D2D Mobile Relaying Meets NOMA –Part I:A Biform Game Analysis

Structureless communications such as Device-to-Device (D2D) relaying are undeniably of paramount importance to improving the performance of today’s mobile networks. Such a communication paradigm requires implementing a certain level of intelligence at device level, allowing to interact with the envi...

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Main Authors: Safaa Driouech, Essaid Sabir, Mounir Ghogho, El-Mehdi Amhoud
Format: Article
Language:English
Published: MDPI AG 2021-01-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/21/3/702
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spelling doaj-db80fa9aee234d4ab69f1420060e23b32021-01-21T00:06:37ZengMDPI AGSensors1424-82202021-01-012170270210.3390/s21030702D2D Mobile Relaying Meets NOMA –Part I:A Biform Game AnalysisSafaa Driouech0Essaid Sabir1Mounir Ghogho2El-Mehdi Amhoud3NEST Research Group, LRI Lab., ENSEM, Hassan II University of Casablanca, Casablanca 20000, MoroccoNEST Research Group, LRI Lab., ENSEM, Hassan II University of Casablanca, Casablanca 20000, MoroccoTICLab, International University of Rabat, Rabat 11100, MoroccoSchool of Computer Science, Mohammed VI Polytechnic University, Ben Guerir 43150, MoroccoStructureless communications such as Device-to-Device (D2D) relaying are undeniably of paramount importance to improving the performance of today’s mobile networks. Such a communication paradigm requires implementing a certain level of intelligence at device level, allowing to interact with the environment and select proper decisions. However, decentralizing decision making sometimes may induce some paradoxical outcomes resulting, therefore, in a performance drop, which sustains the design of self-organizing, yet efficient systems. Here, each device decides either to directly connect to the eNodeB or get access via another device through a D2D link. Given the set of active devices and the channel model, we derive the outage probability for both cellular link and D2D link, and compute the system throughput. We capture the device behavior using a biform game perspective. In the first part of this article, we analyze the pure and mixed Nash equilibria of the induced game where each device seeks to maximize its own throughput. Our framework allows us to analyse and predict the system’s performance. The second part of this article is devoted to implement two Reinforcement Learning (RL) algorithms enabling devices to self-organize themselves and learn their equilibrium pure/mixed strategies, in a fully distributed fashion. Simulation results show that offloading the network by means of D2D-relaying improves per device throughput. Moreover, detailed analysis on how the network parameters affect the global performance is provided.https://www.mdpi.com/1424-8220/21/3/702D2D-relaying5G/B5G/6Gbiform gameself-organized devicesNash equilibriumdistributed reinforcement learning
collection DOAJ
language English
format Article
sources DOAJ
author Safaa Driouech
Essaid Sabir
Mounir Ghogho
El-Mehdi Amhoud
spellingShingle Safaa Driouech
Essaid Sabir
Mounir Ghogho
El-Mehdi Amhoud
D2D Mobile Relaying Meets NOMA –Part I:A Biform Game Analysis
Sensors
D2D-relaying
5G/B5G/6G
biform game
self-organized devices
Nash equilibrium
distributed reinforcement learning
author_facet Safaa Driouech
Essaid Sabir
Mounir Ghogho
El-Mehdi Amhoud
author_sort Safaa Driouech
title D2D Mobile Relaying Meets NOMA –Part I:A Biform Game Analysis
title_short D2D Mobile Relaying Meets NOMA –Part I:A Biform Game Analysis
title_full D2D Mobile Relaying Meets NOMA –Part I:A Biform Game Analysis
title_fullStr D2D Mobile Relaying Meets NOMA –Part I:A Biform Game Analysis
title_full_unstemmed D2D Mobile Relaying Meets NOMA –Part I:A Biform Game Analysis
title_sort d2d mobile relaying meets noma –part i:a biform game analysis
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2021-01-01
description Structureless communications such as Device-to-Device (D2D) relaying are undeniably of paramount importance to improving the performance of today’s mobile networks. Such a communication paradigm requires implementing a certain level of intelligence at device level, allowing to interact with the environment and select proper decisions. However, decentralizing decision making sometimes may induce some paradoxical outcomes resulting, therefore, in a performance drop, which sustains the design of self-organizing, yet efficient systems. Here, each device decides either to directly connect to the eNodeB or get access via another device through a D2D link. Given the set of active devices and the channel model, we derive the outage probability for both cellular link and D2D link, and compute the system throughput. We capture the device behavior using a biform game perspective. In the first part of this article, we analyze the pure and mixed Nash equilibria of the induced game where each device seeks to maximize its own throughput. Our framework allows us to analyse and predict the system’s performance. The second part of this article is devoted to implement two Reinforcement Learning (RL) algorithms enabling devices to self-organize themselves and learn their equilibrium pure/mixed strategies, in a fully distributed fashion. Simulation results show that offloading the network by means of D2D-relaying improves per device throughput. Moreover, detailed analysis on how the network parameters affect the global performance is provided.
topic D2D-relaying
5G/B5G/6G
biform game
self-organized devices
Nash equilibrium
distributed reinforcement learning
url https://www.mdpi.com/1424-8220/21/3/702
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