1. Performance of the Levenberg–Marquardt neural network approach in nuclear mass prediction.
- Author
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Hai Fei Zhang, Li Hao Wang, Jing Peng Yin, Peng Hui Chen, and Hong Fei Zhang
- Subjects
ATOMIC mass ,ALGORITHMS ,NUCLEAR models ,STANDARD deviations ,ROBUST statistics ,ARTIFICIAL neural networks - Abstract
Resorting to a neural network approach we refined several representative and sophisticated global nuclear mass models within the latest atomic mass evaluation (AME2012). In the training process, a quite robust algorithm named the Levenberg–Marquardt (LM) method is employed to determine the weights and biases of the neural network. As a result, this LM neural network approach demonstrates a very useful tool for further improving the accuracy of mass models. For a simple liquid drop formula the root mean square (rms) deviation between the predictions and the 2353 experimental known masses are sharply reduced from 2.455 MeV to 0.235 MeV, and for the other revisited mass models, the rms is remarkably improved by about 30%. [ABSTRACT FROM AUTHOR]
- Published
- 2017
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