Acoustic fault diagnosis method based on spatial features of a 3D sound field

HOU Jun-jian1,2,WU Yan-ling1,2,HE wen-bin1,2,FANG Zhan-peng1,2,XIAO Yan-qiu1,2

Journal of Vibration and Shock ›› 2018, Vol. 37 ›› Issue (13) : 1-6.

PDF(2076 KB)
PDF(2076 KB)
Journal of Vibration and Shock ›› 2018, Vol. 37 ›› Issue (13) : 1-6.

Acoustic fault diagnosis method based on spatial features of a 3D sound field

  • HOU Jun-jian1,2 ,WU Yan-ling1,2 ,HE wen-bin1,2 ,FANG Zhan-peng1,2,XIAO Yan-qiu1,2
Author information +
History +

Abstract

The fault diagnosis method based on acoustic images improves the robustness of traditional acoustic diagnosis with the single-channel test technique. But the problems of lower recognition rate and harder diagnosis exist under weaker fault conditions due to neglecting the spatial phase information of acoustic images. Aiming at the problems mentioned above, an acoustic fault diagnosis method based on spatial features of a 3D sound field was proposed using an idea of information mapping and fusion. Firstly, a radiation sound field under weaker fault conditions was constructed employing the near-field acoustic holography technique. The phase information of the sound source was mapped into spatial domain. The point sound pressure distribution of a 3D field was obtained. Then, 13 spatial slips of the radiation sound field were picked up sequentially within a wavelength, and each spatial slip’s Gabor wavelet features were extracted to build a feature model of the spatial sound field for recognition and diagnosis. The simulation and test results showed that the proposed acoustic fault diagnosis method based on spatial features of a 3D sound field can effectively improve the fault diagnosis robustness under weaker fault conditions to further extend the engineering application of acoustic imaging technique, it provides a new idea for the acoustic fault diagnosis.

Key words

 3D sound field / wavelet features / near-field acoustic holography / fault diagnosis

Cite this article

Download Citations
HOU Jun-jian1,2,WU Yan-ling1,2,HE wen-bin1,2,FANG Zhan-peng1,2,XIAO Yan-qiu1,2. Acoustic fault diagnosis method based on spatial features of a 3D sound field[J]. Journal of Vibration and Shock, 2018, 37(13): 1-6

References

[1]陈胜义. 基于小波分析和BP神经网络的微电机故障诊断方法研究[D]. 广东工业大学,2013.
CHEN Sheng-yi. Micro motor fault diagnosis based on wavelet analysis and BP neural network[D]. Guangdong University of Technology ,2013.
[2]李常有,徐敏强,郭耸. 利用声信号对滚动轴承进行故障诊断的研究[J]. 应用声学,2008,27(04):315-320.
LI Chang-you, XU Min-qiang,Guo Song. Diagnosis of rolling element bearing fault using acoustic signal[J]. Applied Acous-tics,2008,27(04):315-320.
[3] 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 Yi-lin, 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.
[4]侯俊剑,蒋伟康. 基于声成像模式识别的故障诊断方法研究[J]. 振动与冲击,2010,29(08):22-25.
HOU Jun-jian , JIANG Wei-kang. Study on method of fault diagnosis based on acoustic images pattern recognition [J]. Journal of Vibration and Shock, 2010 ,29(08):22-25.
[5]张璐,崔倩倩,张昆亚等. 基于X射线相位衬度成像技术的兔眼球血管重建[J]. 医用生物力学,2014,29(01):46-52.
ZHANG Lu, CUI Qian-qian, ZHANG Kun-ya, et.al. Three-dimensional reconstruction of rabbit eye vessels based on X-ray phase contrast imaging technique[J]. Journal of Medical Biomechanic,2014,29(01):46-52.
[6] Hou J J, Jiang W K, Lu W B. Application of a near-field acous¬tic holography-based diagnosis technique in gearbox fault diagnosis[J]. Journal of Vibration and Control,2013,19(01) 3-13.
[7] Lu W B, Jiang W K, Wu H J , 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.
[8]鲁文波,蒋伟康,侯俊剑. 基于波束形成声像图纹理特征的机械故障诊断方法[J]. 振动工程学报,2011,24(04):428-434.
LU Wen-bo, JIANG Wei-kang, HOU Jun-jian. Approach of mechanical fault diagnosis based on textural features of beamforming acoustic images[J]. Journal of Vibration Engineering, 2011, 24(04) :428-434.
[9]张刚,马宗民. 一种采用Gabor小波的纹理特征提取方法[J]. 中国图象图形学报,2010,15(02):247-254.
ZHANG Gang , MA Zong-min. An approach of using Gabor wave¬lets for texture feature extraction [J]. Journal of Image and Graphics, 2010,15(02):247-254.
[10]朱峰,王海丰,任洪娥. 基于Gabor变换的纹理图像分割算法及应用[J]. 森林工程,2013,(05):60-63.
ZHU Feng, WANG Hai-feng, REN Hong-e, et.al. Research on Texture Image Segmentation Algorithm and Its Application Based on Gabor Wavelet Transform[J]. Forest Engineer, 2013,29(05): 60-63.
[11] Zhang D S, A Wong, M Indrawan, et a1. Content based image retrieval using Gabor texture features [C] Proceedings of IEEE Pacific Rim Conference on Multimedia. Sydney, Ausualia: IEEE Press, 2000: 392-395.
[12]K B, M Madheswaran, K Thyagarajah. Texture pattern analysis of kidney tissues for disorder identification and classification using dominant Gabor wavelet[J]. Machine Vision and Applications, 2010, 21(03): 287-300.
[13]郭依正,陈健美,宋余庆,等. 医学肝脏图像Gabor小波纹理特征研究[J]. 计算机应用与软件, 2008, 25(11): 44-46.
GUO Yi-zheng , CHEN Jian-mei ,SONG Yu-qing, et al . On Ga¬bor wavelet texture feature of liver image [J]. Computer Applica¬tions and Software, 2008, 25(11): 44-46.
[14] 司莉,毕贵红,魏永刚等. 基于RQA与SVM的声发射信号检测识别方法[J]. 振动与冲击,2016,35(2):97-103.
SI Li, BI Gui-hong, WEI Yong-gang, et.al. Detection and identification of acoustic emission signals based on recurrence quantification analysis and support vector machines[J]. Journal of Vibration and Shock, 2016,35(2):97-103.
[15]丁世飞,齐丙娟,谭红艳. 支持向量机理论与算法研究综述[J].电子科技大学学报,2011,40(01):2-10.
DING Shi-fei , QI Bing-juan, TAN Hong-Yan. An overview on theory and algorithm of support vector machines[J]. Journal of University of Electronic Science and Technology of China,2011,40(01):2-10.
[16]王恺,关少卿,汪令祥,等. 基于模糊信息粒化和最小二乘支持向量机的风电功率联合预测建模[J]. 电力系统保护与控制,2015,43(02):26-32.
WANG Kai, GUAN Shao-qing, WANG Ling-xiang, et al. A com¬bined forecasting model for wind power predication based on fuzzy information granulation and least squares support vector ma¬chine[J]. Power System Protection and Control, 2015,43(02):26-32.
PDF(2076 KB)

Accesses

Citation

Detail

Sections
Recommended

/