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典型文献
Development of an electronic stopping power model based on deep learning and its application in ion range prediction
文献摘要:
Deep learning algorithm emerges as a new method to take the raw features from large dataset and mine their deep implicit relations,which is promising for solving traditional physical challenges.A particularly intricate and difficult challenge is the energy loss mechanism of energetic ions in solid,where accurate prediction of stopping power is a long-time problem.In this work,we develop a deep-learning-based stopping power model with high overall accuracy,and overcome the long-standing deficiency of the existing classical models by improving the predictive accuracy of stopping power for ultra-heavy ion with low energy,and the corresponding projected range.This electronic stopping power model,based on deep learning algorithm,could be hopefully applied for the study of ion-solid interaction mechanism and enormous relevant applications.
文献关键词:
作者姓名:
Xun Guo;Hao Wang;Changkai Li;Shijun Zhao;Ke Jin;Jianming Xue
作者机构:
Advanced Research Institute of Multidisciplinary Science,Beijing Institute of Technology,Beijing 100081,China;State Key Laboratory of Nuclear Physics and Technology,School of Physics,Peking University,Beijing 100871,China;Department of Mechanical Engineering,City University of Hong Kong,Hong Kong,China;Center for Applied Physics and Technology,Ministry of Education Key Laboratory of High Energy Density Physics Simulations,and Peking University Branch of Ministry of Education IFSA Center,Peking University,Beijing 100871,China
引用格式:
[1]Xun Guo;Hao Wang;Changkai Li;Shijun Zhao;Ke Jin;Jianming Xue-.Development of an electronic stopping power model based on deep learning and its application in ion range prediction)[J].中国物理B(英文版),2022(07):288-294
A类:
B类:
Development,electronic,stopping,power,deep,learning,its,range,prediction,Deep,algorithm,emerges,new,method,take,raw,features,from,large,dataset,mine,their,implicit,relations,which,promising,solving,traditional,physical,challenges,particularly,intricate,difficult,energy,loss,mechanism,energetic,solid,where,accurate,long,problem,In,this,work,develop,high,overall,accuracy,overcome,standing,deficiency,existing,classical,models,by,improving,predictive,ultra,heavy,low,corresponding,projected,This,could,be,hopefully,applied,study,interaction,enormous,relevant,applications
AB值:
0.584256
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