Beamforming-capable antenna arrays overcome the high free-space path loss at higher carrier frequencies. However, the beams must be properly aligned to ensure that the highest power is radiated towards (and received by) the user equipment (UE). While there are methods that improve upon an exhaustive search for optimal beams by some form of hierarchical search, they can be prone to return only locally optimal solutions with small beam gains. Other approaches address this problem by exploiting contextual information, e.g., the position of the UE or information from neighboring base stations (BS), but the burden of computing and communicating this additional information can be high. Methods based on machine learning so far suffer from the accompanying training, performance monitoring and deployment complexity that hinders their application at scale. This paper proposes a novel method for solving the initial beam-discovery problem. It is scalable, and easy to tune and to implement. Our algorithm is based on a recommender system that associates groups (i.e., UEs) and preferences (i.e., beams from a codebook) based on a training data set. Whenever a new UE needs to be served our algorithm returns the best beams in this user cluster. Our simulation results demonstrate the efficiency and robustness of our approach, not only in single BS setups but also in setups that require a coordination among several BSs. Our method consistently outperforms standard baseline algorithms in the given task.
翻译:光学天线阵列克服了较高承载频率的高自由空间路径损失。 但是,光束必须适当调整,以确保最高电源被辐射到用户设备(UE),用户设备(UE)接收到。虽然有些方法通过某种等级搜索形式,在彻底搜索最佳光束时可以改进对最佳光束的彻底搜索,但是它们只容易返回局部最佳解决方案,并带来小波束增益。其他方法通过利用背景信息来解决这一问题,例如,UE的位置或邻近基地台(BS)的信息,但计算和传递这种额外信息的负担可能很高。基于机器学习的方法受到相关培训、性能监测和部署复杂性的影响,而这种培训、性能监测和部署复杂性阻碍其规模应用。本文提出了解决初始光束分解问题的新方法。可以伸缩,而且容易调和加以执行。我们的算法基于一种推荐系统,即仅将各组(即UES)和偏好点(即来自代码簿)联系起来,而这种额外信息的负担可能很高。基于相关的培训性培训性、性、性监测和部署复杂性方法需要一种单一的B级方法,只要新的系统能够显示我们最强的B的系统,那么,我们的系统就需要的系统就需要的系统就需要的系统就需要的系统,就需要的系统要求的系统需要返回的单一的系统,就需要的B的系统要求的系统。