2024
DOI: 10.1109/access.2024.3405192
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Deep Learning Multi-User Detection for PD-SCMA

Simon Chege,
Tom Walingo

Abstract: The performance of hybrid multi-radio access technologies depends on the sufficiency of the multi-user detection (MUD) at the receiver. For optimal performance of the hybrid power-domain sparse code multiple access (PD-SCMA), robust detection strategies are necessary to alleviate MUD complexity and reduce computational time. Deep learning (DL) based MUD techniques are the most promising as they can detect all symbols of an overloaded PD-SCMA without requiring additional operations of channel estimation and int… Show more

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