This paper demonstrates the use of deep learning and time series data generated from user equipment (UE) beam measurements and positions collected by the base station (BS) to enable handoffs between beams that belong to the same or different BSs. We propose the use of long short-term memory (LSTM) recurrent neural networks with three different approaches and vary the number of lookbacks of the beam measurements to study the performance of the prediction used for the proactive beam handoff. Simulations show that while UE positions can improve the prediction performance, it is only up to a certain point. At a sufficiently large number of lookbacks, the UE positions become irrelevant to the prediction accuracy since the LSTMs are able to learn the optimal beam based on implicitly defined positions from the time-defined trajectories.
翻译:本文展示了深度学习和基站(BS)采集到的由用户设备(UE)波束测量和位置生成的时间序列数据,以实现属于同一BS或不同BS的波束之间的切换。我们提出了使用长短期记忆( LSTM)递归神经网络的三种不同方法,并通过改变波束测量的回顾数来研究用于主动波束切换的预测性能。仿真结果表明,UE的位置可以提高预测性能,但仅限于一定的位置数。在足够大的回顾数下,由于LSTM可以从时间定义中的轨迹隐式地学习到最优波束,UE的位置就与预测准确性无关了。