论文标题
高速铁路中的MMWave MU-MIMO系统中学习辅助的光束预测
Learning-Aided Beam Prediction in mmWave MU-MIMO Systems for High-Speed Railway
论文作者
论文摘要
高速铁路(HSR)等高移动性场景中的光束对齐和跟踪问题变得极具挑战性,因为引入了较大的间接开销成本和大量的时间延迟,以进行快速变化的频道估计。为了应对这一挑战,我们建议使用一组观测值,提出了HSR网络的学习辅助束预测方案,该方案可以在未来时间的一段时间内以良好的时间粒度进行预测。具体而言,我们将高维光束预测的问题转化为两个阶段的任务,即低维参数估计和级联的混合光束成形操作。在第一阶段,特定终端的位置和速度由最大似然标准估算,并且数据驱动的数据融合模块旨在提高最终估计准确性和鲁棒性。然后,根据HSR场景,包括确定性轨迹,运动模型和通道模型,预测了可能的未来光束方向和通道振幅。此外,我们将可学习的非线性映射模块纳入整体束预测中,以允许非线性轨道。提出的两个可学习模块都是基于模型的,并且具有良好的解释性。与现有的光束管理方案相比,提议的梁预测(接近)零间接成本和时间延迟。仿真结果验证了所提出的方案的有效性。
The problem of beam alignment and tracking in high mobility scenarios such as high-speed railway (HSR) becomes extremely challenging, since large overhead cost and significant time delay are introduced for fast time-varying channel estimation. To tackle this challenge, we propose a learning-aided beam prediction scheme for HSR networks, which predicts the beam directions and the channel amplitudes within a period of future time with fine time granularity, using a group of observations. Concretely, we transform the problem of high-dimensional beam prediction into a two-stage task, i.e., a low-dimensional parameter estimation and a cascaded hybrid beamforming operation. In the first stage, the location and speed of a certain terminal are estimated by maximum likelihood criterion, and a data-driven data fusion module is designed to improve the final estimation accuracy and robustness. Then, the probable future beam directions and channel amplitudes are predicted, based on the HSR scenario priors including deterministic trajectory, motion model, and channel model. Furthermore, we incorporate a learnable non-linear mapping module into the overall beam prediction to allow non-linear tracks. Both of the proposed learnable modules are model-based and have a good interpretability. Compared to the existing beam management scheme, the proposed beam prediction has (near) zero overhead cost and time delay. Simulation results verify the effectiveness of the proposed scheme.