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Predictive resource management using deep learning in next generation Passive Optical Networks.

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dc.contributor.author Hatem, John Abied Mitri
dc.date.accessioned 2020-03-27T18:42:58Z
dc.date.available 2020-03-27T18:42:58Z
dc.date.issued 2018
dc.date.submitted 2018
dc.identifier.other b2312913x
dc.identifier.uri http://hdl.handle.net/10938/21565
dc.description Thesis. M.S. American University of Beirut. Department of Computer Science, 2018. T:6904
dc.description Advisor : Dr. Ahmad R. Dhaini, Assistant Professor, Computer Science ; Committee members : Dr. Shady Elbassuoni, Assistant Professor, Computer Science ; Dr. Haidar Safa, Professor, Computer Science ; Dr. Fatima K. Abu Salem, Associate Professor, Computer Science.
dc.description Includes bibliographical references (leaves 59-63)
dc.description.abstract Over the last decade, Passive Optical Network (PON) has emerged as the best solution for the bottleneck problem in the first-mile, making it an ideal candidate for next-generation broadband access networks. Meanwhile, machine learning, and more specifically deep learning, has been regarded as a star technology for solving complex classification and prediction problems. Recent advances in hardware and cloud technologies offer all the necessary capabilities for employing deep learning to enhance PON's performance. In PON systems, to allocate bandwidth for the end-users, the Optical Line Terminal (OLT) polls the Optical Network Units (ONU) in a cyclic manner using control messages to enable Dynamic Bandwidth Allocation (DBA) in the upstream direction. In this thesis, we propose a novel DBA approach, thus-called Deep DBA, that employs deep learning to predict the bandwidth demand of end-users so that the overhead due to the request-grant mechanism in PON is reduced, thereby increasing the bandwidth utilization. More specifically, we employ a Long Short-Term Memory recurrent neural network that predicts the bandwidth demands of ONUs for several future cycles by peep-holing only a few previous cycles. Consequently, the OLT does not need to poll the ONUs during the predicted cycles, thereby reducing the overhead of control messages and idle times in the network. The gain achieved through Deep-DBA enables to provision more users and-or services on the same network while ensuring fairness among ONUs and supporting quality of service. Extensive simulations highlight the merits of the new DBA approach and offer insights for this new line of research. Results show that with Deep-DBA, the control message overhead and total overhead in the upstream direction are reduced by up to 70percent compared to existing schemes.
dc.format.extent 1 online resource (x, 63 leaves) : illustrations (some color)
dc.language.iso eng
dc.subject.classification T:006904
dc.subject.lcsh Optical communications.
dc.subject.lcsh Machine learning.
dc.subject.lcsh Artificial intelligence.
dc.title Predictive resource management using deep learning in next generation Passive Optical Networks.
dc.type Thesis
dc.contributor.department Department of Computer Science
dc.contributor.faculty Faculty of Arts and Sciences
dc.contributor.institution American University of Beirut


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