2024
DOI: 10.54021/seesv5n2-325
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Deep learning-driven channel coding: enhancing performance in LDS-CDMA and NOMA systems

Bahidja Boukenadil,
Bendjillali Ridha Ilyas,
Mohammed Sofiane Bendelhoum
et al.

Abstract: This paper presents an innovative approach to channel coding for LDS-CDMA and NOMA systems through the integration of deep learning techniques. By leveraging neural networks within the channel coding process, the proposed model achieves substantial improvements in error correction, leading to a significant reduction in Bit Error Rate (BER) and computational complexity when compared to traditional methods such as Unpunctured Turbo Trellis Coded Modulation (UTTCM). The results demonstrate that the deep learning-… Show more

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