PAPR Reduction based on Deep Learning Autoencoder in Coherent Optical OFDM Systems
This paper presents an innovative approach to reducing Peak-to-Average Power Ratio (PAPR) in Coherent Optical Orthogonal Frequency Division Multiplexing (CO-OFDM) systems. The proposed deep learning autoencoder-based model eliminates the computational complexity of existing PAPR reduction techniques...
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Zusammenfassung: | This paper presents an innovative approach to reducing Peak-to-Average Power
Ratio (PAPR) in Coherent Optical Orthogonal Frequency Division Multiplexing
(CO-OFDM) systems. The proposed deep learning autoencoder-based model
eliminates the computational complexity of existing PAPR reduction techniques,
such as Selective Mapping (SLM), by leveraging a novel decoder architecture at
the receiver. In addition, No side information is needed in our approach,
unlike SLM which requires knowledge of the PAPR distribution. Simulation
results demonstrate significant improvements in both PAPR reduction and Bit
Error Rate (BER) performance compared to traditional techniques. It achieves
error-free transmission with over 10 dB PAPR reduction compared to unmitigated
and 1 dB gain over SLM technique. Furthermore, our approach exhibits robustness
against noise and nonlinearity effects, enabling reliable transmission over
optical channels with varying levels of impairment. The proposed technique has
far-reaching implications for next-generation optical communication systems,
where efficient PAPR reduction is crucial for ensuring reliable data transfer. |
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DOI: | 10.48550/arxiv.2408.14248 |