scholarly journals The Rational Spline Interpolation Based-LOD Method and Its Application to Rotating Machinery Fault Diagnosis

2020 ◽  
Vol 10 (4) ◽  
pp. 1259
Author(s):  
Xiaorui Niu ◽  
Kang Zhang ◽  
Chao Wan ◽  
Xiangmin Chen ◽  
Lida Liao ◽  
...  

Local oscillatory-characteristic decomposition (LOD) is a relatively new self-adaptive time-frequency analysis methodology. The method, based on local oscillatory characteristics of the signal itself uses three mathematical operations such as differential, coordinate domain transform, and piecewise linear transform to decompose the multi-component signal into a series of mono-oscillation components (MOCs), which is very suitable for processing multi-component signals. However, in the LOD method, the computational efficiency and real-time processing performance of the algorithm can be significantly improved by the use of piecewise linear transformation, but the MOC component lacks smoothness, resulting in distortion. In order to overcome the disadvantages mentioned above, the rational spline function that spline shape can be adjusted and controlled is introduced into the LOD method instead of the piecewise linear transformation, and the rational spline-local oscillatory-characteristic decomposition (RS-LOD) method is proposed in this paper. Based on the detailed illustration of the principle of RS-LOD method, the RS-LOD, LOD, and empirical mode decomposition (EMD) are compared and analyzed by simulation signals. The results show that the RS-LOD method can significantly improve the problem of poor smoothness of the MOC component in the original LOD method. Moreover, the RS-LOD method is applied to the fault feature extraction of rotating machinery for the multi-component modulation characteristics of rotating machinery fault vibration signals. The analysis results of the rolling bearing and fan gearbox fault vibration signals show that the RS-LOD method can effectively extract the fault feature of the rotating mechanical vibration signals.

Author(s):  
Sang-Kwon Lee ◽  
Paul R. White

Abstract Impulsive acoustic and vibration signals within rotating machinery are often induced by irregular impacting. Thus the detection of these impulses can be useful for fault diagnosis. Recently there is an increasing trend towards the use of higher order statistics for fault detection within mechanical systems based on the observation that impulsive signals tend to increase the kurtosis values. We show that the fourth order Wigner Moment Spectrum, called the Wigner Trispectrum, has superior detection performance to second order Wigner distribution for typical impulsive signals found in a condition monitoring application. These methods are also applied to data sets measured within a car engine and industrial gearbox.


2020 ◽  
Vol 36 (5) ◽  
pp. 657-665
Author(s):  
Songnan Chen ◽  
Mengxia Tang ◽  
Jiangming Kan

Abstract.With the integration and scale of pig breeding, the frequency of some diseases is also increasing. To automatically detect porcine reproductive and respiratory syndrome (PRRS) during the pig cultivation process, this article proposes an improved method for pig ear extraction that is based on the active contour model. Firstly, we use the Gaussian scale space filtering and piecewise linear transformation algorithm to highlight the target zones of interest. Secondly, we use a randomly picked ear image point to reconstruct the image region and combine the active contour model to coarse segment the ear image. Finally, by taking advantage of the modified active contour model, the method precisely extracts the pig ear image. The experimental result shows that the proposed method can achieve better segmentation results. The segmentation accuracy of the image of pig contains only one ear can exceed 90%, and the accuracy of the image of pig contains two ears is greater than 85%. Keywords: Active contour model, Ear extraction, Image enhancement, Spline interpolation.


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