针对时域盲解卷积算法对单一故障机械声信号有效,及传统稀疏分量分析对声信号分析失效等问题,提出一种盲解卷积、形态滤波和频域压缩感知重构的稀疏分量分析相结合的轴承复合故障声学诊断方法。通过时域盲解卷积算法优选分量结果,提取声信号的冲击成分。使用形态滤波滤除背景噪声。使用模糊C均值聚类估计混合矩阵,重构传感矩阵,并运用稀疏度自适应匹配追踪基算法(Sparsity adaptive matching pursuit, SAMP)的频域压缩感知重构分离信号。双通道滚动轴承故障声信号分析结果表明该方法能够有效分离和提取滚动轴承故障特征。
周俊
,
伍星
,
迟毅林
,
潘楠
,
刘畅
. 盲解卷积和频域压缩感知在轴承复合故障声学诊断的应用[J]. 机械工程学报, 2016
, 52(3)
: 63
-70
.
DOI: 10.3901/JME.2016.03.063
According to the problem of time-domain blind deconvolution algorithm is active only for a single fault mechanical sound signal, and the traditional sparse component analysis is failure to the acoustic signal analysis, a method based on blind deconvolution, morphological filtering and frequency domain compressed sensing reconstruction of sparse component analysis is proposed to deal with the composite acoustics bearing fault diagnosis. The time-domain blind deconvolution algorithm is used to prefer solution components result as well as to extract the impact component of the acoustic signal. Background noise is filtered out by using the morphological filtering. By using fuzzy C-means clustering estimated mixing matrix, the sensor matrix is remodeled based on mixing matrix, and the sparsity adaptive matching pursuit based algorithm of frequency-domain compressed sensing algorithm is used to reconstruct the separated signals. Dual real rolling bearing fault acoustic signal analysis results show that this method can effectively separate and extract the rolling bearing fault characteristics.
[1] 唐力伟,杨通强,郑海起,等. 用声测信号辨识齿轮齿根裂纹故障的研究[J]. 振动、测试与诊断,2000,20:107-110. TANG Liwei,YANG Tongqiang,ZHENG Haiqi,et al. Research on identifying the crack at a gear’s root using noise signals[J]. Journal of Vibration,Measurement&Diagnosis,2000,20:107-110.
[2] 吴军彪,陈进,钟平,等. 声学故障诊断中的宽带相关噪声信号分离方法[J]. 振动、测试与诊断,2003,23(1):26-29. WU Junbiao,CHEN Jin,ZHONG Ping,et al. Separation of wide-band coherent noise signals in acoustic based diagnosis[J]. Journal of Vibration,Measurement&Diagnosis,2003,23(1):26-29.
[3] ROUTRAY A D,DASH N. Robust preprocessing: Denoising and whitening in the context of blind source separation of instantaneous mixtures[C]// Industrial Informatics,In 2007 5th IEEE International Conference on,23-27 June,2007:377-380.
[4] LU Wenbo,JIANG Weikang,WU Haijun,et al. A fault diagnosis scheme of rolling element bearing based on near-field acoustic holography and gray level co-occurrence matrix[J]. Journal of Sound and Vibration,2012,331(15):3663-3674.
[5] AMARNATH M,PRAVEEN K I. Empirical mode decomposition of acoustic signals for diagnosis of faults in gears and rolling element bearings[J]. IET Science,Measurement & Technology,2012,6:279-287.
[6] LAW L S,KIM J H,LIEW W Y,et al. An approach based on wavelet packet decomposition and Hilbert-Huang transform(WPD-HHT) for spindle bearings condition monitoring[J]. Mechanical Systems and Signal Processing,2012,33:197-211.
[7] 鲁文波,蒋伟康. 利用声场空间分布特征诊断滚动轴承故障[J]. 机械工程学报,2012,48(3):68-72. LU Wenbo,JIANG Weikang. Diagnosing rolling bearing faults using spatial distribution features of sound field[J]. Journal of Mechanical Engineering,2012,48(3):68-72.
[8] 黄平平. 基于EMD的齿轮变速箱声学故障诊断[D]. 太原:中北大学,2012. HUANG Pingping. The acoustics fault diagnosis of gear box based on EMD[D]. Taiyuan:North Central College,2012.
[9] 王宇,伍星,迟毅林,等. 基于盲解卷积和聚类的机械弱冲击声信号提取[J]. 振动工程学报,2009,22(6):620-624. WANG Yu,WU Xing,CHI Yilin,et al. Weak transient impulse signal extraction based on blind deconvolution and cluster in acoustical machine diagnosis[J]. Journal of Mechanical Engineering,2009,22(6):620-624.
[10] 王宇,迟毅林,伍星,等. 一种改进盲解卷积算法在轴承声学诊断的应用[J]. 振动与冲击,2010,29(6):11-14,24. WANG Yu,WU Xing,CHI Yilin,et al. Application of an improved blind deconvolution algorithm to acoustic-based rolling bearing defect detection[J]. Journal of Vibration and Shock,2010,29(6):11-14,24.
[11] 潘楠,伍星,迟毅林,等. 欠定盲解卷积用于滚动轴承复合故障声学诊断[J]. 振动、测试与诊断,2013,33(2):284- 289. PAN Nan,WU Xing,CHI Yilin,et al. The diagnosis of rolling bearing compound fault based on Underdetermined blind deconvolution[J]. Journal of Vibration,Measurement&Diagnosis,2013,33(2):284-289.
[12] 潘楠,伍星,迟毅林,等. 基于频域盲解卷积的齿轮箱复合故障声学诊断[J]. 振动与冲击,2013,32(7):146-150. PAN Nan,WU Xing,CHI Yilin,et al. Acoustical diagnosis for gear box combined failures based on frequency domain blind deconvolution[J]. Journal of Vibration and Shock,2013,32(7):146-150.
[13] GUO Chunli,DAVIES M E. Near optimal compressed sensing priors:Parametric sure approximate message passing[J]. Signal Processing,2015,63(8):2130-2141.
[14] 余丰,奚吉,张力,等. 基于CS与K-SVD的欠定盲源分离稀疏分量分析[J]. 东南大学学报,2011,41(6):1127-1131. YU Feng,XI Ji,ZHANG Li,et al. Sparse presentation of underdetermined blind source separation based on compressed sensing and K-SVD[J]. Journal of Southeast University,2011,41(6):1127-1131.
[15] 李丽娜,曾庆勋,甘晓晔,等. 基于势函数与压缩感知的欠定盲源分离[J]. 计算机应用,2014,34(3):658-662,667. LI Lina,ZENG Qingxun,GAN Xiaoye,et al. Under-determined blind source separation based on potential function and compressive sensing[J]. Journal of Computer Applications,2014,34(3):658-662,667.
[16] 刘冰. 压缩感知框架下信号检测与参数估计算法研究[D]. 哈尔滨:哈尔滨工业大学,2012. LIU Bing. Research on signal detection and parameter estimation algorithms within the compressive sensing framework[D]. Harbin:Harbin Institute of Technology,2012.