典型文献
Nuclear mass based on the multi-task learning neural network method
文献摘要:
The global nuclear mass based on the macro-scopic-microscopic model was studied by applying a newly designed multi-task learning artificial neural net-work(MTL-ANN).First,the reported nuclear binding energies of 2095 nuclei(Z≥8,N≥8)released in the latest Atomic Mass Evaluation AME2020 and the deviations between the fitting result of the liquid drop model(LDM)and data from AME2020 for each nucleus were obtained.To compensate for the deviations and investigate the pos-sible ignored physics in the LDM,the MTL-ANN method was introduced in the model.Compared to the single-task learning(STL)method,this new network has a powerful ability to simultaneously learn multi-nuclear properties,such as the binding energies and single neutron and proton separation energies.Moreover,it is highly effective in reducing the risk of overfitting and achieving better pre-dictions.Consequently,good predictions can be obtained using this nuclear mass model for both the training and validation datasets and for the testing dataset.In detail,the global root mean square(RMS)of the binding energy is effectively reduced from approximately 2.4 MeV of LDM to the current 0.2 MeV,and the RMS of Sn,Sp can also reach approximately 0.2 MeV.Moreover,compared to STL,for the training and validation sets,3-9%improve-ment can be achieved with the binding energy,and 20-30%improvement for Sn,Sp;for the testing sets,the reduction in deviations can even reach 30-40%,which significantly illustrates the advantage of the current MTL.
文献关键词:
中图分类号:
作者姓名:
Xing-Chen Ming;Hong-Fei Zhang;Rui-Rui Xu;Xiao-Dong Sun;Yuan Tian;Zhi-Gang Ge
作者机构:
School of Nuclear Science and Technology,Lanzhou University,Lanzhou 730000,China;China Nuclear Data Center,China Institute of Atomic Energy,Beijing 102413,China
文献出处:
引用格式:
[1]Xing-Chen Ming;Hong-Fei Zhang;Rui-Rui Xu;Xiao-Dong Sun;Yuan Tian;Zhi-Gang Ge-.Nuclear mass based on the multi-task learning neural network method)[J].核技术(英文版),2022(04):96-103
A类:
AME2020,dictions
B类:
Nuclear,mass,multi,task,learning,neural,network,method,global,nuclear,macro,microscopic,model,was,studied,by,applying,newly,designed,artificial,MTL,ANN,First,reported,binding,energies,nuclei,released,latest,Atomic,Mass,Evaluation,deviations,between,result,liquid,drop,LDM,from,nucleus,were,obtained,To,compensate,investigate,pos,sible,ignored,physics,introduced,Compared,single,STL,this,has,powerful,ability,simultaneously,properties,such,neutron,proton,separation,Moreover,highly,reducing,risk,overfitting,achieving,better,Consequently,good,predictions,using,both,training,validation,datasets,testing,In,detail,root,mean,square,RMS,energy,effectively,reduced,approximately,MeV,current,Sn,Sp,also,reach,compared,achieved,improvement,reduction,even,which,significantly,illustrates,advantage
AB值:
0.487134
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