The content introduces innovative frameworks for coherent and non-coherent schemes in grant-free NOMA systems. It discusses the challenges faced by traditional techniques and highlights the advantages of the proposed deep learning-assisted parallel interference cancellation approach. The simulations demonstrate superior performance over existing methods.
The paper proposes three frameworks based on parallel interference cancellation enhanced with deep learning for grant-free NOMA systems. These frameworks aim to improve activity detection, channel estimation, and data detection in both coherent and non-coherent schemes. By integrating deep learning into the process, the proposed approach shows enhanced performance and lower computational complexity compared to traditional techniques.
Para outro idioma
do conteúdo fonte
arxiv.org
Principais Insights Extraídos De
by Yongjeong Oh... às arxiv.org 03-13-2024
https://arxiv.org/pdf/2403.07255.pdfPerguntas Mais Profundas