论文标题
基于模块化神经网络的深度学习方法,用于MIMO信号检测
A Modular Neural Network Based Deep Learning Approach for MIMO Signal Detection
论文作者
论文摘要
在本文中,我们揭示了人工神经网络(ANN)辅助多输入多输出(MIMO)信号检测可以建模为ANN辅助损耗矢量量化(VQ),称为MIMO-VQ,这基本上是一种基本上是关节统计通道量化和信号量化程序。发现量化损耗随着发射天线的数量线性增加,因此MIMO-VQ随着MIMO的大小而尺度较差。在这一发现的激励下,我们提出了一种新型的基于模块化神经网络的方法,称为MNNET,在该方法中,整个网络由一组预定的ANN模块形成。 ANN模块设计的钥匙在于MNNET中平行干扰取消的整合,这线性地降低了沿馈送传播的干扰(或等效地降低发射 - 安妮娜的数量);因此,作为量化损失。我们的仿真结果表明,在各种情况下,MNNET方法在很大程度上以近乎最佳的性能提高了深度学习能力。只要MNNET已很好地模块化,就不需要在整个网络上应用学习过程,而是在模块化层面上应用。由于这个原因,MNNET具有比其他基于深度学习的MIMO检测方法要低得多的学习复杂性。
In this paper, we reveal that artificial neural network (ANN) assisted multiple-input multiple-output (MIMO) signal detection can be modeled as ANN-assisted lossy vector quantization (VQ), named MIMO-VQ, which is basically a joint statistical channel quantization and signal quantization procedure. It is found that the quantization loss increases linearly with the number of transmit antennas, and thus MIMO-VQ scales poorly with the size of MIMO. Motivated by this finding, we propose a novel modular neural network based approach, termed MNNet, where the whole network is formed by a set of pre-defined ANN modules. The key of ANN module design lies in the integration of parallel interference cancellation in the MNNet, which linearly reduces the interference (or equivalently the number of transmit-antennas) along the feed-forward propagation; and so as the quantization loss. Our simulation results show that the MNNet approach largely improves the deep-learning capacity with near-optimal performance in various cases. Provided that MNNet is well modularized, the learning procedure does not need to be applied on the entire network as a whole, but rather at the modular level. Due to this reason, MNNet has the advantage of much lower learning complexity than other deep-learning based MIMO detection approaches.