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首页> 外文期刊>Communications Letters, IEEE >Deep Learning-Based Precoder Design in MIMO Systems With Finite-Alphabet Inputs
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Deep Learning-Based Precoder Design in MIMO Systems With Finite-Alphabet Inputs

机译:具有有限字母输入的MIMO系统中基于深度学习的预编码设计

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摘要

It is a challenge to apply the precoder design maximizing the mutual information with finite-alphabet inputs to practical multiple-input multiple-output (MIMO) systems, because it needs to iteratively solve an optimization problem, which is difficult to satisfy the requirement of real time. This letter develops a deep learning based precoding scheme, which employs the property of deep neural network (DNN) as approximator of functions. Simulation results show that a DNN can accurately learn the input-output relationship of a nearly optimal precoder achieved by the traditional interior-point method (IPM); moreover, in different MIMO scenarios, a trained DNN of small size offers almost the same performance as the nearly optimal precoder, but with huge improvement in efficiency, especially in cases of higher modulation and more antennas. The improved efficiency makes it possible to be applied to practical communication systems.
机译:应用预编码器设计是一种挑战,可以使用有限字母输入为实际的多输入多输出(MIMO)系统来最大化相互信息,因为它需要迭代地解决优化问题,这很难满足真实的要求时间。这封信开发了基于深度学习的预编码方案,它采用深神经网络(DNN)的属性作为功能的近似器。仿真结果表明,DNN可以准确地学习通过传统的内部点法(IPM)实现的近最优预编码器的输入 - 输出关系;此外,在不同的MIMO情景中,小尺寸的训练有素的DNN提供与近乎最佳的预编码器相同的性能,但效率巨大提高,特别是在更高调制和更多天线的情况下。提高的效率使得可以应用于实际通信系统。

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