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Fault detection and isolation of a dual spool gas turbine engine using dynamic neural networks and multiple model approach

机译:基于动态神经网络和多模型方法的双转子燃气轮机发动机故障检测与隔离

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摘要

In this paper, a fault detection and isolation (FDI) scheme for an aircraft jet engine is developed. The proposed FDI system is based on the multiple model approach and utilizes dynamic neural networks (DNNs) to accomplish this goal. Towards this end, multiple DNNs are constructed to learn the nonlinear dynamics of the aircraft jet engine. Each DNN corresponds to a specific operating mode of the healthy engine or the faulty condition of the jet engine. Using residuals obtained by comparing each network output with the measured jet engine output and by invoking a properly selected threshold for each network, reliable criteria are established for detecting and isolating faults in the jet engine components. The fault diagnosis task consists of determining the time as well as the location of a fault occurrence subject to presence of unmodeled dynamics, disturbances, and measurement noise. Simulation results presented demonstrate and illustrate the effectiveness of our proposed dynamic neural network-based FDI strategy.
机译:本文提出了一种飞机喷气发动机的故障检测与隔离(FDI)方案。拟议的FDI系统基于多模型方法,并利用动态神经网络(DNN)来实现此目标。为此,构造了多个DNN,以学习飞机喷气发动机的非线性动力学。每个DNN对应于健康发动机的特定运行模式或喷气发动机的故障状态。使用通过将每个网络输出与测量的喷气发动机输出进行比较并通过为每个网络调用适当选择的阈值而获得的残差,可以建立可靠的标准来检测和隔离喷气发动机组件中的故障。故障诊断任务包括确定故障发生的时间和位置以及存在未建模的动力学,干扰和测量噪声的位置。给出的仿真结果证明并说明了我们提出的基于动态神经网络的FDI策略的有效性。

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