首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part O. Journal of Risk and Reliability >Data mining-based intelligent fault diagnostics for integrated system health management to avionics
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Data mining-based intelligent fault diagnostics for integrated system health management to avionics

机译:基于数据挖掘的智能故障诊断,可对航空电子设备进行集成系统健康管理

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Space avionics are the essential capabilities of a spacecraft that guarantee space flight safety and mission success. One of the most important elements developed to deal with the health of the space avionics is the integrated system health management. Fault diagnostics, a safety-critical process in the integrated system health management, has become more complex as the number of avionics systems within the spacecraft has grown, so failure data are now multidimensional, often incomplete, and have cumulatively acquired uncertainties. Therefore, an accurate fault diagnostics model is needed to handle these types of data and ensure information is adequately adapted and efficiently updated. To date, there has been little research focused on efficient and effective space avionics fault diagnostics. This article presents a novel integrated system health management-oriented intelligent diagnostics methodology based on data mining. A numerical example is provided to illustrate the methodology, which demonstrates the significant benefits of data mining for the efficient processing of massive, incomplete data, and the ability of using a robust diagnostic Bayesian network to identify faults with uncertainty in a dynamic environment. The combined approach shows how some limitations can be overcome with an improved diagnostic performance. For application, sensory information must initially be discretized to Boolean values. Data mining is then used to mine for useful association rules and to learn the dynamic Bayesian network structure. After parameter training, the diagnostics is conducted. This methodology can be applied to systems of varying sizes and is flexible enough to accommodate other efficient diagnostic methods.
机译:航空电子设备是航天器的基本功能,可确保太空飞行安全和任务成功。开发来应对航空电子设备健康的最重要元素之一是集成系统健康管理。故障诊断是集成系统健康管理中至关重要的安全过程,随着航天器中航空电子系统数量的增加而变得更加复杂,因此故障数据现在是多维的,通常是不完整的,并且累积了不确定性。因此,需要一个准确的故障诊断模型来处理这些类型的数据,并确保适当地调整信息并有效地对其进行更新。迄今为止,很少有研究集中在高效航空航天电子故障诊断上。本文提出了一种基于数据挖掘的面向集成系统健康管理的新型智能诊断方法。提供了一个数值示例来说明该方法,该方法演示了数据挖掘对有效处理大量不完整数据的显着好处,以及使用强大的诊断贝叶斯网络来识别动态环境中不确定性故障的能力。组合方法显示了如何通过改进的诊断性能来克服某些局限性。对于应用,感官信息必须首先离散化为布尔值。然后,使用数据挖掘来挖掘有用的关联规则并学习动态贝叶斯网络结构。在参数训练之后,进行诊断。该方法可以应用于大小不同的系统,并且足够灵活以适应其他有效的诊断方法。

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