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Diagnosis for Engine Misfire Fault Based on Torsional Vibration and Neural-network Analysis

机译:基于扭转振动和神经网络分析的发动机失火故障诊断

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Misfire is a common fault which affects the engine performances. Because the signal-to-noise ratio of torsional vibration signal is high, torsional vibration test and analysis for the engine were performed in a variety of operating conditions, including healthy condition and single-cylinder misfire condition. In order to improve the accuracy of analysis, energy centrobaric correction method was used to correct the amplitude. Taking the corrected amplitude of main order as the fault feature, and then a BP neural-network diagnostic model can be established for misfire diagnosis. The result shows that the method of combining torsional vibration signal analysis and neural-network can diagnose engine misfire fault correctly.
机译:失火是一种影响发动机性能的常见故障。因为扭转振动信号的信噪比是高的,所以在各种操作条件下进行扭转振动测试和发动机的分析,包括健康状况和单缸失火条件。为了提高分析的准确性,使用能源中心校正方法来校正幅度。以故障特征为主秩序的校正幅度,然后可以建立BP神经网络诊断模型以进行失火诊断。结果表明,组合扭转振动信号分析和神经网络的方法可以正确诊断发动机失火故障。

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