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Feature extraction of waveform signals for stamping process monitoring and fault diagnosis.

机译:波形信号的特征提取,用于冲压过程监控和故障诊断。

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摘要

Sheet metal stamping is a very complex manufacturing process. The current quality control practice of using periodic inspection of the stamped parts cannot satisfy the high stamping production requirement, due to its low sampling frequency and incapability of root cause determination of process faults. Meanwhile, stamping tonnage waveform signals, which are measured on-line, contain rich information that can be related to both the product quality and process variables. However, little research has been done in the past to utilize on-line tonnage waveform signals for stamping process control. In this thesis, the emphasized research is how to fully utilize in-process tonnage waveform signals to monitor the conditions of stamping process variables through the integration of engineering knowledge, statistical multivariable analysis, and signal processing of wavelet analysis. Three fundamental issues have been studied.; (1) “Feature lossless” data compression is proposed and implemented for the first time to efficiently collect tonnage signals for process monitoring and fault diagnosis. Compared with data compression using a denoising approach, the feature lossless data compression approach is more efficient, further removing signals irrelevant to process performance. The remaining data contain only those potential features for process monitoring and fault diagnosis. (2) A new hierarchical feature extraction method is developed for process diagnosis with variable interactions by using a two-level fractional factorial design of experiment (DOE). The unique characteristics of the proposed methodology are that it considers the interactive variables in the feature extraction of a tonnage waveform signal, which is useful for multiple stamping process fault diagnosis. (3) A novel methodology is presented to develop a diagnostic system by using waveform signals with limited prior fault samples, where the continuous in-process learning and diagnostic performance enhancement are emphasized through automatic feature extraction and optimal feature subset selection during the use of a diagnostic system in a manufacturing process.; This research contributes to the science of using waveform signals for process monitoring and diagnosis. Though the stamping process is used as an application example in the thesis, the developed methodologies are generic and can be used in various manufacturing diagnostic applications where the waveform signals are available.
机译:钣金冲压是一个非常复杂的制造过程。当前使用冲压零件进行定期检查的质量控制实践由于其低采样频率和无法确定过程故障的根本原因而不能满足较高的冲压生产要求。同时,在线测量的冲压吨位波形信号包含丰富的信息,这些信息可能与产品质量和工艺变量有关。但是,过去很少进行研究以利用在线吨位波形信号进行冲压过程控制。本文重点研究如何通过工程知识,统计多变量分析和小波分析的信号处理相结合,充分利用过程中吨位波形信号来监测冲压工艺变量的状况。研究了三个基本问题。 (1)首次提出并实施“功能无损”数据压缩,以有效收集吨位信号,以进行过程监控和故障诊断。与使用降噪方法进行数据压缩相比,无损特征数据压缩方法效率更高,可以进一步消除与处理性能无关的信号。其余数据仅包含用于过程监视和故障诊断的那些潜在功能。 (2)通过使用两级分数阶因子设计实验(DOE),开发了一种用于具有可变相互作用的过程诊断的新的层次特征提取方法。所提出的方法的独特之处在于它在吨位波形信号的特征提取中考虑了交互变量,这对于多次冲压过程的故障诊断很有用。 (3)提出了一种新颖的方法来开发诊断系统,方法是使用带有有限先验故障样本的波形信号来开发诊断系统,其中通过在使用过程中自动提取特征和优化特征子集来强调持续的过程中学习和诊断性能增强制造过程中的诊断系统。这项研究有助于将波形信号用于过程监控和诊断的科学。尽管在本文中将冲压过程用作一个应用示例,但是所开发的方法是通用的,并且可以在波形信号可用的各种制造诊断应用中使用。

著录项

  • 作者

    Jin, Jionghua.;

  • 作者单位

    University of Michigan.;

  • 授予单位 University of Michigan.;
  • 学科 Engineering Industrial.; Engineering Mechanical.; Engineering Metallurgy.
  • 学位 Ph.D.
  • 年度 1999
  • 页码 130 p.
  • 总页数 130
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 一般工业技术;机械、仪表工业;冶金工业;
  • 关键词

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