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Fault diagnostics study for linear uncertain systems using dynamic threshold with application to propulsion system.

机译:基于动态阈值的线性不确定系统故障诊断研究及其在推进系统中的应用。

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摘要

Fault detection and isolation plays a critical role in aircraft engines and the performance of their control systems. A great amount of research on model-based fault detection and isolation of aircraft engines has been studied since the 1970s. Model-based fault detection and isolation methods rely on the accuracy of the model. Model uncertainty, disturbances and noise, etc., all have a great impact on the fault detection and isolation design results. A challenge in the fault detection applications is the design of a scheme which can distinguish between model uncertainties, disturbances and the occurrence of faults. Most of the current approaches use a constant detection threshold. Currently, there are no useful guidelines for constant optimal threshold selection. In the absence of faults, a predetermined constant threshold would lead to more false alarms and missed detections under modeling uncertainties. Hence a technique to accommodate uncertainties and disturbances in the model, help in reducing false alarms and missed detections is essential for the enhancement of aircraft engine operations. In this work, a dynamic threshold algorithm is developed for aircraft engine fault detection and isolation that accommodates parametric uncertainties and disturbances. The algorithm takes the parametric uncertainties into consideration and proposes a dynamic threshold that makes use of the bounds on the parametric uncertainties which can thus distinguish an actual fault from the model uncertainties. First we design Kalman filters or unknown input observers based on the linearized engine model about a given nominal operating point, but the filters or observers use the measurements from the nonlinear engine model which includes uncertainty description. Using the robustness analysis of parametric uncertain systems, we generate upper-bound and lower-bound time response trajectories of the dynamic threshold. The extent of parametric uncertainties is assumed to be such that the perturbed eigenvalues reside in a set of distinct circular regions. A set of "structured" Kalman filters or unknown input observers are used for engine sensor or actuator fault diagnosis design. The residuals are errors between measured outputs and estimated outputs from a set of Kalman filters or a set of unknown input observers. With the dynamic threshold design approach, the residual crossing the upper bound or lower bound of the dynamic threshold indicates the occurrence of fault. Application to an aircraft turbofan engine model illustrates the performance of the proposed method.
机译:故障检测和隔离在飞机发动机及其控制系统的性能中起着至关重要的作用。自1970年代以来,对基于模型的飞机发动机故障检测和隔离进行了大量研究。基于模型的故障检测和隔离方法取决于模型的准确性。模型的不确定性,干扰和噪声等,都对故障检测和隔离设计结果有很大影响。故障检测应用中的一个挑战是设计一种可以区分模型不确定性,扰动和故障发生的方案。当前大多数方法使用恒定的检测阈值。当前,没有用于恒定最佳阈值选择的有用准则。在没有故障的情况下,在模型不确定性下,预定的恒定阈值将导致更多的错误警报和漏检。因此,一种适应模型中不确定性和干扰,帮助减少虚假警报和漏检的技术对于增强飞机发动机的运行至关重要。在这项工作中,为飞机发动机故障检测和隔离开发了动态阈值算法,该算法可适应参数不确定性和干扰。该算法考虑了参数不确定性,并提出了一个动态阈值,该阈值利用了参数不确定性上的界限,从而可以将实际故障与模型不确定性区分开。首先,我们基于线性引擎模型针对给定的标称工作点设计卡尔曼滤波器或未知输入观测器,但是滤波器或观测器使用来自非线性引擎模型的测量值,其中包括不确定性描述。使用参数不确定系统的鲁棒性分析,我们生成了动态阈值的上界和下界时间响应轨迹。假定参数不确定性的程度应使被摄动的特征值位于一组不同的圆形区域中。一组“结构化”的卡尔曼滤波器或未知的输入观测器用于发动机传感器或执行器故障诊断设计。残差是一组卡尔曼滤波器或一组未知输入观测器的测量输出与估计输出之间的误差。使用动态阈值设计方法时,超过动态阈值上限或下限的残差指示故障的发生。在飞机涡扇发动机模型上的应用说明了所提出方法的性能。

著录项

  • 作者

    Li, Wenfei.;

  • 作者单位

    The Ohio State University.;

  • 授予单位 The Ohio State University.;
  • 学科 Engineering Aerospace.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 167 p.
  • 总页数 167
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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