ISSN: 2375-3919
American Journal of Materials Research  
Manuscript Information
 
 
ANN Modeling for Gain of the Irradiated Semiconductor Optical Amplifier
American Journal of Materials Research
Vol.5 , No. 1, Publication Date: Feb. 27, 2018, Page: 14-18
182 Views Since February 27, 2018, 273 Downloads Since Feb. 27, 2018
 
 
Authors
 
[1]    

Taymour A. Hamdalla, Physics Department, Faculty of Science, University of Tabuk, Tabuk, KSA; Physics Department, Faculty of Science, University of Alexandria, Alexandria, Egypt.

 
Abstract
 

Artificial intelligent are powerful data treatment that used in different field of science. Artificial Neural Network modeling (ANN) is considered the most important type of artificial intelligent. Here, the gain of irradiated semiconductor optical amplifier (SOA) used in signal amplification within the core of the optical fibers system has been studied. An experimental studies for the gain of irradiated SOA followed by a simulation network using ANN model has been investigated. The ANN of SOA is consist of two hidden layer, two inputs and one output. The ANN shows a high compatibility with the performance of irradiated SOP with an error of about 10-5. These results candidates the examined model to act as a computational physics program within the fiber optics amplifier system.


Keywords
 

SOA, Optical Amplifier, Gain


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