The Relativistic Mean Field (RMF) model with a small number of adjusted parameters is powerful tool for correct predictions of various ground-state nuclear properties of nuclei. Its success for describing nuclear properties of nuclei is directly related with adjustment of its parameters by using experimental data. In the present study, the Artificial Neural Network (ANN) method which mimics brain functionality has been employed for improvement of the RMF model parameters. In particular, the understanding capability of the ANN method for relations between the RMF model parameters and their predictions for binding energies (BEs) of 58Ni and 208Pb have been found in agreement with the literature values
In this paper, three individual models and one generalized radial basis function neural network (RBF...
Power counting is applied to relativistic mean-field energy functionals to estimate contributions to...
A systematic study based on the Bayesian Neural Network (BNN) statistical approach is introduced to ...
WOS: 000327829400019One of the fundamental ground-state properties of nuclei is binding energy. Arti...
Abstract. The artificial neural networks (ANNs) have emerged with successful applications in nuclear...
Mass excess knowledge is important to investigate the fundamental properties of atomic nuclei. It is...
We study a relativistic model of the nucleus consisting of nucleons coupled to mesonic degrees of fr...
A new approach to potential fitting using neural networks This item was submitted to Loughborough Un...
The essentials of the Relativistic Mean Field (RMF) theory and some of its recent applications are p...
The development of nuclear technologies has directed environmental radioactivity research toward con...
This article presents a new framework for fitting measured scientific data to a simple empirical for...
AbstractThe differences between the experimental and Relativistic Mean Field binding energies have b...
Existing applications of artificial neural networks in physics research and development have been an...
Energija vezanja temeljno je svojstvo atomske jezgre. Može se mjeriti eksperimentalno, ali ne za sve...
We perform a systematic study of the ground-state properties of all the nuclei from the proton drip ...
In this paper, three individual models and one generalized radial basis function neural network (RBF...
Power counting is applied to relativistic mean-field energy functionals to estimate contributions to...
A systematic study based on the Bayesian Neural Network (BNN) statistical approach is introduced to ...
WOS: 000327829400019One of the fundamental ground-state properties of nuclei is binding energy. Arti...
Abstract. The artificial neural networks (ANNs) have emerged with successful applications in nuclear...
Mass excess knowledge is important to investigate the fundamental properties of atomic nuclei. It is...
We study a relativistic model of the nucleus consisting of nucleons coupled to mesonic degrees of fr...
A new approach to potential fitting using neural networks This item was submitted to Loughborough Un...
The essentials of the Relativistic Mean Field (RMF) theory and some of its recent applications are p...
The development of nuclear technologies has directed environmental radioactivity research toward con...
This article presents a new framework for fitting measured scientific data to a simple empirical for...
AbstractThe differences between the experimental and Relativistic Mean Field binding energies have b...
Existing applications of artificial neural networks in physics research and development have been an...
Energija vezanja temeljno je svojstvo atomske jezgre. Može se mjeriti eksperimentalno, ali ne za sve...
We perform a systematic study of the ground-state properties of all the nuclei from the proton drip ...
In this paper, three individual models and one generalized radial basis function neural network (RBF...
Power counting is applied to relativistic mean-field energy functionals to estimate contributions to...
A systematic study based on the Bayesian Neural Network (BNN) statistical approach is introduced to ...