İLERİ BESLEMELİ YAPAY SİNİR AĞLARINDA KULLANILAN GİZLİ KATMAN SAYILARININ HARMONİK TANIMADA ETKİSİ

Bu çalışmada Aktif filter işlemlerinde harmonic belirleme için iki farklı gizli katman sayıları ile ileri beslemeli yapay sinir ağlı metodu tanımlanmıştır. Distorsiyonlu dalga içinden 5,7,11 ve 13. harmoniklerin simülasyonu yapılarak bu harmoniklerin yapay sinir ağının eğitimi için kullanılmıştır. Distorsiyonlu dalga 25. harmonige kadar yapay sinir ağında test için hazırlanmıştır. İleri beslemeli yapay sinir ağları harmoniklerin her birini tanımada kullanılmıştır. sonuçlar gösteriyor ki yapay sinir ağıları harmonic tanımada etkili bir şekilde kullanılabilir. İki gizli katmanlı yapay sinir ağlarının sonuçları digerlerinden daha iyidir.

EFFECTS OF THE HIDDEN LAYERS IN THE HARMONIC DETECTION USING FEED FORWARD NEURAL NETWORKS

In this study, the methods to apply the feed forward neural networks with two different numbers of hidden layers for harmonic detection process are described. We simulated the distorted wave including 5th, 7th, 11th, 13th harmonics and used them for training of the neural networks. The distorted wave including up to 25th harmonics were prepared for testing of the neural networks. Feed forward neural networks were used to recognize each harmonic. The results show that these neural networks are applicable to detect each harmonic effectively. The results of the neural network with two hidden layers are better than that of the other.

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