论文标题

深度:多源MIMO检测的深层软干扰取消

DeepSIC: Deep Soft Interference Cancellation for Multiuser MIMO Detection

论文作者

Shlezinger, Nir, Fu, Rong, Eldar, Yonina C.

论文摘要

需要数字接收器从其观察到的通道输出中恢复传输符号。在多源多输入多输出(MIMO)设置中,同时传输多个符号,准确的符号检测具有挑战性。能够可靠恢复多个符号的算法家族基于干扰取消。但是,这些方法假定该通道是线性的,该模型不反映许多相关的通道,并且需要准确的通道状态信息(CSI),这可能无法可用。在这项工作中,我们提出了一个多源MIMO接收器,该接收器学会以数据驱动的方式共同检测,而无需假设特定的频道模型或需要CSI。特别是,我们提出了迭代软干扰取消(SIC)算法的数据驱动的实现,我们称之为深度。所得的符号检测器基于将专用的机器学习方法(ML)方法集成到迭代SIC算法中。 Deepsic学会从有限的训练样本中进行联合检测,而不需要该通道是线性及其参数。我们的数值评估表明,对于具有完整CSI的线性通道,深刻的方法是迭代SIC的性能,这与最佳性能相当,并且优于先前提出的基于ML的MIMO接收器。此外,在存在CSI不确定性的情况下,深度效果显着优于基于模型的方法。最后,我们表明,深色准确地检测到非线性通道中的符号,即使有准确的CSI可用,传统的迭代SIC也会失败。

Digital receivers are required to recover the transmitted symbols from their observed channel output. In multiuser multiple-input multiple-output (MIMO) setups, where multiple symbols are simultaneously transmitted, accurate symbol detection is challenging. A family of algorithms capable of reliably recovering multiple symbols is based on interference cancellation. However, these methods assume that the channel is linear, a model which does not reflect many relevant channels, as well as require accurate channel state information (CSI), which may not be available. In this work we propose a multiuser MIMO receiver which learns to jointly detect in a data-driven fashion, without assuming a specific channel model or requiring CSI. In particular, we propose a data-driven implementation of the iterative soft interference cancellation (SIC) algorithm which we refer to as DeepSIC. The resulting symbol detector is based on integrating dedicated machine-learning (ML) methods into the iterative SIC algorithm. DeepSIC learns to carry out joint detection from a limited set of training samples without requiring the channel to be linear and its parameters to be known. Our numerical evaluations demonstrate that for linear channels with full CSI, DeepSIC approaches the performance of iterative SIC, which is comparable to the optimal performance, and outperforms previously proposed ML-based MIMO receivers. Furthermore, in the presence of CSI uncertainty, DeepSIC significantly outperforms model-based approaches. Finally, we show that DeepSIC accurately detects symbols in non-linear channels, where conventional iterative SIC fails even when accurate CSI is available.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源