基于双驱动学习的多输入多输出信号检测 无人机空对地通信

Drones Pub Date : 2024-05-02 DOI:10.3390/drones8050180
Haihan Li , Yongming He , Shuntian Zheng , Fan Zhou , Hongwen Yang 
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引用次数: 0

摘要

无人飞行器(UAV)空对地(AG)通信在即将到来的第六代蜂窝网络(6G)不断发展的空-空-地一体化网络中发挥着至关重要的作用。大规模多输入多输出(MIMO)系统的集成对于确保通信技术的最佳性能至关重要。本文针对无人机 AG 通信的毫米波(mm-wave)大规模 MIMO 符号检测提出了一种基于双驱动学习的新型网络。我们的主要贡献在于所提出的方法将数据驱动的符号校正网络与模型驱动的正交近似消息传递网络(OAMP-Net)相结合。通过联合训练,双驱动网络减少了通过模型驱动 OAMP-Net 的每次迭代传播的符号检测错误。数值结果表明,在各种噪声功率和信道估计误差条件下,双驱动检测器优于传统的最小均方误差 (MMSE)、正交近似消息传递 (OAMP) 和 OAMP-Net 检测器。与 MMSE 和 OAMP-Net 检测器相比,双驱动 MIMO 检测器的信噪比 (SNR) 要求低 2-3 dB,当信道估计误差为 -30 dB 时,误码率 (BER) 可达到 1×10-2。此外,双驱动 MIMO 检测器对信道估计误差的容忍度提高了 2-3 dB,误码率达到 1×10-3。
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Dual-driven Learning-Based Multiple-Input Multiple-Output Signal Detection Unmanned Aerial Vehicle Air-to-Ground Communications
Unmanned aerial vehicle (UAV) air-to-ground (AG) communication plays a critical role in the evolving space–air–ground integrated network of the upcoming sixth-generation cellular network (6G). The integration of massive multiple-input multiple-output (MIMO) systems has become essential for ensuring optimal performing communication technologies. This article presents a novel dual-driven learning-based network for millimeter-wave (mm-wave) massive MIMO symbol detection of UAV AG communications. Our main contribution is that the proposed approach combines a data-driven symbol-correction network with a model-driven orthogonal approximate message passing network (OAMP-Net). Through joint training, the dual-driven network reduces symbol detection errors propagated through each iteration of the model-driven OAMP-Net. The numerical results demonstrate the superiority of the dual-driven detector over the conventional minimum mean square error (MMSE), orthogonal approximate message passing (OAMP), and OAMP-Net detectors at various noise powers and channel estimation errors. The dual-driven MIMO detector exhibits a 2–3 dB lower signal-to-noise ratio (SNR) requirement compared to the MMSE and OAMP-Net detectors to achieve a bit error rate (BER) of 1×10−2 when the channel estimation error is −30 dB. Moreover, the dual-driven MIMO detector exhibits an increased tolerance to channel estimation errors by 2–3 dB to achieve a BER of 1×10−3.
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