A Distributed SON-Based User-Centric Backhaul Provisioning Scheme

5G definition and standardization projects are well underway, and governing characteristics and major challenges have been identified. A critical network element impacting the potential performance of 5G networks is the backhaul, which is expected to expand in length and breadth to cater to the expo...

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Main Authors: Mona Jaber, Muhammad Ali Imran, Rahim Tafazolli, Anvar Tukmanov
Format: Article
Language:English
Published: IEEE 2016-01-01
Series:IEEE Access
Subjects:
SON
Online Access:https://ieeexplore.ieee.org/document/7468528/
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spelling doaj-13bee0a655564fcf9614f6b484bf06242021-03-29T19:39:33ZengIEEEIEEE Access2169-35362016-01-0142314233010.1109/ACCESS.2016.25669587468528A Distributed SON-Based User-Centric Backhaul Provisioning SchemeMona Jaber0https://orcid.org/0000-0002-0908-3207Muhammad Ali Imran1Rahim Tafazolli2Anvar Tukmanov3Home of 5G Innovation Centre, Institute for Communication Systems, University of Surrey, Guildford, U.K.Home of 5G Innovation Centre, Institute for Communication Systems, University of Surrey, Guildford, U.K.Home of 5G Innovation Centre, Institute for Communication Systems, University of Surrey, Guildford, U.K.BT Research and Innovation, Ipswich, U.K.5G definition and standardization projects are well underway, and governing characteristics and major challenges have been identified. A critical network element impacting the potential performance of 5G networks is the backhaul, which is expected to expand in length and breadth to cater to the exponential growth of small cells while offering high throughput in the order of gigabit per second and less than 1 ms latency with high resilience and energy efficiency. Such performance may only be possible with direct optical fiber connections that are often not available country-wide and are cumbersome and expensive to deploy. On the other hand, a prime 5G characteristic is diversity, which describes the radio access network, the backhaul, and also the types of user applications and devices. Thus, we propose a novel, distributed, self-optimized, end-to-end user-cell-backhaul association scheme that intelligently associates users with candidate cells based on corresponding dynamic radio and backhaul conditions while abiding by users' requirements. Radio cells broadcast multiple bias factors, each reflecting a dynamic performance indicator (DPI) of the end-to-end network performance such as capacity, latency, resilience, energy consumption, and so on. A given user would employ these factors to derive a user-centric cell ranking that motivates it to select the cell with radio and backhaul performance that conforms to the user requirements. Reinforcement learning is used at the radio cells to optimise the bias factors for each DPI in a way that maximise the system throughput while minimising the gap between the users' achievable and required end-to-end quality of experience (QoE). Preliminary results show considerable improvement in users' QoE and cumulative system throughput when compared with the state-of-the-art user-cell association schemes.https://ieeexplore.ieee.org/document/7468528/Backhaulfronthauluser-centricuser-cell associationSONreinforcement learning
collection DOAJ
language English
format Article
sources DOAJ
author Mona Jaber
Muhammad Ali Imran
Rahim Tafazolli
Anvar Tukmanov
spellingShingle Mona Jaber
Muhammad Ali Imran
Rahim Tafazolli
Anvar Tukmanov
A Distributed SON-Based User-Centric Backhaul Provisioning Scheme
IEEE Access
Backhaul
fronthaul
user-centric
user-cell association
SON
reinforcement learning
author_facet Mona Jaber
Muhammad Ali Imran
Rahim Tafazolli
Anvar Tukmanov
author_sort Mona Jaber
title A Distributed SON-Based User-Centric Backhaul Provisioning Scheme
title_short A Distributed SON-Based User-Centric Backhaul Provisioning Scheme
title_full A Distributed SON-Based User-Centric Backhaul Provisioning Scheme
title_fullStr A Distributed SON-Based User-Centric Backhaul Provisioning Scheme
title_full_unstemmed A Distributed SON-Based User-Centric Backhaul Provisioning Scheme
title_sort distributed son-based user-centric backhaul provisioning scheme
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2016-01-01
description 5G definition and standardization projects are well underway, and governing characteristics and major challenges have been identified. A critical network element impacting the potential performance of 5G networks is the backhaul, which is expected to expand in length and breadth to cater to the exponential growth of small cells while offering high throughput in the order of gigabit per second and less than 1 ms latency with high resilience and energy efficiency. Such performance may only be possible with direct optical fiber connections that are often not available country-wide and are cumbersome and expensive to deploy. On the other hand, a prime 5G characteristic is diversity, which describes the radio access network, the backhaul, and also the types of user applications and devices. Thus, we propose a novel, distributed, self-optimized, end-to-end user-cell-backhaul association scheme that intelligently associates users with candidate cells based on corresponding dynamic radio and backhaul conditions while abiding by users' requirements. Radio cells broadcast multiple bias factors, each reflecting a dynamic performance indicator (DPI) of the end-to-end network performance such as capacity, latency, resilience, energy consumption, and so on. A given user would employ these factors to derive a user-centric cell ranking that motivates it to select the cell with radio and backhaul performance that conforms to the user requirements. Reinforcement learning is used at the radio cells to optimise the bias factors for each DPI in a way that maximise the system throughput while minimising the gap between the users' achievable and required end-to-end quality of experience (QoE). Preliminary results show considerable improvement in users' QoE and cumulative system throughput when compared with the state-of-the-art user-cell association schemes.
topic Backhaul
fronthaul
user-centric
user-cell association
SON
reinforcement learning
url https://ieeexplore.ieee.org/document/7468528/
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