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Research on Feature Extraction Method of Engine Misfire Fault Based on Signal Sparse Decomposition

机译:基于信号稀疏分解的发动机失火故障特征提取方法研究

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Engine vibration signals are easy to be interfered by other noise, causing feature signals that represent its operating status get submerged and further leading to difficulty in engine fault diagnosis. In addition, most of the signals utilized to verify the extraction method are derived from numerical simulation, which are far away from the real engine signals. To address these problems, this paper combines the priority of signal sparse decomposition and engine finite element model to research a novel feature extraction method for engine misfire diagnosis. Firstly, in order to highlight resonance regions related with impact features, the vibration signal is performed with a high-pass filter process. Secondly, the dictionary with clear physical meaning is constructed by the unit impulse function, whose parameters are associated with engine system modal characteristics. Afterwards, the signals that indicate the engine operating status are accurately reconstructed by segmental matching pursuit. Finally, a series of precise simulation signals originated from the engine dynamic finite element model, and experimental signals on the automotive engine are used to verify the proposed method’s effectiveness and antinoise performance. Additionally, comparisons with wavelet decomposition further show the proposed method to be more reliable in engine misfire diagnosis.
机译:发动机振动信号容易被其他噪声干扰,导致表示其操作状态的特征信号被淹没并且进一步导致发动机故障诊断难以困难。另外,利用用于验证提取方法的大多数信号源自来自数值模拟,这些模拟远离真实发动机信号。为了解决这些问题,本文结合了信号稀疏分解和发动机有限元模型的优先级,以研究发动机失火诊断的新颖特征提取方法。首先,为了突出与冲击特征相关的共振区域,通过高通滤波器处理执行振动信号。其次,具有明确物理含义的字典由单元脉冲函数构成,其参数与发动机系统模态特性相关联。之后,通过分段匹配追求精确地重建指示发动机运行状态的信号。最后,源自发动机动态有限元模型的一系列精确仿真信号,以及汽车发动机上的实验信号用于验证所提出的方法的效率和抗侵害性能。另外,具有小波分解的比较进一步示出了在发动机失火诊断中更可靠的方法。

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