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Electromechanical Actuator Bearing Fault Detection using Empirically Extracted Features.

机译:机电执行器轴承故障检测,采用经验提取的特征。

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摘要

Model parameter estimation when coupled with Principal Component Analysis (PCA) and Bayesian classification techniques form a potentially effective fault detection scheme for Electromechanical Actuators (EMAs). This work uses parameter estimation algorithms based on linear system identification methods, derives a novel feature extraction algorithm based on PCA and analyzes its performance through simulations and experiments. A Bayesian classifier is used to create well defined EMA health classes from the extracted features.;Research contributions on fault detection in EMAs are significant because EMA faults and their detection are not yet well understood. Potential future applications - such as in primary flight control actuation in aircraft - require that quality fault detection systems be in place. Therefore, fault detection of EMAs is a vast area of ongoing research where highly capable solutions are gradually becoming available. Prior work in parameter estimation methods for feature extraction in DC motor drives - which includes EMAs - are amongst those available. While PCA is a popular feature extraction solution in a number of frequency-based fault detection approaches, the use of PCA for feature extraction from model parameters for detecting bearing faults in EMAs has not been previously reported.;In this work, a linear difference model is applied to the EMA system data such that fault information is distributed amongst the estimated model parameters. A direct comparison of the parameter estimates from healthy and degraded systems offers little insight into health conditions because of the weak effects of faults on the signal data. However, the application of PCA to uncorrelate the linearly correlated model parameters while minimizing the loss of variance information from the data effectively brings out fault information. The present algorithm is successfully applied to data collected from a Moog MaxForce EMA. The results are consistent and display effective fault detection characteristics, making the developed approach a suitable starting point for future work.
机译:当与主成分分析(PCA)和贝叶斯分类技术结合使用时,模型参数估计会形成针对机电执行器(EMA)的潜在有效的故障检测方案。这项工作使用基于线性系统识别方法的参数估计算法,推导了一种基于PCA的新颖特征提取算法,并通过仿真和实验分析了其性能。使用贝叶斯分类器从提取的特征中创建定义良好的EMA健康状况类;由于对EMA故障及其检测的了解还不够,因此在EMA中进行故障检测的研究贡献非常重要。未来的潜在应用(例如在飞机的主要飞行控制致动中)要求具备质量故障检测系统。因此,EMA的故障检测是正在进行的研究的一个广阔领域,在此领域中,逐渐有能力提供高性能的解决方案。现有的包括直流电驱动器中用于特征提取的参数估计方法的工作(包括EMA)。虽然PCA是许多基于频率的故障检测方法中流行的特征提取解决方案,但以前尚未报道过使用PCA从模型参数中提取特征以检测EMA中的轴承故障。对EMA系统数据应用“故障排除”,以便在估计的模型参数中分配故障信息。由于故障对信号数据的影响很小,因此直接比较健康和降级系统的参数估计值对健康状况的了解很少。但是,应用PCA取消线性相关模型参数的相关性,同时最大程度地减少数据中的方差信息损失,可以有效地带出故障信息。本算法已成功应用于从Moog MaxForce EMA收集的数据。结果是一致的,并显示出有效的故障检测特性,这使得所开发的方法成为未来工作的合适起点。

著录项

  • 作者

    Sridhar, Rahulram.;

  • 作者单位

    Rochester Institute of Technology.;

  • 授予单位 Rochester Institute of Technology.;
  • 学科 Engineering Mechanical.;Engineering Electronics and Electrical.
  • 学位 M.S.
  • 年度 2012
  • 页码 194 p.
  • 总页数 194
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 公共建筑;
  • 关键词

  • 入库时间 2022-08-17 11:43:16

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