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Model-Driven Deep Learning for Massive Multiuser MIMO Constant Envelope Precoding

机译:大型多用户MIMO恒定信封预编码模型驱动深度学习

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摘要

Constant envelope (CE) precoding design is of great interest for massive multiuser multi-input multi-output systems because it can significantly reduce hardware cost and power consumption. However, existing CE precoding algorithms are hindered by excessive computational overhead. In this letter, a novel model-driven deep learning (DL)-based network that combines DL with conjugate gradient algorithm is proposed for CE precoding. Specifically, the original iterative algorithm is unfolded and parameterized by trainable variables. With the proposed architecture, the variables can be learned efficiently from training data through unsupervised learning approach. Thus, the proposed network learns to obtain the search step size and adjust the search direction. Simulation results demonstrate the superiority of the proposed network in terms of multiuser interference suppression capability and computational overhead.
机译:恒定的信封(CE)预编码设计对于大型多用户多输入多输出系统具有很大的兴趣,因为它可以显着降低硬件成本和功耗。然而,通过过度计算开销阻碍了现有的CE预编码算法。在这封信中,提出了一种与共轭梯度算法结合DL的基础模型驱动的深度学习(DL)网络,用于CE预编码。具体地,原始迭代算法通过可培训变量展开和参数化。利用所提出的架构,可以通过无监督的学习方法从培训数据学习变量。因此,所提出的网络学习获得搜索步长并调整搜索方向。仿真结果表明,在多用户干扰抑制能力和计算开销方面展示了所提出的网络的优越性。

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