Bayram, TuncayAkkoyun, Serkan2025-03-232025-03-232017978-2-7598-9020-02100-014Xhttps://doi.org/10.1051/epjconf/201714612033https://hdl.handle.net/11486/5903International Conference on Nuclear Data for Science and Technology (ND) -- SEP 11-16, 2016 -- Bruges, BELGIUMThe 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 Ni-58 and Pb-208 have been found in agreement with the literature values.eninfo:eu-repo/semantics/openAccessHartree-Bogoliubov TheoryGround-State PropertiesAn approach to adjustment of relativistic mean field model parametersConference Object14610.1051/epjconf/2017146120332-s2.0-85030480579N/AWOS:000426429500372N/A