Publication | Closed Access
A Cognitive Quality of Transmission Estimator for Core Optical Networks
74
Citations
18
References
2013
Year
Artificial IntelligenceIntelligent Information ProcessingEngineeringMachine LearningNetwork AnalysisIntelligent SystemsCognitive TechnologyDynamic Spectrum ManagementData ScienceOptical NetworksSystems EngineeringCognitive RadioCognitive NetworkOptical NetworkingCase-based ReasoningKnowledge DiscoveryComputer ScienceCognitive Radio Resource ManagementSignal ProcessingIntelligent NetworkCognitive QualityArtificial Intelligence Technique
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.
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