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An intelligent data filtering and fault detection method for gas turbine engines

机译:燃气轮机发动机智能数据滤波和故障检测方法

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摘要

In a gas turbine fault diagnostics, the removal of measurement noise and data outliers prior to the fault analysis is very essential. The conventional filtering methods, particularly the linear ones, are not sufficiently accurate, which might possibly lead to the loss of critically important features in the fault analysis process. Conversely, the recorded accuracies obtained from the non-linear filters are promising. Recently, the focus has been shifted to the artificial neural network (ANN) based nonlinear filters due to their capability of providing a robust identity map between the input and output data, which can be efficiently exploited in the process of fault diagnosis. This paper aims to present combined auto-associative neural network (AANN) and K-nearest neighbor (KNN) based noise reduction and fault detection method for a gas turbine engine application. The performance of the developed method has been evaluated using data obtained from a model simulation. The test results revealed that the developed hybrid method is more effective and reliable than the conventional methods for the fault detection of the gas turbine engine with negligible false alarms and missed detections.
机译:在燃气轮机故障诊断中,在故障分析之前,去除测量噪声和数据转位是非常重要的。传统的过滤方法,特别是线性的过滤方法是不够准确的,这可能导致故障分析过程中的重点重要特征。相反,从非线性滤波器获得的记录精度是有前途的。最近,由于它们在输入和输出数据之间提供了稳健的身份映射的能力,该焦点已经转移到基于人工神经网络(ANN)的非线性滤波器,这可以在故障诊断过程中有效地利用。本文旨在向燃气涡轮发动机应用呈现基于自动关联神经网络(AANN)和K最近邻(KNN)的噪声降低和故障检测方法。已经使用从模型模拟中获得的数据进行了评估了开发方法的性能。测试结果表明,开发的混合方法比传统方法更有效可靠,用于燃气涡轮发动机的故障检测具有可忽略的误报和错过检测。

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