Network Slicing for eMBB and mMTC with NOMA and Space Diversity Reception
Eduardo Noboro Tominaga, Hirley Alves, Onel Luiz Alcaraz L\'opez,, Richard Demo Souza, Jo\~ao Luiz Rebelatto, Matti Latva-Aho

TL;DR
This paper investigates the coexistence of eMBB and mMTC services in 5G networks using network slicing and NOMA, demonstrating that non-orthogonal slicing with multiple antennas enhances data rates and device connectivity.
Contribution
It introduces a combined approach of network slicing and NOMA with space diversity for efficient coexistence of diverse 5G services, highlighting performance improvements.
Findings
Non-orthogonal slicing outperforms orthogonal slicing with multiple antennas.
Multiple receive antennas significantly improve performance in non-orthogonal slicing.
Non-orthogonal slicing achieves higher data rates and device connectivity as antennas increase.
Abstract
In this work we study the coexistence in the same Radio Access Network (RAN) of two generic services present in the Fifth Generation (5G) of wireless communication systems: enhanced Mobile BroadBand (eMBB) and massive Machine-Type Communications (mMTC). eMBB services are requested for applications that demand extremely high data rates and moderate requirements on latency and reliability, whereas mMTC enables applications for connecting a massive number of low-power and low-complexity devices. The coexistence of both services is enabled by means of network slicing and Non-Orthogonal Multiple Access (NOMA) with Successive Interference Cancellation (SIC) decoding. Under the orthogonal slicing, the radio resources are exclusively allocated to each service, while in the non-orthogonal slicing the traffics from both services overlap in the same radio resources. We evaluate the uplink…
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Taxonomy
Methodstravel james
