研究目的
Investigating a method that establishes the link between input parameter uncertainties and the overall performance uncertainty in optical networks, and proposing a simple way to link performance uncertainty to margins.
研究成果
The study demonstrates that 1–2 dB on SNR margins can be saved if parameters are truly uncorrelated, compared to legacy methods that are equivalent to considering full correlation between all input parameters. The framework can be used to classify parameters with respect to their relative contribution to the overall uncertainty, indicating which ones most merit being monitored.
研究不足
The study neglects stochastic effects and focuses on deterministic margins, overlooking other transient effects and power instability. The accuracy of the uncertainty propagation method is limited by first-order approximations, and the Gaussian approximation does not always capture the fine details of the PDF.
1:Experimental Design and Method Selection:
The study employs uncertainty propagation to evaluate the overall performance uncertainty from input parameter uncertainties, focusing on the input parameters of a simplified Gaussian noise model version.
2:Sample Selection and Data Sources:
The study considers a generic dispersion unmanaged system with no specific design constraints, using parameters with identical uncertainties and nominal values.
3:List of Experimental Equipment and Materials:
The system includes N spans of standard single-mode fiber, 32 Gbaud PDM quadrature phase-shift keying modulation, and 15 channels with channel spacing δF = 50 GHz.
4:Experimental Procedures and Operational Workflow:
The SNR statistics are obtained by randomly drawing the parameter sets NMC = 105 times, using when needed the conversion between linear and dB scale uncertainties.
5:Data Analysis Methods:
The study assesses the accuracy of the uncertainty propagation method against Monte Carlo estimations of the SNR probability density function.
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