Optimized Routing and Spectrum Assignment for Video Communication over an Elastic Optical Network

Elastic optical network (EON) efficiently utilize spectral resources for optical fiber communication by allocating the minimum necessary bandwidth to client demands. On the other hand, network traffic has been continuously increasing due to the wide penetration of video streaming services, so the ef...

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Veröffentlicht in:arXiv.org 2019-09
Hauptverfasser: Hamed Alizadeh Ghazijahani, Seyedarabi, Hadi, Niya, Javad Musevi, Ngai-Man Cheung
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description Elastic optical network (EON) efficiently utilize spectral resources for optical fiber communication by allocating the minimum necessary bandwidth to client demands. On the other hand, network traffic has been continuously increasing due to the wide penetration of video streaming services, so the efficient and cost-effective use of available bandwidth plays an important role in improving service provisioning. In this work, we formulate and solve an optimization problem to perform routing and spectrum assignment (RSA) in EON with focus on video streaming. In this formulation, EON and video constraints such as spectrum fragmentation and received video quality are considered jointly. In this way, we utilize a machine learning (ML) technique to estimate the video quality versus channel state. The proposed algorithm is evaluated over two benchmarks fiber-optic network, namely NSFNET and US-backbone using numerical simulations based on random traffic models. The results reveal that the mean optical signal-to-noise ratio (OSNR) for video content data in the receiver is remarkably higher than in non-video data. This is while the blocking ratio is the same for both data types.
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subjects Algorithms
Bandwidths
Communications traffic
Computer simulation
Fiber optics
Machine learning
Optical communication
Optical fibers
Optimization
Provisioning
Signal to noise ratio
Spectrum allocation
Streaming media
Traffic models
Video communication
Video data
Video transmission
title Optimized Routing and Spectrum Assignment for Video Communication over an Elastic Optical Network
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