用贝叶斯信念网络诊断航天飞机主发动机部件故障的可行性研究

E. Liu, Du Zhang
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引用次数: 20

摘要

航天飞机是一个高可靠性的系统,但必须对其状态进行实时准确诊断。有两个问题困扰着这个系统——虚报可能代价高昂,漏报可能不仅代价高昂,而且对机组人员也有危险。本文描述了一项可行性研究的结果,该研究将多元状态估计技术与贝叶斯信念网络相结合,为航天飞机主发动机(SSME)提供故障检测和故障诊断能力。在我们的研究中模拟了五种组件故障模式和几种单传感器故障,并正确诊断了故障。结果表明,该方法是一种可行的故障检测与诊断技术,可以比标准的红线方法更早地进行故障检测与诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diagnosis of component failures in the Space Shuttle main engines using Bayesian belief networks: a feasibility study
Although the Space Shuttle is a high reliability system, its condition must he accurately diagnosed in real-time. Two problems plague the system - false alarms that may be costly, and missed alarms which may be not only expensive, but also dangerous to the crew. This paper describes the results of a feasibility study in which a multivariate state estimation technique is coupled with a Bayesian belief network to provide both fault detection and fault diagnostic capabilities for the Space Shuttle main engines (SSME). Five component failure modes and several single sensor failures are simulated in our study and correctly diagnosed. The results indicate that this is a feasible fault detection and diagnosis technique and fault detection and diagnosis can he made earlier than standard redline methods allow.
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