Generative Deep Neural Networks for Inverse Materials Design Using Backpropagation and Active Learning
出版年份 2020 全文链接
标题
Generative Deep Neural Networks for Inverse Materials Design Using Backpropagation and Active Learning
作者
关键词
-
出版物
Advanced Science
Volume 7, Issue 5, Pages 1902607
出版商
Wiley
发表日期
2020-01-09
DOI
10.1002/advs.201902607
参考文献
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