DIANA: A Machine Learning Mechanism for Adjusting the TDD Uplink-Downlink Configuration in XG-PON-LTE Systems

Modern broadband hybrid optical-wireless access networks have gained the attention of academia and industry due to their strategic advantages (cost-efficiency, huge bandwidth, flexibility, and mobility). At the same time, the proliferation of Software Defined Networking (SDN) enables the efficient r...

Full description

Bibliographic Details
Main Authors: Panagiotis Sarigiannidis, Antonios Sarigiannidis, Ioannis Moscholios, Piotr Zwierzykowski
Format: Article
Language:English
Published: Hindawi Limited 2017-01-01
Series:Mobile Information Systems
Online Access:http://dx.doi.org/10.1155/2017/8198017
id doaj-a6e331d0d84148cb9af6e8aeb8fb4653
record_format Article
spelling doaj-a6e331d0d84148cb9af6e8aeb8fb46532021-07-02T03:00:22ZengHindawi LimitedMobile Information Systems1574-017X1875-905X2017-01-01201710.1155/2017/81980178198017DIANA: A Machine Learning Mechanism for Adjusting the TDD Uplink-Downlink Configuration in XG-PON-LTE SystemsPanagiotis Sarigiannidis0Antonios Sarigiannidis1Ioannis Moscholios2Piotr Zwierzykowski3Department of Informatics and Telecommunications Engineering, University of Western Macedonia, 501 00 Kozani, GreeceDepartment of Economics, Democritus University of Thrace, University Campus, 691 00 Komotini, GreeceDepartment of Informatics and Telecommunications, University of Peloponnese, 221 00 Tripoli, GreeceFaculty of Electronics and Telecommunications, Poznań University of Technology, 60-965 Poznań, PolandModern broadband hybrid optical-wireless access networks have gained the attention of academia and industry due to their strategic advantages (cost-efficiency, huge bandwidth, flexibility, and mobility). At the same time, the proliferation of Software Defined Networking (SDN) enables the efficient reconfiguration of the underlying network components dynamically using SDN controllers. Hence, effective traffic-aware schemes are feasible in dynamically determining suitable configuration parameters for advancing the network performance. To this end, a novel machine learning mechanism is proposed for an SDN-enabled hybrid optical-wireless network. The proposed architecture consists of a 10-gigabit-capable passive optical network (XG-PON) in the network backhaul and multiple Long Term Evolution (LTE) radio access networks in the fronthaul. The proposed mechanism receives traffic-aware knowledge from the SDN controllers and applies an adjustment on the uplink-downlink configuration in the LTE radio communication. This traffic-aware mechanism is capable of determining the most suitable configuration based on the traffic dynamics in the whole hybrid network. The introduced scheme is evaluated in a realistic environment using real traffic traces such as Voice over IP (VoIP), real-time video, and streaming video. According to the obtained numerical results, the proposed mechanism offers significant improvements in the network performance in terms of latency and jitter.http://dx.doi.org/10.1155/2017/8198017
collection DOAJ
language English
format Article
sources DOAJ
author Panagiotis Sarigiannidis
Antonios Sarigiannidis
Ioannis Moscholios
Piotr Zwierzykowski
spellingShingle Panagiotis Sarigiannidis
Antonios Sarigiannidis
Ioannis Moscholios
Piotr Zwierzykowski
DIANA: A Machine Learning Mechanism for Adjusting the TDD Uplink-Downlink Configuration in XG-PON-LTE Systems
Mobile Information Systems
author_facet Panagiotis Sarigiannidis
Antonios Sarigiannidis
Ioannis Moscholios
Piotr Zwierzykowski
author_sort Panagiotis Sarigiannidis
title DIANA: A Machine Learning Mechanism for Adjusting the TDD Uplink-Downlink Configuration in XG-PON-LTE Systems
title_short DIANA: A Machine Learning Mechanism for Adjusting the TDD Uplink-Downlink Configuration in XG-PON-LTE Systems
title_full DIANA: A Machine Learning Mechanism for Adjusting the TDD Uplink-Downlink Configuration in XG-PON-LTE Systems
title_fullStr DIANA: A Machine Learning Mechanism for Adjusting the TDD Uplink-Downlink Configuration in XG-PON-LTE Systems
title_full_unstemmed DIANA: A Machine Learning Mechanism for Adjusting the TDD Uplink-Downlink Configuration in XG-PON-LTE Systems
title_sort diana: a machine learning mechanism for adjusting the tdd uplink-downlink configuration in xg-pon-lte systems
publisher Hindawi Limited
series Mobile Information Systems
issn 1574-017X
1875-905X
publishDate 2017-01-01
description Modern broadband hybrid optical-wireless access networks have gained the attention of academia and industry due to their strategic advantages (cost-efficiency, huge bandwidth, flexibility, and mobility). At the same time, the proliferation of Software Defined Networking (SDN) enables the efficient reconfiguration of the underlying network components dynamically using SDN controllers. Hence, effective traffic-aware schemes are feasible in dynamically determining suitable configuration parameters for advancing the network performance. To this end, a novel machine learning mechanism is proposed for an SDN-enabled hybrid optical-wireless network. The proposed architecture consists of a 10-gigabit-capable passive optical network (XG-PON) in the network backhaul and multiple Long Term Evolution (LTE) radio access networks in the fronthaul. The proposed mechanism receives traffic-aware knowledge from the SDN controllers and applies an adjustment on the uplink-downlink configuration in the LTE radio communication. This traffic-aware mechanism is capable of determining the most suitable configuration based on the traffic dynamics in the whole hybrid network. The introduced scheme is evaluated in a realistic environment using real traffic traces such as Voice over IP (VoIP), real-time video, and streaming video. According to the obtained numerical results, the proposed mechanism offers significant improvements in the network performance in terms of latency and jitter.
url http://dx.doi.org/10.1155/2017/8198017
work_keys_str_mv AT panagiotissarigiannidis dianaamachinelearningmechanismforadjustingthetdduplinkdownlinkconfigurationinxgponltesystems
AT antoniossarigiannidis dianaamachinelearningmechanismforadjustingthetdduplinkdownlinkconfigurationinxgponltesystems
AT ioannismoscholios dianaamachinelearningmechanismforadjustingthetdduplinkdownlinkconfigurationinxgponltesystems
AT piotrzwierzykowski dianaamachinelearningmechanismforadjustingthetdduplinkdownlinkconfigurationinxgponltesystems
_version_ 1721342340466999296