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A technique using artificial neural networks trained with parameters derived from delay tap plots for optical performance monitoring in 40 Gbit/s duobinary system is demonstrated. Firstly, the optical signal is delay tap sampled to obtain two-dimensional histogram, known as delay tap plots. Secondly, the features of delay tap plots are extracted to train the feed forward, three-layer preceptor structure artificial neural networks. Finally, the outputs of trained neural network are used to monitor optical duobinary signal impairments. Simulation of optical signal noise ratio (OSNR), chromatic dispersion (CD), and differential group delay (DGD) monitoring in 40 Gbit/s optical duobinary system is presented. The proposed monitoring scheme can accurately identify simultaneous impairments without requiring synchronous sampling or data clock recovery. The proposed technique is simple, cost-effective and suitable for in-service distributed OPM.
A technique using artificial neural networks trained with parameters derived from delay tap plots for optical performance monitoring in 40 Gbit / s duobinary system was demonstrated. Finally, the outputs of trained neural networks are used to monitor optical duobinary signal impairments. Simulation of optical signal noise ratio (OSNR ), chromatic dispersion (CD), and differential group delay (DGD) monitoring in 40 Gbit / s optical duobinary system is presented. The proposed monitoring scheme can be identified simultaneous impairments without data , cost-effective and suitable for in-service distributed OPM.