频谱高效智能混合波束形成的深度学习框架

Umair Yousuf, Sambhavi, Abdul Haq Nalband, Mohammed Riyaz Ahmed
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摘要

下一代无线网络有吸引力的用例要求更广泛的覆盖范围和高度可靠的连接。波束成形技术是一种很有前途的候选技术,可以极大地帮助满足这些要求。在大规模多输入多输出(MIMO)系统中,传统的数字波束形成方法造成了巨大的成本和硬件复杂性。通过使用比传统数字波束形成方法更少的射频链,混合波束形成降低了所需的硬件。然而,由于硬件消耗的限制,联合优化问题很难得到开放的最优解。我们提出了一种混合波束形成器,该波束形成器以深度学习为基础,学习最大化频谱效率。为了获得最佳波束形成权重,将信道状态信息(CSI)提供给深度学习模型。采用完美和不完美CSI对混合波束形成方案进行了验证。仿真结果表明,该方法在降低成本和硬件复杂度的同时,优于现有的统计方法。对较差的CSI也有较强的稳健性。
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Deep Learning Framework for Spectral Efficient Intelligent Hybrid Beamforming
Next-generation wireless networks’ attractive use cases call for more extensive coverage and highly dependable connectivity. A promising candidate that considerably helps to fulfil these requirements is beamforming. In massive Multiple-Input-Multiple-Output (MIMO) systems, the conventional digital beamforming method results in significant costs and hardware complexity. By using fewer RF chains than the conventional digital beamforming method, hybrid beamforming lowers the hardware needed. However, due to the restrictions on hardware consumption, it is difficult to arrive at the open optimal solution for joint optimization problems. We suggest a hybrid beamformer that learns to maximize spectral efficiency using deep learning as its foundation. To achieve the optimal beamforming weights, the channel state information (CSI) is supplied into the deep learning model. Both perfect and imperfect CSI are used to validate the proposed hybrid beamforming scheme. Simulation results reveal that the proposed method outperforms the current statistical approaches while lowering cost and hardware complexity. It is also more robust to poor CSI.
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