SeqNet: Data-Driven PAPR Reduction via Sequence Classification

Hyeondeok Jang, Seowoo Jang, Yosub Park, Jungsoo Jung, Juho Lee, Sunghyun Choi
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引用次数: 2

Abstract

To fully exploit Terahertz spectrum for the upcoming 6G communications, peak-to-average power ratio (PAPR) reduction plays an important role to enhance power efficiency and extend communication coverage. In this paper, we address the PAPR reduction with a data-driven approach and propose a PAPR reduction neural network, SeqNet, with the aid of a deep learning technique. Inspired by the well-known selected mapping (SLM) scheme, SeqNet finds a phase sequence leading to low PAPR when multiplied to a given modulated symbol block. SeqNet classifies a modulated symbol block into one of phase sequences, which are designed not to affect BER (Bit Error Rate) performance. We also propose, Split-SeqNet which splits the symbol block into multiple segments and finds a phase sequence for each. We perform comparative study with various data-driven PAPR reduction approaches and simulation result shows that SeqNet achieves better PAPR performance than conventional auto-encoder-based scheme, tone-reservation based, DFT-s-OFDM, and OFDM by about 0.2 dB, 0.4 dB, 1.6 dB, and 3.4 dB, respectively, which can be converted into 4.3%, 8.7%, 40.1% and 104.4% improvement of the communication coverage.
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SeqNet:基于序列分类的数据驱动PAPR降低
为了在即将到来的6G通信中充分利用太赫兹频谱,降低峰值平均功率比(PAPR)对于提高功率效率和扩大通信覆盖范围具有重要作用。在本文中,我们用数据驱动的方法来解决PAPR减少问题,并在深度学习技术的帮助下提出了一个PAPR减少神经网络,SeqNet。受著名的选择映射(SLM)方案的启发,SeqNet找到了一个相序列,当乘以给定的调制符号块时,会导致低PAPR。SeqNet将一个调制符号块划分为一个相序列,这样就不会影响误码率的性能。我们还提出了Split-SeqNet,它将符号块分割成多个片段,并为每个片段找到一个相序列。与各种数据驱动的PAPR降低方法进行了比较研究,仿真结果表明,SeqNet的PAPR性能比传统的基于自编码器的方案、基于音调保留的方案、DFT-s-OFDM方案和OFDM方案分别提高了0.2 dB、0.4 dB、1.6 dB和3.4 dB,分别提高了4.3%、8.7%、40.1%和104.4%的通信覆盖率。
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