端到端通信系统中可训练星座的神经需求器评估

Nazmul Islam, Seokjoo Shin
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引用次数: 1

摘要

传统的正交调幅(M-QAM)星座设计,如矩形星座,是基于数学数据和估计信道模型来实现通信系统中传输位的等概率误差。然而,这些设计是次优的,因为它们不接受实际的信道条件或系统性能,因为它们的固定晶格结构,并且它们的性能随着每个符号的比特数的增加而下降。基于深度学习(DL)的端到端通信系统可以用来规避这些挑战,以获得更好的整体性能。这种系统被实现为深度神经网络(DNN)自编码器,其中可训练的星座和神经分解器(ND)可以共同训练,以实现更高数据速率通信系统的最佳星座设计。在本研究中,我们评估了两种实现可训练星座设计的nd的性能,并将它们与端到端通信系统中的两种基线解映射算法进行了比较。在分析中,nd在更高的每符号比特传输方面优于基线demappers,与基线demappers相比,1024-QAM对应的可训练星座设计获得了0.8 dB的最高增益。
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Evaluation of Neural Demappers for Trainable Constellation in an End-to-End Communication System
Conventional M-ary Quadrature Amplitude Modulation (M-QAM) constellation designs such as rectangular constellation, are based on mathematical data and estimated channel models to achieve equal probability of error for transmitted bits in communication systems. However, these designs are suboptimal as they are not receptive to practical channel conditions or system performance due to their fixed lattice structure, and their performance degrades with a higher number of bits per symbol. Deep learning (DL) based end-to-end communication systems can be utilized to circumvent these challenges for better overall performance. Such systems are implemented as deep neural network (DNN) autoencoders, where trainable constellations and neural demappers (ND) can be jointly trained to achieve optimum constellation design for a higher data rate communication system. In this study, we evaluate the performance of two NDs that implement trainable constellation design and compared them with two baseline demapping algorithms in an end-to-end communication system. In the analysis, the NDs outperformed the baseline demappers for higher bits per symbol transmission, and trainable constellation design corresponding to 1024-QAM achieved the highest gain of 0.8 dB compared to the baseline demappers.
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