第一届(国际)设备智能运维大会(ICEIOM2023)
基本信息
2023-09-21
2023-09-23
中国机械工程学会设备智能运维分会
安徽大学
会议报告
ppt
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《基于双重度量的小样本铁轨缺陷扣件识别》
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Interpretable Fault Diagnosis of Rotating Machinery based on Logic Neural Networks
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Recent development of terahertz non-destructive testing and non-contact sensing
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Lifelong Learning for Rotating Machinery Fault Diagnosis
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Application of entropy theory in the condition monitoring of rotating machinery
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Intelligent Fault Diagnosis of Gear Transmission System Driven by Dynamics Simulation and Signal Decomposition
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Analytical Model and Signature Analysis of Multiple Electromechanical Signals for Planetary Gear System Fault Diagnosis
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Research on coupling vibration mechanism, online monitoring method and anti-vibration optimal design of the blisk tructure
视频
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The media could not be loaded, either because the server or network failed or because the format is not supported.Research on coupling vibration mechanism, online monitoring method and anti-vibration optimal design of the blisk structure
- Video Player is loading.
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The media could not be loaded, either because the server or network failed or because the format is not supported.Recent development of terahertz non-destructive testing and non-contact sensing
- Video Player is loading.
This is a modal window.
The media could not be loaded, either because the server or network failed or because the format is not supported.Interpretable Fault Diagnosis of Rotating Machinery based on Logic Neural Networks
- Video Player is loading.
This is a modal window.
The media could not be loaded, either because the server or network failed or because the format is not supported.《基于双重度量的小样本铁轨缺陷扣件识别》
会议综述
专家观点
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Intelligent Fault Diagnosis of Gear Transmission System Driven by Dynamics Simulation and Signal Decomposition
-
Recent development of terahertz non-destructive testing and noncontact sensing
-
Lifelong Learning for Rotating Machinery Fault Diagnosis
-
Application of entropy theory in the condition monitoring of rotating machinery