首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part G: Journal of Aerospace Engineering >Fault detection and isolation in aircraft gas turbine engines. Part 2: validation on a simulation test bed
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Fault detection and isolation in aircraft gas turbine engines. Part 2: validation on a simulation test bed

机译:飞机燃气涡轮发动机中的故障检测和隔离。第2部分:在模拟测试床上进行验证

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摘要

The first part of this two-part paper, which is a companion paper, has developed a novel concept of fault detection and isolation (FDI) in aircraft gas turbine engines. The FDI algorithms are built upon the statistical pattern recognition method of symbolic dynamic filtering (SDF) that is especially suited for real-time detection and isolation of slowly evolving anomalies in engine components, in addition to abrupt faults. The FDI methodology is based on the analysis of time series data of available sensors and/or analytically derived variables in the gas path dynamics. The current paper, which is the second of two parts, validates the algorithms of FDI, formulated in the first part, on a simulation test bed. The test bed is built upon an integrated model of a generic two-spool turbofan aircraft gas turbine engine including the engine control system.
机译:这个由两部分组成的论文的第一部分是伴随论文,它提出了一种新颖的概念,用于飞机燃气涡轮发动机的故障检测和隔离(FDI)。 FDI算法建立在符号动态过滤(SDF)的统计模式识别方法的基础上,该方法特别适用于实时检测和隔离发动机组件中缓慢发展的异常以及突发故障。 FDI方法论基于对可用传感器的时间序列数据和/或气路动力学中解析得出的变量的分析。本文是两部分中的第二部分,它在第一部分的模拟测试台上验证了FDI的算法,该算法是在第一部分中制定的。该试验台基于包括发动机控制系统的通用两阀涡扇飞机燃气涡轮发动机的集成模型构建。

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