首页> 外文会议>American Society of Mechanical Engineers(ASME) Turbo Expo vol.2; 20040614-17; Vienna(AT) >TURBINE ENGINE MODELING USING TEMPORAL NEURAL NETWORKS FOR INCIPIENT FAULT DETECTION AND DIAGNOSIS
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TURBINE ENGINE MODELING USING TEMPORAL NEURAL NETWORKS FOR INCIPIENT FAULT DETECTION AND DIAGNOSIS

机译:基于临时神经网络的涡轮发动机故障诊断与诊断

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摘要

We present a method of fault detection and diagnosis in turbine engines using temporal neural networks. Temporal neural networks allow us to represent the complete engine operating range by complementing the first-principle models which are usually restricted to takeoff and cruise phases. Because faults that are manifest only in particular phases can be detected, complete coverage leads to more accurate anomaly detection and fault diagnosis systems. The time series sensor data from the engine is collected during particular aircraft flight phases such as startup, takeoff, cruise, and shutdown. We use the echo state network to develop an incipient fault detection and diagnosis system. Echo state networks have several advantages over conventional types of temporal neural networks, including accuracy and ease of training. We demonstrate the efficacy of using the echo state networks to focus on flight phases that are difficult to model. We present results of our fault detection and diagnosis method with actual propulsion engine transient flight data.
机译:我们提出了一种使用时态神经网络的涡轮发动机故障检测与诊断的方法。时态神经网络通过补充通常限于起飞和巡航阶段的第一原理模型,使我们能够代表完整的发动机工作范围。因为可以检测到仅在特定阶段才表现出的故障,所以完整的覆盖范围将导致更准确的异常检测和故障诊断系统。来自发动机的时间序列传感器数据是在特定的飞机飞行阶段(例如启动,起飞,巡航和停机)收集的。我们使用回波状态网络来开发早期故障检测和诊断系统。回声状态网络相对于传统类型的时态神经网络具有多个优势,包括准确性和易于训练。我们证明了使用回波状态网络集中于难以建模的飞行阶段的功效。我们用实际的发动机瞬态飞行数据提供了故障检测和诊断方法的结果。

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