Bir Yapay Sinir Ağı Modeli Yardımıyla 36-58Ca, 50-78Ni, 102-138Sn ve 182-220Pb Çekirdeklerinin İki-Nükleon Ayırma Enerjilerinin Hesaplanması
Bu çalışmada, sırasıyla, 20, 28, 50 ve 82 sihirli sayıda protona sahip 36-58Ca, 50-78Ni, 100-138Sn ve 182-220Pb çift-çift çekirdeklerinin iki-nötron ayırma enerjilerini hesaplanmak için bir Yapay Sinir Ağları YSA modeli geliştirildi. Elde edilen sonuçlar, Sıvı Damlası Modeli SDM ve Rölativisttik Ortalama Alan Teori ROAT sonuçları ile karşılaştırıldı
Calculation of the two-neutron separation energies of even-even 36-58Ca, 50-78Ni, 102-138Sn and 182-220Pb nuclei by an artificial neural network model
In this study, an Artificial Neural Network ANN model was developed in order to calculate the two-neutron separation energies S2n for the even-even nuclei 36-58Ca, 50-78Ni, 100-138Sn and 182-220Pb with the magic proton numbers, 20, 28, 50 and 82, respectively. The obtained results were compared with the Liquid Drop Model LDM , Relativistic Mean Field Theory RMFT and the experimental results.
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- nuclei 36-58Ca, 50-78Ni, 102-138Sn and 182-220Pb by a developed