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A Fault Diagnosis and Prediction System for Rotating Machinery Based on Self-Attention Encoding and Decoding Structure
更新时间:2024-09-25
    • A Fault Diagnosis and Prediction System for Rotating Machinery Based on Self-Attention Encoding and Decoding Structure

    • 在旋转机械故障诊断领域,专家构建了基于自注意力编解码结构的在线诊断和预测系统,为优化维护计划提供解决方案。
    • Software Guide   Vol. 23, Issue 9, Pages: 99-104(2024)
    • DOI:10.11907/rjdk.231706    

      CLC: TP399
    • Published:16 September 2024

      Received:23 October 2023

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  • ZHU Shanshan,GUO Hu,YU Haibo,et al.A Fault Diagnosis and Prediction System for Rotating Machinery Based on Self-Attention Encoding and Decoding Structure[J].Software Guide,2024,23(09):99-104. DOI: 10.11907/rjdk.231706.

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