研究针对滚动轴承故障诊断中的类型和位置分析问题,提出了一种基于集合经验模态分解(EEMD)的声阵列滚动轴承故障诊断分析方法。以EEMD分解信号的峭度和能量作为评价指标,提取包含故障信息的IMF分解信号,根据滚动轴承理论故障频率及其倍频分析对分解信号进行窄带滤波后通过Hilbert包络谱实现故障类型判断,通过对窄带滤波后的分解信号使用声阵列技术进行声像分析实现滚动轴承故障定位分析。最后通过试验进行了方法验证,结果表明过使用基于EEMD分解的阵列分析方法,可更为直观确定故障位置和故障类型,有利于有轨机车等多轴承驱动系统轴承故障的快速和实时诊断,对于确定检修、制定合理维修决策、改进维修质量具有十分重要指导意义。
For further study about diagnosis of the fault type and location forthe rolling bearing,the method by using the acoustic array signals analysis with EEMD decomposition is proposed. Based on the kurtosis and power index values,the EEMD decomposition is carried out and the IMF component including faults information is extracted. After computing the theoretical fault frequency and the harmonics of the bearing's components,the narrow band filter is used for the extracted IMF component and Hilbert transform is done consciously for envelope spectrum,which is used to determine the fault type. Also the extracted IMF components filtered with narrow band filter for each acoustic array signals are used as input signals for the acoustical image analysis to the fault location. Finally,the verified experiments are carried out and results showed thatby using this method the diagnosis could be more intuitive to determine the fault location and fault types,which is better forthe bearing fault determination of the drive system,the maintenance and reasonable maintenance decision and improving the service quality.