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Optimum sensor localization/selection in a diagnostic/prognostic architecture.

机译:诊断/预后架构中的最佳传感器定位/选择。

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摘要

This research addresses the problem of sensor localization/selection for fault diagnostic purposes in Prognostics and Health Management (PHM)/Condition-Based Maintenance (CBM) systems. The performance of PHM/CBM systems relies not only on the diagnostic/prognostic algorithms used, but also on the types, location, and number of sensors selected. Most of the research reported in the area of sensor localization/selection for fault diagnosis focuses on qualitative analysis and lacks a uniform figure of merit. Moreover, sensor localization/selection is mainly studied as an open-loop problem without considering the performance feedback from the on-line diagnostic/prognostic system. In this research, a novel approach for sensor localization/selection is proposed in an integrated diagnostic/prognostic architecture to achieve maximum diagnostic performance.; First, a fault detectability metric is defined quantitatively. A novel graph-based approach, the Quantified-Directed Model, is called upon to model fault propagation in complex systems and an appropriate figure-of-merit is defined to maximize fault detectability and minimize the required number of sensors while achieving optimum performance.; Secondly, the proposed sensor localization/selection strategy is integrated into a diagnostic/prognostic system architecture while exhibiting attributes of flexibility and scalability. Moreover, the performance is validated and verified in the integrated diagnostic/prognostic architecture, and the performance of the integrated diagnostic/prognostic architecture acts as useful feedback for further optimizing the sensors considered. The approach is tested and validated through a five-tank simulation system.; This research has led to the following major contributions: (1) A generalized methodology for sensor localization/selection for fault diagnostic purposes. (2) A quantitative definition of fault detection ability of a sensor, a novel Quantified-Directed Model (QDG) method for fault propagation modeling purposes, and a generalized figure of merit to maximize fault detectability and minimize the required number of sensors while achieving optimum diagnostic performance at the system level. (3) A novel, integrated architecture for a diagnostic/prognostic system. (4) Validation of the proposed sensor localization/selection approach in the integrated diagnostic/prognostic architecture.
机译:这项研究解决了预测和健康管理(PHM)/基于条件的维护(CBM)系统中用于故障诊断目的的传感器定位/选择问题。 PHM / CBM系统的性能不仅取决于所使用的诊断/预测算法,而且还取决于所选传感器的类型,位置和数量。在用于故障诊断的传感器定位/选择领域中报告的大多数研究都集中在定性分析上,缺乏统一的品质因数。此外,传感器定位/选择主要作为一个开环问题进行研究,而没有考虑来自在线诊断/诊断系统的性能反馈。在这项研究中,提出了一种用于传感器定位/选择的新方法,该方法在集成的诊断/诊断架构中可以实现最大的诊断性能。首先,定量定义故障可检测性度量。一种新颖的基于图形的方法,即量化模型,被要求对复杂系统中的故障传播进行建模,并定义适当的品质因数,以最大程度地提高故障可检测性并减少所需的传感器数量,同时实现最佳性能。其次,将所提出的传感器定位/选择策略集成到诊断/预后系统架构中,同时展现出灵活性和可扩展性。此外,在集成的诊断/诊断体系结构中对性能进行了验证和验证,并且集成的诊断/诊断体系结构的性能充当了进一步优化所考虑传感器的有用反馈。该方法通过一个五罐仿真系统进行了测试和验证。这项研究导致了以下主要贡献:(1)一种用于故障诊断目的的传感器定位/选择的通用方法。 (2)传感器故障检测能力的定量定义,用于故障传播建模目的的新型定量定向模型(QDG)方法以及在实现最佳性能的同时最大化故障可检测性并最小化所需传感器数量的广义品质因数系统级别的诊断性能。 (3)用于诊断/预后系统的新颖的集成体系结构。 (4)在集成的诊断/预后架构中验证所提出的传感器定位/选择方法。

著录项

  • 作者

    Zhang, Guangfan.;

  • 作者单位

    Georgia Institute of Technology.;

  • 授予单位 Georgia Institute of Technology.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2005
  • 页码 126 p.
  • 总页数 126
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;
  • 关键词

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