Machine learning (ML) can be used in various ways to improve multi-user multiple-input multiple-output (MU-MIMO) receive processing. Typical approaches either augment a single processing step, such as symbol detection, or replace multiple steps jointly by a single neural network (NN). These techniques demonstrate promising results but often assume perfect channel state information (CSI) or fail to satisfy the interpretability and scalability constraints imposed by practical systems. In this paper, we propose a new strategy which preserves the benefits of a conventional receiver, but enhances specific parts with ML components. The key idea is to exploit the orthogonal frequency-division multiplexing (OFDM) signal structure to improve both the demapping and the computation of the channel estimation error statistics. Evaluation results show that the proposed ML-enhanced receiver beats practical baselines on all considered scenarios, with significant gains at high speeds.
翻译:机器学习(ML)可以用各种方式改进多用户多投入多产出产出(MU-MIMO)的处理。典型的方法要么增加单一处理步骤,如符号检测,要么由单一神经网络(NN)共同取代多个步骤。这些技术显示了有希望的结果,但往往假定频道状态信息完美,或者无法满足实用系统对可解释性和可缩放性的限制。在本文中,我们提出了一个新战略,保留常规接收器的效益,但增强带有ML组件的特定部分。关键的想法是利用正方位频率多功能(OFDM)信号结构改进频道估计误差统计的绘图和计算。评价结果显示,拟议的 ML-强化接收器在所有考虑的情景上都跳过实用基线,以高速取得显著收益。