Department of Electrical, Electronic, and Information Engineering, University of Bologna, 40136 Bologna, Italy.
Department of Electronics and Telecommunications (DET), Politecnico di Torino, 10129 Torino, Italy.
Sensors (Basel). 2023 Jan 12;23(2):910. doi: 10.3390/s23020910.
Advances in machine learning have widened the range of its applications in many fields. In particular, deep learning has attracted much interest for its ability to provide solutions where the derivation of a rigorous mathematical model of the problem is troublesome. Our interest was drawn to the application of deep learning for channel state information feedback reporting, a crucial problem in frequency division duplexing (FDD) 5G networks, where knowledge of the channel characteristics is fundamental to exploiting the full potential of multiple-input multiple-output (MIMO) systems. We designed a framework adopting a 5G New Radio convolutional neural network, called NR-CsiNet, with the aim of compressing the channel matrix experienced by the user at the receiver side and then reconstructing it at the transmitter side. In contrast to similar solutions, our framework is based on a 5G New Radio fully compliant simulator, thus implementing a channel generator based on the latest 3GPP 3-D channel model. Moreover, realistic 5G scenarios are considered by including multi-receiving antenna schemes and noisy downlink channel estimation. Simulations were carried out to analyze and compare the performance with current feedback reporting schemes, showing promising results for this approach from the point of view of the block error rate and throughput of the 5G data channel.
机器学习的进步拓宽了其在许多领域应用的范围。特别是,深度学习因其能够在推导问题严格的数学模型很麻烦的情况下提供解决方案而引起了广泛关注。我们对深度学习在信道状态信息反馈报告中的应用产生了兴趣,这是频分双工 (FDD) 5G 网络中的一个关键问题,在该问题中,对信道特性的了解是充分利用多输入多输出 (MIMO) 系统潜力的基础。我们设计了一个采用 5G 新无线电卷积神经网络的框架,称为 NR-CsiNet,旨在压缩接收机侧用户经历的信道矩阵,然后在发射机侧对其进行重建。与类似的解决方案不同,我们的框架基于 5G 新无线电完全兼容的模拟器,因此实现了基于最新 3GPP 3-D 信道模型的信道生成器。此外,通过包括多接收天线方案和嘈杂的下行链路信道估计,考虑了现实的 5G 场景。进行了模拟分析和比较,以与当前的反馈报告方案进行性能比较,从 5G 数据信道的块错误率和吞吐量的角度来看,该方法具有很有前景的结果。