A deep belief network to predict the hot deformation behavior of a Ni-based superalloy
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Jia Li | Y. C. Lin | Ming-Song Chen | Yingjie Liang | Yanxing Liu | Y. Lin | Jia Li | Yin Liang | Ming-Song Chen | Yan-Xing Liu | Yong-Cheng Lin
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