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首页> 外文期刊>Advanced Science Letters >Rolling Element Bearing Fault Diagnosis Based on Symptom Parameter Wave of Acoustic Emission Signal
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Rolling Element Bearing Fault Diagnosis Based on Symptom Parameter Wave of Acoustic Emission Signal

机译:基于声发射信号症状参数波的滚动轴承故障诊断

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摘要

Due to the formation mechanism, AE technique has shown improved ability and performance on condition monitoring and fault diagnosis for rolling element bearing relative to vibration detection technique, especially on the detection of early defects. This article proposes a method of feature extraction applied on incipient fault AE signal of bearing. A method based on symptom parameter index and its derived mode according to information theory is presented to extract the fundamental information of fault such as the time and intensity of failure. Subsequently, a method compounding envelope analysis and power spectrum analysis dealing with symptom parameter index is proposed to discriminate fault patterns. Both simulated and experimental AE signals are used to verify the efficiency and accuracy of the proposed method. In conclusion it is shown that this detecting process can effectively extract fault feature and identify the fault types.
机译:由于形成机理,相对于振动检测技术,尤其是在早期缺陷的检测上,AE技术在滚动轴承的状态监测和故障诊断方面表现出了提高的能力和性能。提出了一种应用于轴承初生故障AE信号的特征提取方法。提出了一种基于信息理论的基于症状参数指标及其推导模式的方法,以提取故障的基本信息,例如故障的时间和强度。随后,提出了一种将包络分析和功率谱分析相结合的处理症状参数指标的方法来识别故障模式。仿真和实验AE信号均用于验证所提方法的效率和准确性。总之,表明该检测过程可以有效地提取故障特征并识别故障类型。

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