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The Extended SLM Combined Autoencoder of the PAPR Reduction Scheme in DCO-OFDM Systems

机译:DCO-OFDM系统中PAPR减少方案的扩展SLM组合Autoencoder

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摘要

End-to-end learning in optical communication systems is a promising technique to solve difficult communication problems, especially for peak to average power ratio (PAPR) reduction in orthogonal frequency division multiplexing (OFDM) systems. The less complex, highly adaptive hardware and advantages in the analysis of unknown or complex channels make deep learning a valid tool to improve system performance. In this paper, we propose an autoencoder network combined with extended selected mapping methods (ESLM-AE) to reduce the PAPR for the DC-biased optical OFDM system and to minimize the bit error rate (BER). The constellation mapping/de-mapping of the transmitted symbols and the phase factor of each subcarrier are acquired and optimized adaptively by training the autoencoder with a combined loss function. In the loss function, both the PAPR and BER performance are taken into account. The simulation results show that a significant PAPR reduction of more than 10 dB has been achieved by using the ESLM-AE scheme in terms of the complementary cumulative distribution function. Furthermore, the proposed scheme exhibits better BER performance compared to the standard PAPR reduction methods.
机译:光学通信系统的端到端学习是解决困难通信问题的有希望的技术,特别是对于峰值到平均功率比(PAPR)减小正交频分复用(OFDM)系统。在分析未知或复杂通道的分析中较差,高度自适应的硬件和优势使得深入了解有效的工具来提高系统性能。在本文中,我们提出了一种与扩展所选择的映射方法(ESLM-AE)组合的AutoEncoder网络,以减少DC偏置光学OFDM系统的PAPR,并最小化误码率(BER)。通过用组合损耗函数训练AutoEncoder来获取和优化每个子载波的星座映射/去映射和每个子载波的相位因子。在损失功能中,考虑PAPR和BER表现。仿真结果表明,通过在互补累积分布函数方面,通过使用ESLM-AE方案实现了大于10dB的显着PAPR降低。此外,与标准PAPR减少方法相比,所提出的方案表现出更好的BER性能。

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