Massive multiple-input multiple-output (MIMO) communication systems have a huge potential both in terms of data rate and energy efficiency, although channel estimation becomes challenging for a large number of antennas. Using a physical model allows to ease the problem by injecting a priori information based on the physics of propagation. However, such a model rests on simplifying assumptions and requires to know precisely the configuration of the system, which is unrealistic in practice.In this paper we present mpNet, an unfolded neural network specifically designed for massive MIMO channel estimation. It is trained online in an unsupervised way. Moreover, mpNet is computationally efficient and automatically adapts its depth to the signal-to-noise ratio (SNR). The method we propose adds flexibility to physical channel models by allowing a base station (BS) to automatically correct its channel estimation algorithm based on incoming data, without the need for a separate offline training phase.It is applied to realistic millimeter wave channels and shows great performance, achieving a channel estimation error almost as low as one would get with a perfectly calibrated system. It also allows incident detection and automatic correction, making the BS resilient and able to automatically adapt to changes in its environment.
翻译:在数据率和能源效率方面,大量投入的多重产出(MIIMO)通信系统都具有巨大的潜力,在数据率和能源效率方面都是如此,尽管频道估计对大量天线来说都具有挑战性。使用物理模型可以通过根据传播的物理原理输入先验信息来缓解问题。然而,这种模型依赖于简化的假设,要求确切了解系统配置,而在实践中这是不现实的。 在本文中,我们介绍的是一个为大规模IMO频道估计而专门设计的展开的神经网络。它以不受监督的方式在网上接受培训。此外, MPNet具有计算效率,并自动调整其深度以适应信号对噪音比率(SNR) 。 我们提议的方法增加了对物理信道模型的灵活性,允许一个基地站(BS)自动纠正其基于接收的数据的频道估计算法,而不需要单独的离线培训阶段。 它被应用到现实的毫米波频道,并表现出很高的性能,使频道估计误差几乎与一个完全校准的系统一样低。它还允许事件探测和自动校正,使BS具有弹性,并能够自动改变环境。