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A Cognitive Quality of Transmission Estimator for Core Optical Networks | IEEE Journals & Magazine | IEEE Xplore

A Cognitive Quality of Transmission Estimator for Core Optical Networks


Abstract:

We propose a cognitive Quality of Transmission (QoT) estimator for classifying lightpaths into high or low quality categories in impairment-aware wavelength-routed optica...Show More

Abstract:

We propose a cognitive Quality of Transmission (QoT) estimator for classifying lightpaths into high or low quality categories in impairment-aware wavelength-routed optical networks. The technique is based on Case-Based Reasoning (CBR), an artificial intelligence technique which solves new problems by exploiting previous experiences, which are stored on a knowledge base. We also show that by including learning and forgetting techniques, the underlying knowledge base can be optimized, thus leading to a significant reduction on the computing time for on-line operation. The performance of the cognitive estimator is evaluated in a long haul and in an ultra-long haul network, and we demonstrate that it achieves more than 98% successful classifications, and that it is up to four orders of magnitude faster when compared with a non-cognitive QoT estimator, the Q-Tool.
Published in: Journal of Lightwave Technology ( Volume: 31, Issue: 6, March 2013)
Page(s): 942 - 951
Date of Publication: 25 January 2013

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