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Ciencia e Ingeniería Neogranadina

 ISSN 0124-8170 ISSN 1909-7735

MONTOYA ALBA, David Esteban; CAGUA HERRERA, Jhonatan Mcniven    PUERTO LEGUIZAMON, Gustavo Adolfo. Design of a Flattening Filter Using Fiber Bragg Gratings for EDFA Gain Equalization: An Artificial Neural Network Application. []. , 29, 2, pp.25-36.   20--2019. ISSN 0124-8170.  https://doi.org/10.18359/rcin.3818.

This paper presents a proposal for the non-uniform gain compensation of an Erbiumdoped fiber optic amplifier (EDFA) in a Wave-length Division Multiplexed (WDM) system using Fiber Bragg Gratings (FBG). In this proposal, the multilayer perceptron feed-forward artificial neural network with backpropagation was trained under the secant method (one-step secant) and was selected according to mean square error measurement. The proposal optimizes FBG parameters such as center frequency, rejection level and length in order to determine a filtering response based on a reduced number of FBGs that will be used to flatten the non-linear response of the amplifier gain and avoid the per-carrier treatment of a standard flattening filter. While an artificial neural network with a 7-10-6 structure demonstrated the feasibility of equalizing the gain of an EDFA using as few as three FBGs, a 25-18-12 structure improved the results when the configuration consisted of an FBG array of six resonances that provided similar results to that featured by the standard gain-flattening filter. The proposal was evaluated in an amplified WDM system of eight optical carriers located between 195-196.4 THz.

: Artificial neural network; EDFA; flattening filter; Fiber Bragg Grating; Wavelength Division Multiplexing.

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