基于地雷的AWGN通道几何星座整形

Qian Wang, Xiuli Ji, L. Qian, Zilong Liu, Xinwei Du, P. Kam
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引用次数: 0

摘要

对于基于射频/激光的卫星系统和光学无线通信来说,使用高阶星座调制是提高频谱效率的必要条件。几何整形优化作为一种典型的星座整形方法,推动了通信容量和系统性能的提高。提出了一种基于互信息神经估计(MINE)的GS优化纯加性高斯白噪声(AWGN)信道中高阶星座的新方法,该方法利用深度神经网络(DNN)估计互信息(MI)值,并使MI值最大化以渐近逼近AWGN容量。该系统采用反向传播的方式对编码器和MINE网络进行训练,不需要训练解码器进行优化,从而避免了解码器带来的损失。仿真结果表明,基于mine的整形设计在MI值方面优于非整形M-ary正交调幅(QAM)。注意,容量增益随着M阶的增加而略有增加。此外,该方案可以在相位噪声和衰落信道等多种信道模型下进行星座设计,一旦与MINE中使用的信道模型相匹配,可以成为未来的研究课题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MINE-based Geometric Constellation Shaping in AWGN Channel
The use of high-order constellation modulations is imperative to improve the spectral efficiency, for both radio frequency/laser-based satellite systems and optical wireless communications. The geometric shaping (GS) optimization as one typical constellation shaping method drives the improvement of communication capacity and system performance. This paper presents a novel mutual information neural estimation (MINE)based GS method to optimize the high-order constellations in pure additive white Gaussian noise (AWGN) channel, which uses the deep neural network (DNN) to estimate the mutual information (MI) value and maximize the MI to approach the AWGN capacity asymptotically. The proposed system trains both the encoder and MINE networks by back propagation, and does not need to train a decoder for optimization and thus can avoid the loss caused by the decoder. Simulation results show that the MINE-based shaping design outperforms the unshaped M-ary quadrature amplitude modulation (QAM) in terms of MI values. Note that the capacity gain increases slightly as the order M increases. Furthermore, the proposed scheme is promising for constellation design in various channel models, such as the phase noise and the fading channels, once the channel model used in MINE is matched, which can be a future research topic.
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