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首页> 外文期刊>Journal of Intelligent Manufacturing >Automatic feature extraction of waveform signals for in-process diagnostic performance improvement
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Automatic feature extraction of waveform signals for in-process diagnostic performance improvement

机译:自动提取波形信号的特征以改善过程中的诊断性能

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摘要

In this paper, a new methodology is presented for developing a diagnostic system using waveform signals with limited or with no prior fault information. The key issues studied in this paper are automatic fault detection, optimal feature extraction, optimal feature subset selection, and diagnostic performance assessment. By using this methodology, a diagnostic system can be developed and its performance is continuously improved as the knowledge of process faults is automatically accumulated during production. As a real example, the tonnage signal analysis for stamping process monitoring is provided to demonstrate the implementation of this methodology.
机译:在本文中,提出了一种新的方法,用于开发使用波形信号的诊断系统,该信号具有有限的故障信息或没有故障信息。本文研究的关键问题是自动故障检测,最佳特征提取,最佳特征子集选择和诊断性能评估。通过使用这种方法,可以开发诊断系统,并在生产过程中自动积累过程故障的知识,从而不断提高其性能。作为一个真实的例子,提供了用于冲压过程监控的吨位信号分析,以演示该方法的实施。

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