posted on 2023-11-30, 18:19authored byGiovanni Brajato, Lars Lundberg, Victor Torres-Company, Darko Zibar
A novel tool, based on Bayesian filtering framework and expectation maximization algorithm, is numerically and experimentally demonstrated for accurate frequency comb noise characterization. The tool is statistically optimum in a mean-square-error-sense, works at wide range of SNRs and offers more accurate noise estimation compared to conventional methods.