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Aero-engine Gas-path Fault Diagnosis by CNN Based on QAR Data

机译:基于QAR数据的CNN航空发动机气路故障诊断

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Civil aero-engine gas-path fault diagnosis is challenging due to its complicated parametric variation mechanism and the nonlinear relationship between fault performance and parameter variation. There still lacks effective approaches to provide reliable fault detection results with the massive Quick Access Recorder(QAR) data which has been used to monitor the gas-path condition by expert experience. In this paper, we propose a novel fault diagnosis methodology using Convolutional Neural Network(CNN). We use C-MAPSS data to train the neural network. Using the theory of transfer learning, the trained neural network is used to diagnose the fault of QAR data. The diagnosis result shows the method is able to reliably monitor the aero-engine condition and detects the gas-path fault automatically.
机译:民用航空发动机气路故障诊断因其复杂的参数变化机理以及故障性能与参数变化之间的非线性关系而具有挑战性。目前仍然缺乏有效的方法,利用大量快速存取记录仪(QAR)数据提供可靠的故障检测结果,这些数据已被专家经验用于监测气路状况。本文提出了一种新的基于卷积神经网络(CNN)的故障诊断方法。我们使用C-MAPSS数据来训练神经网络。利用转移学习理论,利用训练好的神经网络对QAR数据进行故障诊断。诊断结果表明,该方法能够可靠地监测航空发动机的状态,并自动检测气路故障。

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