Physics-Based Modeling for Hybrid Data-Driven Models to Estimate SNR in WDM Systems
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In: Journal of Lightwave Technology, 27.05.2024.
Research output: Contribution to journal › Article › peer-review
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TY - JOUR
T1 - Physics-Based Modeling for Hybrid Data-Driven Models to Estimate SNR in WDM Systems
AU - Mansour, Mariane
AU - Faruk, Md Saifuddin
AU - Laperle, Charles
AU - Reimer, Michael
AU - O’Sullivan, Maurice
AU - Savory, Seb J.
PY - 2024/5/27
Y1 - 2024/5/27
N2 - Recently several machine learning methods have been proposed to estimate the SNR, based on launch data and other system factors. These data-driven methods typically require a large number of datasets for training and generally are not interpretable. In this paper, we propose an alternative approach that requires less data and is interpretable, specifically a hybrid algorithm combining a physical model with Gaussian process regression. We develop a measurement-informed physical model, systematically reducing the number of independent parameters based on the underpinning physics and improve the overall performance of the physical model marginally. The model is validated using measurements performed on a 15-channel wavelength-division multiplexed system propagating over 1,000 km of standard single-mode fiber. The proposed hybrid model is not only interpretable but also obtains better agreement with measurements than a Gaussian process regression model and a simple neural network model for a given number of training datapoints.
AB - Recently several machine learning methods have been proposed to estimate the SNR, based on launch data and other system factors. These data-driven methods typically require a large number of datasets for training and generally are not interpretable. In this paper, we propose an alternative approach that requires less data and is interpretable, specifically a hybrid algorithm combining a physical model with Gaussian process regression. We develop a measurement-informed physical model, systematically reducing the number of independent parameters based on the underpinning physics and improve the overall performance of the physical model marginally. The model is validated using measurements performed on a 15-channel wavelength-division multiplexed system propagating over 1,000 km of standard single-mode fiber. The proposed hybrid model is not only interpretable but also obtains better agreement with measurements than a Gaussian process regression model and a simple neural network model for a given number of training datapoints.
M3 - Article
JO - Journal of Lightwave Technology
JF - Journal of Lightwave Technology
SN - 0733-8724
ER -