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Learning Based CoMP Clustering for URLLC in Millimeter wave 5G networks with Blockages

机译:带有阻塞的毫米波5G网络中基于学习的URLLC CoMP集群

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URLLC will be a use case of 5G which requires high reliability, low latency and high availability to be satisfied simultaneously. 5G will be using millimeter wave (mmw) communication which suffers from frequent and dynamic blockages impacting reliability. In addition to high SNR line-of-sight (LOS) links and low SNR non-line-of-sight (NLOS) links, complete outage (blockage) links are also anticipated. Link status will be changing dynamically between these three states. Coordinated multipoint joint transmission (CoMP-JT) is an ideal candidate to ensure high reliability, where a group of base stations (BSs) transmits the same data to a user equipment (UE). Due to highly dynamic blockages and backhaul constraints, BSs selected to be part of CoMP cluster based on the reference signal received power (RSRP) alone will be outdated by the time of data transmission. In this paper, a CoMP clustering scheme is proposed in which a neural network algorithm running in each BS learns the spatiotemporal pattern of blockages and predicts the BS-UE link status based on the clock time and location of UE. The BSs with predicted blockage shall be removed and LOS links shall be given higher priority over NLOS links during CoMP clustering, thereby increasing the reliability and availability. Analytical channel model is combined with stochastic geometry based model to characterize the real world spatio-temporal blockages. A modified control flow of events for CoMP-JT in URLLC is proposed to address the issue of backhaul constraints. Simulation results show that the proposed CoMP clustering scheme outperforms the RSRP based CoMP clustering in terms of BLER and SNR.
机译:URLLC将是5G的用例,其需要同时满足高可靠性,低延迟和高可用性。 5G将使用毫米波(MMW)通信,这些通信频繁和动态堵塞影响可靠性。除了高SNR视线(LOS)链路和低SNR非瞄准(NLOS)链接外,还预期了完整的中断(堵塞)链接。链接状态将在这三个州之间动态更改。协调的多点关节传输(COMP-JT)是确保高可靠性的理想候选者,其中一组基站(BSS)将相同的数据发送到用户设备(UE)。由于高度动态堵塞和回程约束,仅基于参考信号接收功率(RSRP)的BSS选择为Comp集群的一部分,将通过数据传输的时间过时。在本文中,提出了一种COMP聚类方案,其中在每个BS中运行的神经网络算法学习仅基于UE的时钟时间和位置的时空堵塞的时空模式和预测BS-UE链路状态。具有预测堵塞的BSS应被移除,并且在COMP聚类期间,应在NLOS链路上优先考虑LOS链接,从而提高可靠性和可用性。分析通道模型与基于随机几何模型相结合,以表征真实世界时空堵塞。建议在URIVC中进行修改的控制流程,以解决回程约束的问题。仿真结果表明,所提出的COMP聚类方案在BLER和SNR方面优于基于RSRP的COMP聚类。

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