Deep Receiver Architectures for Robust MIMO Rate Splitting Multiple Access

Dheeraj Raja Kumar;Carles Antón-Haro;Xavier Mestre
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Abstract

Machine Learning tools are becoming very powerful alternatives to improve the robustness of wireless communication systems. Signal processing procedures that tend to collapse in the presence of model mismatches can be effectively improved and made robust by incorporating the selective use of data-driven techniques. This paper explores the use of neural network (NN)-based receivers to improve the reception of a Rate Splitting Multiple Access (RSMA) system. The intention is to explore several alternatives to conventional successive interference cancellation (SIC) techniques, which are known to be ineffective in the presence of channel state information (CSI) and model errors. The focus is on NN-based architectures that do not need to be retrained at each channel realization. The main idea is to replace some of the basic operations in a conventional multi-antenna SIC receiver by their NN-based equivalents, following a hybrid Model/Data-driven based approach that preserves the main procedures in the model-based signal demodulation chain. Three different architectures are explored along with their performance and computational complexity, characterized under different degrees of model uncertainty, including imperfect channel state information and non-linear channels. We evaluate the performance of data-driven architectures in overloaded scenario to analyze its effectiveness against conventional benchmarks. The study dictates that a higher degree of robustness of transceiver can be achieved, provided the neural architecture is well-designed and fed with the right information.
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鲁棒MIMO分频多址的深度接收机架构
机器学习工具正在成为提高无线通信系统健壮性的非常强大的替代方案。在模型不匹配的情况下,信号处理程序往往会崩溃,通过结合选择性使用数据驱动技术,可以有效地改进和增强信号处理程序的鲁棒性。本文探讨了使用基于神经网络(NN)的接收器来改善速率分割多址(RSMA)系统的接收。目的是探索几种替代传统连续干扰消除(SIC)技术的方法,这些技术在存在信道状态信息(CSI)和模型误差时是无效的。重点是基于神经网络的架构,不需要在每个通道实现时重新训练。其主要思想是将传统多天线SIC接收器中的一些基本操作替换为基于神经网络的等效操作,遵循基于模型/数据驱动的混合方法,保留基于模型的信号解调链中的主要程序。研究了三种不同的体系结构及其性能和计算复杂度,这些体系结构具有不同程度的模型不确定性,包括不完全信道状态信息和非线性信道。我们评估了数据驱动架构在过载场景下的性能,以分析其与传统基准测试的有效性。研究表明,如果神经网络结构设计良好,并提供正确的信息,则可以实现更高程度的收发器鲁棒性。
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