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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Aeroengine Control System Sensor Fault Diagnosis Based on CWT and CNN
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Aeroengine Control System Sensor Fault Diagnosis Based on CWT and CNN

机译:航空预报控制系统传感器故障诊断基于CWT和CNN

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The aeroengine control system is a piece of complex thermal machinery which works under high-speed, high-load, and high-temperature environmental conditions over lengthy periods of time; it must be designed for the utmost reliability and safety to function effectively. The consequences of sensor faults are often extremely serious. The inherent complexity of the engine structure creates difficulty in establishing accurate mathematical models for the model-based sensor fault diagnosis. This paper proposes an intelligent fault diagnosis method for aeroengine sensors combining a deep learning algorithm with time-frequency analysis wherein the signal recognition problem is transformed into an image recognition problem. The continuous wavelet transform (CWT) is first applied to seven common health condition signals in an engine control system sensor in order to generate scalograms that capture the characteristics of the signal. A convolutional neural network (CNN) model trained with preprocessed and labeled datasets is then used to extract the features of a time-frequency graph based on which faults can be identified and isolated. This method does not require modeling and design thresholds, so it has strong robustness and accuracy rate of over 97%. The trained model effectively reveals faults in sensor signals and allows for accurate identification of fault types.
机译:航空发动机控制系统是一款复杂的热机械,在高速,高负荷和高温环境条件下工作,在漫长的时间段内;它必须设计以有效地运行最高的可靠性和安全性。传感器故障的后果通常非常严重。发动机结构的固有复杂性在建立基于模型的传感器故障诊断的准确数学模型方面产生难度。本文提出了一种与时频分析中的深度学习算法组合的航空发动机传感器的智能故障诊断方法,其中将信号识别问题变换为图像识别问题。首先将连续小波变换(CWT)应用于发动机控制系统传感器中的七个常见的健康状况信号,以便产生捕获信号特性的缩放图。然后,使用预处理和标记数据集训练的卷积神经网络(CNN)模型来提取基于可以识别和隔离的故障的时频图的特征。该方法不需要建模和设计阈值,因此它具有超过97%的强大鲁棒性和精度率。训练有素的模型有效地揭示了传感器信号中的故障,并允许精确识别故障类型。

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