Design Optimisation of Power-Efficient Submarine Line through Machine Learning

02/24/2020
by   Maria Ionescu, et al.
0

An optimised subsea system design for energy-efficient SDM operation is demonstrated using machine learning. The removal of gain-flattening filters employed in submarine optical amplifiers can result in capacity gains at no additional overall repeater cost.

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