Publication | Closed Access
Application of Machine Learning Techniques for Amplitude and Phase Noise Characterization
53
Citations
16
References
2015
Year
EngineeringMeasurementSpectrum EstimationBiomedical Signal AnalysisNoise ReductionState EstimationStatistical Signal ProcessingFiltering TechniqueData ScienceMachine Learning TechniquesNoiseStructural Health MonitoringNonlinear Signal ProcessingSignal ProcessingBayesian FilteringPhase RetrievalPhase Noise EstimationPhase Noise CharacterizationSpeech ProcessingWaveform Analysis
In this paper, tools from machine learning community, such as Bayesian filtering and expectation maximization parameter estimation, are presented and employed for laser amplitude and phase noise characterization. We show that phase noise estimation based on Bayesian filtering outperforms conventional time-domain approach in the presence of moderate measurement noise. Additionally, carrier synchronization based on Bayesian filtering, in combination with expectation maximization, is demonstrated for the first time experimentally.
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