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Precise machine learning models for fragment production in projectile fragmentation reactions using Bayesian neural networks 被引量:7
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作者 Chun-Wang Ma Xiao-Bao Wei +6 位作者 Xi-Xi Chen Dan Peng Yu-Ting Wang Jie Pu Kai-Xuan Cheng Ya-Fei Guo Hui-Ling Wei 《Chinese Physics C》 SCIE CAS CSCD 2022年第7期118-128,共11页
Machine learning models are constructed to predict fragment production cross sections in projectile fragmentation(PF)reactions using Bayesian neural network(BNN)techniques.The massive learning for BNN models is based ... Machine learning models are constructed to predict fragment production cross sections in projectile fragmentation(PF)reactions using Bayesian neural network(BNN)techniques.The massive learning for BNN models is based on 6393 fragments from 53 measured projectile fragmentation reactions.A direct BNN model and physical guiding BNN via FRACS parametrization(BNN+FRACS)model have been constructed to predict the fragment cross section in projectile fragmentation reactions.It is verified that the BNN and BNN+FRACS models can reproduce a wide range of fragment productions in PF reactions with incident energies from 40 MeV/u to 1 GeV/u,reaction systems with projectile nuclei from^40 Ar to^208 Pb,and various target nuclei.The high precision of the BNN and BNN+FRACS models makes them applicable for the low production rate of extremely rare isotopes in future PF reactions with large projectile nucleus asymmetry in the new generation of radioactive nuclear beam factories. 展开更多
关键词 projectile fragmentation rare isotope machine learning Bayesian neural network drip line cross section radioactive nuclear beam
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