Training Terahertz Wireless Systems to Battle I/Q Imbalance

Alexandros-Apostolos A. Boulogeorgos, A. Alexiou
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Abstract

Due to the non-ideality of analog components, transceivers experience high levels of hardware imperfections, like in-phase and quadrature imbalance (IQI), which manifests itself as the mismatches of amplitude and phase between the I and Q branches. Unless proper mitigated, IQI has an important and negative impact on the reliability and efficiency of high-frequency and high-data-rate systems, such as terahertz wireless networks. Recognizing this, the current paper presents an intelligent transmitter (TX) and an intelligent receiver (RX) architecture that by employing machine learning (ML) methodologies is capable to fully-mitigate the impact of IQI without performing IQI coefficients estimation. They key idea lies on co-training the TX mapper’s and RX demapper in order to respectively design a constellation and detection scheme that takes accounts for IQI. Two training approaches are implemented, namely: i) conventional that requires a considerable amount of data for training, and ii) a reinforcement learning based one, which demands a shorter dataset in comparison to the former. The feasibility and efficiency of the proposed architecture and training approaches are validated through respective Monte Carlo simulations.
训练太赫兹无线系统对抗I/Q不平衡
由于模拟元件的非理想性,收发器经历了高水平的硬件缺陷,如同相和正交不平衡(IQI),其表现为I和Q支路之间的幅度和相位不匹配。除非得到适当的缓解,否则IQI会对高频和高数据速率系统(如太赫兹无线网络)的可靠性和效率产生重要的负面影响。认识到这一点,本文提出了一种智能发送器(TX)和智能接收器(RX)架构,通过采用机器学习(ML)方法,能够在不执行IQI系数估计的情况下完全减轻IQI的影响。他们的关键思想在于共同训练TX映射器和RX映射器,以便分别设计考虑IQI的星座和检测方案。实现了两种训练方法,即:i)需要大量数据进行训练的常规方法,以及ii)基于强化学习的方法,与前者相比,它需要更短的数据集。通过蒙特卡罗仿真验证了所提结构和训练方法的可行性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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