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On-line condition monitoring and fault diagnosis in hydraulic system components using parameter estimation and pattern classification.

机译:使用参数估计和模式分类对液压系统组件进行在线状态监测和故障诊断。

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摘要

Safety and functionality of a fluid power control system can considerably be increased by implementing predictive maintenance routines. Modern predictive maintenance practices are based on automatic condition monitoring and fault diagnosis of the system components.; The theme of this thesis is on automatic generation of fault symptoms in the form of qualitative variation of system physical parameters by on-line processing of low-quality raw sensor data. To accomplish this, a novel model-based methodology has been proposed that has integrated four levels of information processing in a structured hierarchy: (1) State/parameter estimation of the hydraulic system components using state-space models, stochastic signal processing techniques such as Kalman filtering, and raw sensor data from the hydraulic system. (2) Monitoring and change detection in the identified parameters of the system components, using statistical tests, such as sequential probability ratio test. (3) Generation of fault symptoms in the form of qualitative changes in the physical parameter values, such as "increased", "decreased", etc. (4) Fault recognition by fault symptom classification using neural network pattern classifiers. (5) Fault diagnosis maintenance aiding using knowledge-based expert systems.; Using a second-order linear system as an example, we have shown how each element of the proposed hierarchical methodology effectively processes the lower quality data received from the previous element and provides higher quality information for the next element in the hierarchy, so that an incipient fault or an abrupt failure can be successfully detected and diagnosed. The proposed fault detection and diagnosis (FDD) technique has also been applied on a real hydraulic test rig which has been built in the Robotics and Control laboratory, at UBC. The hydraulic test rig has a two-stage proportional directional flow control valve, which has been thoroughly modelled for simulation of faults.; Nonlinear state-space models have been developed for various hydraulic components, including the two-stage servovalve, a hydraulic cylinder, and a manipulator. Extended Kalman Filtering (EKF) is applied on the state-space models to get the parameter estimates. Only low-cost robust sensors such as pressure transducers and position sensors have been used for this purpose. More expensive or hard-to-measure states such as flow rates and orifice areas are predicted using novel state-space models.; One of the major achievements of this thesis has been incorporation of a novel state-space model for a valve orifice area that allows us not only to obtain accurate estimates of the flow rate through the valve, but also to detect several incipient faults and abrupt failures in the valve and its connecting ports. No a priori knowledge about the orifice profile or the spool deadband size is assumed. (Abstract shortened by UMI.)
机译:通过实施预测性维护程序,可以大大提高流体动力控制系统的安全性和功能性。现代的预测性维护实践基于自动状态监视和系统组件的故障诊断。本文的主题是通过在线处理低质量的原始传感器数据,以系统物理参数的质变形式自动生成故障症状。为此,已提出了一种新颖的基于模型的方法,该方法已将信息处理的四个级别集成到一个结构化的层次结构中:(1)使用状态空间模型对液压系统组件进行状态/参数估计,随机信号处理技术,例如卡尔曼滤波和液压系统的原始传感器数据。 (2)使用统计测试(例如顺序概率比测试)对确定的系统组件参数进行监视和更改检测。 (3)以物理参数值的质变形式生成故障症状,例如“增加”,“减少”等。(4)使用神经网络模式分类器通过故障症状分类进行故障识别。 (5)使用基于知识的专家系统帮助进行故障诊断维护。以二阶线性系统为例,我们展示了所提出的层次结构方法中的每个元素如何有效地处理从上一个元素接收到的质量较低的数据,并为层次结构中的下一个元素提供较高质量的信息,从而使初始故障或突然故障可以被成功检测和诊断。提议的故障检测与诊断(FDD)技术也已应用于在UBC机器人与控制实验室建造的真实液压试验台上。液压试验台具有两级比例方向流量控制阀,该阀已经过全面建模以模拟故障。已经为各种液压部件开发了非线性状态空间模型,包括两级伺服阀,液压缸和机械手。将扩展卡尔曼滤波(EKF)应用于状态空间模型以获取参数估计值。为此,仅使用了低成本的坚固型传感器,例如压力传感器和位置传感器。使用新颖的状态空间模型可以预测更昂贵或难以测量的状态,例如流量和孔口面积。本论文的主要成就之一是为阀孔区域引入了一种新颖的状态空间模型,该模型不仅使我们能够获得通过阀的流量的准确估计值,而且能够检测出一些初期故障和突然故障。在阀门及其连接端口中。没有假定的关于孔口轮廓或阀芯死区大小的先验知识。 (摘要由UMI缩短。)

著录项

  • 作者单位

    The University of British Columbia (Canada).;

  • 授予单位 The University of British Columbia (Canada).;
  • 学科 Engineering Mechanical.
  • 学位 Ph.D.
  • 年度 1997
  • 页码 267 p.
  • 总页数 267
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 机械、仪表工业;
  • 关键词

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