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RESEARCH ON GEAR BOX FAULT DIAGNOSIS BASED ON DCNN AND XGBOOST ALGORITHM
更新时间:2022-09-22
    • RESEARCH ON GEAR BOX FAULT DIAGNOSIS BASED ON DCNN AND XGBOOST ALGORITHM

    • Journal of Mechanical Strength   Vol. 42, Issue 5, Pages: 1059-1066(2020)
    • 作者机构:

      1. 上海电机学院电气学院

      2. 中核检修有限公司海盐分公司

    • DOI:10.16579/j.issn.1001.9669.2020.05.007    

      CLC:

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  • ZHANG RongTao, CHEN ZhiGao, LI BinBin, et al. RESEARCH ON GEAR BOX FAULT DIAGNOSIS BASED ON DCNN AND XGBOOST ALGORITHM. [J]. 42(5):1059-1066(2020) DOI: 10.16579/j.issn.1001.9669.2020.05.007.

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