The standard beam management procedure in 5G requires the user equipment (UE) to periodically measure the received signal reference power (RSRP) on each of a set of beams proposed by the basestation (BS). It is prohibitively expensive to measure the RSRP on all beams and so the BS should propose a beamset that is large enough to allow a high-RSRP beam to be identified, but small enough to prevent excessive reporting overhead. Moreover, the beamset should evolve over time according to UE mobility. We address this fundamental performance/overhead trade-off via a Bayesian optimization technique that requires no or little training on historical data and is rooted on a low complexity algorithm for the beamset choice with theoretical guarantees. We show the benefits of our approach on 3GPP compliant simulation scenarios.
翻译:5G中标准的波束管理过程要求用户设备(UE)周期性地测量基站(BS)提出的一组波束上的接收信号参考功率(RSRP)。测量所有波束上的RSRP是代价高昂的,因此BS应该提出一个足够大的波束集,以允许识别高RSRP波束,但又足够小,以防止过多的报告开销。此外,波束集应根据UE移动性随时间演变。我们通过基于波束选择的低复杂度算法和具有理论保证的贝叶斯优化技术来解决这个基本的性能/开销折衷问题,该技术在历史数据中不需要或需要很少的训练。我们在符合3GPP的模拟场景中展示了我们的方法的好处。