基于神经网络的5G新无线电免搜索预编码器选择

Talha Akyıldız, T. Duman
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引用次数: 3

摘要

基于5G新无线电(5G- nr)采用大码本的特点,提出了一种基于神经网络的无搜索预编码器选择方法。与传统的选择算法不同,该方法不需要显式的码本搜索。相反,它的目标是直接使用神经网络找到最大化相应信道容量的预编码器矩阵索引。该网络使用具有底层通道统计信息的大量模拟数据进行离线训练;然而,实际的选择算法是基于神经网络的简单计算,因此可以实时实现。我们证明了所提出的无搜索选择算法是高效的,即它的性能非常接近于码本中的最优预编码器,而其复杂性显着降低。用5G-NR信道模型进行的仿真也证实了这些观察结果。我们还表明,对训练好的神经网络进行修剪,可以在系统性能降低很小的情况下实现进一步的复杂性降低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Search-Free Precoder Selection for 5G New Radio using Neural Networks
We propose a search-free precoder selection method with neural networks motivated by the fact that large codebook sizes are adopted in 5G New Radio (5G-NR). The proposed method does not require an explicit codebook search unlike the traditional selection algorithms. Instead, it aims at finding the precoder matrix index that maximizes the corresponding channel capacity using a neural network directly. The network is trained off-line using extensive simulated data with the underlying channel statistics; however, the actual selection algorithm is based on simple calculations with the neural network, hence it is feasible for real time implementation. We demonstrate that the proposed search-free selection algorithm is highly efficient, i.e., it results in a performance very close to optimal precoder in the codebook while its complexity is significantly lower. Simulations with realistic channel models of 5G-NR corroborate these observations as well. We also show that pruning of the trained neural network gives a way to achieve further complexity reduction with a very small reduction in the system performance.
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