| Literature DB >> 34069198 |
Mariem Hmila1, Manuel Fernández-Veiga1, Miguel Rodríguez-Pérez1, Sergio Herrería-Alonso1.
Abstract
Non-orthogonal multiple access (NOMA) techniques have emerged in the past years as a solution to approximate the throughput performance of wireless communications systems to their theoretical capacity region. We consider in this paper an optimization-based model for multicast device-to-device (MD2D) communications where the channels are not orthogonal and may be (partially or fully) shared among the transmitters in each cluster. This setting leads naturally to the introduction of NOMA transmitters and receivers who use successive interference cancellation (SIC) to separate the superposed signals. To analyze the role of NOMA in MD2D, its performance impact, potential performance gains and possible shortcomings, we formulate a model that includes SIC operations in the decoders, so that higher rates can be attained when several sources transmit on the same channel(s). We also investigate the energy efficiency of the network (global and max-min) through a dynamic power control algorithm and present a centralized and a semi-distributed solution to these optimization problems. Through numerical simulations, we show that NOMA is able to improve both the sum-rate and the max-min rate of a MD2D network even from a small degree of resource sharing. Furthermore, these gains also improve the global energy efficiency on the network, but not always the max-min energy efficiency of the devices.Entities:
Keywords: 5G and beyond; multicast device-to-device communication; non-orthogonal communications
Year: 2021 PMID: 34069198 PMCID: PMC8221418 DOI: 10.3390/s21103436
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
D2D pair/groups, MD2D and NOMA: State of the art.
| Ref. | Scenario | Approach | Model | Problem | Objective | NOMA |
|---|---|---|---|---|---|---|
| [ | Dedicated CUs | Optimization | D2D pair | PC,RA | D2D sum rate | CU |
| [ | Distributed Groups | Matching Theory | D2D group | PC,RA | Energy consumption, delay | CU |
| [ | Distributed Groups | Optimization | D2D pair | RA,PC | Min transmission power | D2D + CUs |
| [ | Dedicated CUs | Graph Theory | D2D group | PC,RA | D2D EE | D2D |
| [ | Distributed Groups | Match Theory | D2D group | RA | Network sum rate | D2D + CUs |
| [ | Dedicated CUs | Optimization | D2D pair | RA + | System sum rate | CU |
| Mode Selection | ||||||
| [ | Dedicated CUs | Matching Theory | D2D group | RA | System sum rate | D2D |
| [ | Dedicated CUs | Game Theory | D2D group | RA | CUs throughput | D2D |
| [ | Dedicated CUs | Matching Theory | D2D group | PC,RA | Maximum users SINR | D2D |
| [ | Dedicated CUs | Hungarian Algorithm | D2D pairs | PC,RA | D2D energy | D2D |
Figure 1System model.
Figure 2Communications architecture for the NOMA-SIC MD2D network.
Simulation parameters.
| Parameter | Value |
|---|---|
| Cell radius | 500 |
| Reuse factor ( |
|
| Network density | |
| Split factor ( |
|
| Path loss exponent |
|
| Minimum transmission rate |
|
| Number of CU users ( |
|
| Maximum transmission powers |
|
| Number of MD2D groups ( |
|
| Number of receivers |
|
| Circuit power | 10 |
Figure 3Global energy efficiency and aggregated rate using KNN clustering.
Figure 4and max-min rate for the shared CUs case using DL clustering.
Figure 5and max-min rate for the general case using DL clustering.
Figure 6Total consumed power and interference level per coalition with NOMA and the distributed coalition game.
Figure 7Global energy efficiency and aggregated rate with NOMA and the distributed coalition game for the general case with different group sizes.
Figure 8Global energy efficiency and aggregated rate with the matching theory based solution vs. NOMA for the general case.
Figure 9Global energy efficiency and aggregated rate with the matching theory based solution vs. NOMA for the shared CUs case.
Figure 10and max-min rate with the proposed matching theory based solution vs. NOMA for the shared CUs case.