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Research on the Bearing Fault Diagnosis Based on Deep SGD-Forest
更新时间:2022-03-16
    • Research on the Bearing Fault Diagnosis Based on Deep SGD-Forest

    • Software Guide   Vol. 21, Issue 2, Pages: 120-126(2022)
    • DOI:10.11907/rjdk.211401    

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  • Qi-ming PENG, Xing SHAO, Cui-xiang WANG, et al. Research on the Bearing Fault Diagnosis Based on Deep SGD-Forest. [J]. Software Guide 21(2):120-126(2022) DOI: 10.11907/rjdk.211401.

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