Short Term Memory (LSTM)-based Deep Reinforcement Learning (DRL) scheme is used for resource block allocation. The performance of the proposed scheme is compared to a baseline that uses K-means and priority-based proportional fairness for clustering and resource allocation, respectively. Our simulation results show that the proposed scheme outperforms the baseline algorithm in terms of latency, reliability, and rate of URLLC users as well as rate of eMBB users.
翻译:为了以最佳方式覆盖千兆维(mmWave)网络中的用户,需要进行集群,以确定光束的数量和方向。用户的流动性促使需要建立一个在线群集机制,以保持这些群群群中的最新光束;此外,用户的流动性导致群集模式不同(即用户从一个光束覆盖到另一个光束),造成每个光束的动态交通负荷。因此,需要高效率的无线电资源分配和波束管理,以解决用户流动及其流量产生的动态。在本文件中,我们考虑到超可恢复的低LULLOC(URLC)与5GmmWave网络中强化的移动宽带用户(eMBBB)共存的必要性。此外,基于密度的以空间集群为基础的应用应用空间集群(DBSCAN)用于用户的在线集聚和选择蜂量。此外,基于远程精度的低通度通信的用户(LSTM)和增强的移动宽带B(eMB)用户(eMB)用户在5GmmWWWWave网络中强化的用户(emobB)用户使用比例分配计划,这是我们提议的“深度数据配置”的系统,用来显示我们数据库中的拟议的基于资源配置的系统。