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Development of diagnostic and prognostic methodologies for electronic systems based on Mahalanobis distance.

机译:基于马氏距离的电子系统诊断和预测方法的开发。

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摘要

Diagnostic and prognostic capabilities are one aspect of the many interrelated and complementary functions in the field of Prognostic and Health Management (PHM). These capabilities are sought after by industries in order to provide maximum operational availability of their products, maximum usage life, minimum periodic maintenance inspections, lower inventory cost, accurate tracking of part life, and no false alarms. Several challenges associated with the development and implementation of these capabilities are the consideration of a system's dynamic behavior under various operating environments; complex system architecture where the components that form the overall system have complex interactions with each other with feed-forward and feedback loops of instructions; the unavailability of failure precursors; unseen events; and the absence of unique mathematical techniques that can address fault and failure events in various multivariate systems.;The Mahalanobis distance methodology distinguishes multivariable data groups in a multivariate system by a univariate distance measure calculated from the normalized value of performance parameters and their correlation coefficients. The Mahalanobis distance measure does not suffer from the scaling effect---a situation where the variability of one parameter masks the variability of another parameter, which happens when the measurement ranges or scales of two parameters are different.;A literature review showed that the Mahalanobis distance has been used for classification purposes. In this thesis, the Mahalanobis distance measure is utilized for fault detection, fault isolation, degradation identification, and prognostics.;For fault detection, a probabilistic approach is developed to establish threshold Mahalanobis distance, such that presence of a fault in a product can be identified and the product can be classified as healthy or unhealthy. A technique is presented to construct a control chart for Mahalanobis distance for detecting trends and biasness in system health or performance. An error function is defined to establish fault-specific threshold Mahalanobis distance.;A fault isolation approach is developed to isolate faults by identifying parameters that are associated with that fault. This approach utilizes the design-of-experiment concept for calculating residual Mahalanobis distance for each parameter (i.e., the contribution of each parameter to a system's health determination). An expected contribution range for each parameter estimated from the distribution of residual Mahalanobis distance is used to isolate the parameters that are responsible for a system's anomalous behavior.;A methodology to detect degradation in a system's health using a health indicator is developed. The health indicator is defined as the weighted sum of a histogram bin's fractional contribution. The histogram's optimal bin width is determined from the number of data points in a moving window. This moving window approach is utilized for progressive estimation of the health indicator over time. The health indicator is compared with a threshold value defined from the system's healthy data to indicate the system's health or performance degradation.;A symbolic time series-based health assessment approach is developed. Prognostic measures are defined for detecting anomalies in a product and predicting a product's time and probability of approaching a faulty condition. These measures are computed from a hidden Markov model developed from the symbolic representation of product dynamics. The symbolic representation of a product's dynamics is obtained by representing a Mahalanobis distance time series in symbolic form.;Case studies were performed to demonstrate the capability of the proposed methodology for real time health monitoring. Notebook computers were exposed to a set of environmental conditions representative of the extremes of their life cycle profiles. The performance parameters were monitored in situ during the experiments, and the resulting data were used as a training dataset. The dataset was also used to identify specific parameter behavior, estimate correlation among parameters, and extract features for defining a healthy baseline. Field-returned computer data and data corresponding to artificially injected faults in computers were used as test data.
机译:诊断和预后功能是预后和健康管理(PHM)领域中许多相互关联和互补的功能的一方面。这些功能是行业追求的,目的是提供其产品的最大操作可用性,最长的使用寿命,最少的定期维护检查,更低的库存成本,准确的零件寿命跟踪以及无误报。与这些功能的开发和实现相关的几个挑战是在各种操作环境下考虑系统的动态行为。复杂的系统架构,其中构成整个系统的组件之间通过指令的前馈和反馈循环相互之间进行复杂的交互;失败前兆的可用性;看不见的事件; Mahalanobis距离方法通过根据性能参数及其相关系数的归一化值计算出的单变量距离度量来区分多变量系统中的多变量数据组。 Mahalanobis距离度量不受缩放影响-一种情况是一个参数的可变性掩盖了另一个参数的可变性,这种情况在两个参数的测量范围或尺度不同时发生。马氏距离已用于分类目的。本文利用马氏距离测度来进行故障检测,故障隔离,退化识别和预后判断。为了进行故障检测,开发了一种概率方法来建立阈值马氏距离,从而可以确定产品中是否存在故障。标识,并且该产品可以分类为健康或不健康。提出了一种技术,用于构造马氏距离的控制图,以检测系统健康或性能的趋势和偏差。定义了一个误差函数以建立特定于故障的阈值马氏距离。开发了一种故障隔离方法,通过识别与该故障相关的参数来隔离故障。该方法利用实验设计概念来计算每个参数的剩余马氏距离(即,每个参数对系统健康状况的确定)。根据剩余马氏距离的分布估算出的每个参数的预期贡献范围,用于隔离导致系统异常行为的参数。健康指标定义为直方图bin的分数贡献的加权总和。直方图的最佳bin宽度由移动窗口中的数据点数确定。该移动窗口方法用于随时间推移逐步评估健康指标。将运行状况指示器与从系统的运行状况数据定义的阈值进行比较,以指示系统的运行状况或性能下降。;开发了基于符号时间序列的运行状况评估方法。定义了预后措施,以检测产品中的异常情况并预测产品出现故障的时间和可能性。这些度量是根据产品动力学的符号表示开发的隐马尔可夫模型计算得出的。通过以符号形式表示马哈拉诺比斯距离时间序列来获得产品动力学的符号表示。进行了案例研究,以证明所提出的方法用于实时健康监测的能力。笔记本电脑暴露于一系列代表其生命周期曲线极端的环境条件。在实验过程中对性能参数进行现场监控,并将所得数据用作训练数据集。该数据集还用于识别特定的参数行为,估计参数之间的相关性以及提取用于定义健康基准的特征。现场返回的计算机数据和与计算机中人为注入的故障相对应的数据被用作测试数据。

著录项

  • 作者

    Kumar, Sachin.;

  • 作者单位

    University of Maryland, College Park.;

  • 授予单位 University of Maryland, College Park.;
  • 学科 Engineering Mechanical.;Artificial Intelligence.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 175 p.
  • 总页数 175
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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