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Shen, Li, Chen, Li, Huang, Jianhong, He, Jichang, Li, Zhanjiang, Pan, Jian, Chang, Fa, Dai, Pinqiang, Tang, Qunhua (2023) Predicting phases and hardness of high entropy alloys based on machine learning. Intermetallics, 162. Elsevier BV. 108030 doi:10.1016/j.intermet.2023.108030

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Reference TypeJournal (article/letter/editorial)
TitlePredicting phases and hardness of high entropy alloys based on machine learning
JournalIntermetallics
AuthorsShen, LiAuthor
Chen, LiAuthor
Huang, JianhongAuthor
He, JichangAuthor
Li, ZhanjiangAuthor
Pan, JianAuthor
Chang, FaAuthor
Dai, PinqiangAuthor
Tang, QunhuaAuthor
Year2023 (November)Volume162
PublisherElsevier BV
DOIdoi:10.1016/j.intermet.2023.108030Search in ResearchGate
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Mindat Ref. ID16648797Long-form Identifiermindat:1:5:16648797:8
GUID0
Full ReferenceShen, Li, Chen, Li, Huang, Jianhong, He, Jichang, Li, Zhanjiang, Pan, Jian, Chang, Fa, Dai, Pinqiang, Tang, Qunhua (2023) Predicting phases and hardness of high entropy alloys based on machine learning. Intermetallics, 162. Elsevier BV. 108030 doi:10.1016/j.intermet.2023.108030
Plain TextShen, Li, Chen, Li, Huang, Jianhong, He, Jichang, Li, Zhanjiang, Pan, Jian, Chang, Fa, Dai, Pinqiang, Tang, Qunhua (2023) Predicting phases and hardness of high entropy alloys based on machine learning. Intermetallics, 162. Elsevier BV. 108030 doi:10.1016/j.intermet.2023.108030
In(2023) Intermetallics Vol. 162. Elsevier BV


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