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Full-life dynamic identification of wear state based on on-line wear debris image features

机译:基于在线磨损碎片图像特征的全寿命动态磨损状态识别

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摘要

Wear state identification is a bottleneck for the monitoring of engine's condition due to its complex characteristics as system-dependent, time-dependent and physical coupling. Correspondingly, full-life dynamic identification of the wear state of an engine in service was investigated for real-time performance evaluation. As wear information carrier, images of wear debris carried by the cycling lubricant were sampled by an OLVF (On-line Visual Ferrograph) sensor. Two characteristic indexes including IPCA (Index of Particle Coverage Area) and EDLWD (Equivalent Diameter of Large Wear Debris) extracted from the on-line wear images, were adopted to characterize the wear state quantitatively by representing wear rate and mechanisms, respectively. A dynamic feature-matching model for real-time identification was studied comprehensively by referring to the stage features of wear state variation. Furthermore, a one-class model was built using the SVDD (Support Vector Data Description) method for categorizing statistical samples. By integrating the feature-matching and de-noising methods, a good identification was achieved with those samples. On this basis, a stage-based model for real-time wear state monitoring was built and verified with time-sequence monitoring samples from an engine bench test. The method shows potential as a promising on-line wear state evaluation tool, especially for full-life monitoring.
机译:磨损状态识别由于其复杂的特性(如依赖于系统,依赖于时间和物理耦合)而成为监视发动机状态的瓶颈。相应地,研究了在役发动机磨损状态的全寿命动态识别,以进行实时性能评估。作为磨损信息载体,由循环润滑剂携带的磨损碎屑图像通过OLVF(在线视觉铁磁仪)传感器采样。从在线磨损图像中提取的两个特征指标包括IPCA(颗粒覆盖面积指数)和EDLWD(大磨损碎片当量直径),分别通过表示磨损率和机理来定量表征磨损状态。结合磨损状态变化的阶段特征,对动态特征匹配模型进行了实时识别。此外,使用SVDD(支持向量数据描述)方法构建了一个一类模型,用于对统计样本进行分类。通过集成特征匹配和去噪方法,可以对这些样本进行良好的识别。在此基础上,建立了基于阶段的实时磨损状态监控模型,并使用了来自发动机工作台测试的时间序列监控样本进行了验证。该方法显示出作为有前途的在线磨损状态评估工具的潜力,特别是对于全寿命监测。

著录项

  • 来源
    《Mechanical systems and signal processing》 |2014年第2期|404-414|共11页
  • 作者单位

    Key Laboratory of Education Ministry for Modern Design and Rotor-Bearing System, Xi'an Jiaotong University, Xi'an 710049, China;

    Key Laboratory of Education Ministry for Modern Design and Rotor-Bearing System, Xi'an Jiaotong University, Xi'an 710049, China;

    Key Laboratory of Education Ministry for Modern Design and Rotor-Bearing System, Xi'an Jiaotong University, Xi'an 710049, China;

    Key Laboratory of Education Ministry for Modern Design and Rotor-Bearing System, Xi'an Jiaotong University, Xi'an 710049, China;

    Key Laboratory of Education Ministry for Modern Design and Rotor-Bearing System, Xi'an Jiaotong University, Xi'an 710049, China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Wear state; Machine condition monitoring; Dynamic identification;

    机译:穿着状态;机器状态监控;动态识别;

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