Channel estimation is a difficult problem in MIMO systems. Using a physical model allows to ease the problem, injecting a priori information based on the physics of propagation. However, such models rest on simplifying assumptions and require to know precisely the system configuration, which is unrealistic.In this paper, we propose to perform online learning for channel estimation in a massive MIMO context, adding flexibility to physical models by unfolding a channel estimation algorithm (matching pursuit) as a neural network. This leads to a computationally efficient neural network that can be trained online when initialized with an imperfect model. The method allows a base station 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 channels and shows great performance, achieving channel estimation error almost as low as one would get with a perfectly calibrated system.
翻译:在MIMO系统中,频道估算是一个棘手的问题。 使用物理模型可以缓解问题, 输入基于传播物理学的先验信息。 但是, 这些模型依赖于简化的假设, 并且要求准确了解系统配置, 这是不现实的。 在本文中, 我们提议在大型MIMO背景下进行频道估算在线学习, 通过将频道估算算法( 匹配跟踪)作为神经网络, 增加物理模型的灵活性。 这导致一个计算高效的神经网络, 在启动不完善的模型时可以在线培训。 该方法允许基站自动纠正基于获取的数据的频道估算算法, 不需要单独的离线培训阶段。 它适用于现实的渠道, 并显示良好的业绩, 实现频道估算错误的程度几乎与一个完全校准的系统一样低。