We propose an innovative machine learning-based technique to address the problem of channel acquisition at the base station in frequency division duplex systems. In this context, the base station reconstructs the full channel state information in the downlink frequency range based on limited downlink channel state information feedback from the mobile terminal. The channel state information recovery is based on a convolutional neural network which is trained exclusively on collected channel state samples acquired in the uplink frequency domain. No acquisition of training samples in the downlink frequency range is required at all. Finally, after a detailed presentation and analysis of the proposed technique and its performance, the "transfer learning'' assumption of the convolutional neural network that is central to the proposed approach is validated with an analysis based on the maximum mean discrepancy metric.
翻译:我们建议采用基于创新的机器学习技术,解决在频率分区双面系统基站获取频道的问题,在这方面,基地站根据来自移动终端的有限下链接频道状态信息反馈,在下链路频率范围内重建整个频道状态信息;频道状态信息恢复基于一个革命神经网络,专门对在上链路频率范围内收集的频道状态样本进行培训;不需要在下链路频率范围内获取任何培训样本;最后,在详细介绍和分析拟议技术及其性能之后,“转移学习”假设对拟议方法至关重要的脉冲神经网络,经过基于最大平均值差异指标的分析加以验证。