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   A Comparative Performance Analyses of Training Algorithms Employed in Artificial Neural Networks Based Modulation Recognition Systems  
   
نویسنده ülgerli büşra ,yücel gökay ,altun ahmet ,öksüz engin ,özen ali
منبع journal of new results in science - 2016 - شماره : 12 - صفحه:178 -197
چکیده    The performances of learning algorithms employed in artificial neural networks (anns) have been analyzed for classifying baseband signals that are subjected to additive white gaussian noise (awgn) and frequency selective rayleigh fading channel in this paper. the high order cumulants of the received signals have been utilized in the ann classifier. different learning algorithms have been used in finding the optimal weight set which directly affects the performance of artificial neural networks. the performances of levenberg marquardt (lm) and scaled conjugate gradient (scg) algorithm, the most widely employed learning algorithms, have been compared for training of artificial neural networks. computer simulation results have demonstrated that the lm-ann classifier can reach much better classification accuracy than the scg-ann recognizer in even low training steps
کلیدواژه Modulation recognition ,SCG-ANN ,LM-ANN ,High order cumulant
آدرس nuh naci yazgan university, haberleşme sistemleri araştırma geliştirme merkezi (hargem), department of electrical and electronics engineering, turkey, nuh naci yazgan university, haberleşme sistemleri araştırma geliştirme merkezi (hargem), department of electrical and electronics engineering, Turkey, nuh naci yazgan university, haberleşme sistemleri araştırma geliştirme merkezi (hargem), department of electrical and electronics engineering, Turkey, nuh naci yazgan university, haberleşme sistemleri araştırma geliştirme merkezi (hargem), department of electrical and electronics engineering, Turkey, nuh naci yazgan university, haberleşme sistemleri araştırma geliştirme merkezi (hargem), department of electrical and electronics engineering, Turkey
پست الکترونیکی aozen@nny.edu.tr
 
     
   
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