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Federated Dropout Learning for Hybrid Beamforming with Spatial Path Index Modulation in Multi-User Mmwave-Mimo Systems

机译:多用户MMWAVE-MIMO系统中具有空间路径索引调制的混合波束形成的联邦辍学学习

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Millimeter wave multiple-input multiple-output (mmWave-MIMO) systems with small number of radio-frequency (RF) chains have limited multiplexing gain. Spatial path index modulation (SPIM) is helpful in improving this gain by utilizing additional signal bits modulated by the indices of spatial paths. In this paper, we introduce model-based and model-free frameworks for beamformer design in multi-user SPIM-MIMO systems. We first design the beamformers via model-based manifold optimization algorithm. Then, we leverage federated learning (FL) with dropout learning (DL) to train a learning model on the local dataset of users, who estimate the beamformers by feeding the model with their channel data. The DL randomly selects different set of model parameters during training, thereby further reducing the transmission overhead compared to conventional FL. Numerical experiments show that the proposed framework exhibits higher spectral efficiency than the state-of-the-art SPIM-MIMO methods and mmWave-MIMO, which relies on the strongest propagation path. Furthermore, the proposed FL approach provides at least 10 times lower transmission overhead than the centralized learning techniques.
机译:毫米波多输入多输出(MMWAVE-MIMO)系统,少量射频(RF)链具有有限的多路复用增益。空间路径索引调制(SPIM)通过利用由空间路径的指标调制的附加信号比特来帮助提高该增益。在本文中,我们在多用户Spim-MIMO系统中引入了用于波束形成器设计的模型和无模型框架。我们首先通过基于模型的歧管优化算法设计波束形成器。然后,我们利用辍学学习(DL)利用联合学习(FL)来训练用户的当地数据集的学习模型,通过使用其信道数据馈送模型来估计波束形成器。 DL在训练期间随机选择不同的模型参数集,从而与传统FL相比,进一步降低了传输开销。数值实验表明,所提出的框架具有比最先进的尖端 - MIMO方法和MMWAVE-MIMO更高的光谱效率,这依赖于最强的传播路径。此外,所提出的流动提供比集中式学习技术更低的传输开销至少10倍。

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