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Machine Learning Assisted Optimization of Perovskite Thin Film Fabrication Process and Assessment of Feature Importance
Synthesis and Properties of Materials | 更新时间:2024-04-08
    • Machine Learning Assisted Optimization of Perovskite Thin Film Fabrication Process and Assessment of Feature Importance

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    • Chinese Journal of Luminescence   Vol. 45, Issue 3, Pages: 399-406(2024)
    • DOI:10.37188/CJL.20230309    

      CLC: O482.31;TM914.4
    • Received:02 December 2023

      Revised:19 December 2023

      Published:05 March 2024

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  • GONG Jian,CHEN Qian,LI Yang,et al.Machine Learning Assisted Optimization of Perovskite Thin Film Fabrication Process and Assessment of Feature Importance[J].Chinese Journal of Luminescence,2024,45(03):399-406. DOI: 10.37188/CJL.20230309.

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