GENERALIZED AUTOCORRELATION METHOD FOR BEARING FAULT FEATURE EXTRACTION UNDER VARIABLE ROTATIONAL SPEED CONDITION

Information

  • Patent Application
  • 20240201048
  • Publication Number
    20240201048
  • Date Filed
    February 10, 2022
    2 years ago
  • Date Published
    June 20, 2024
    6 months ago
Abstract
A generalized autocorrelation method for bearing fault feature extraction under a variable rotational speed condition includes: resampling an original vibration signal in an order domain based on instantaneous phase information by using an order tracking processing method, to greatly weaken a frequency modulation phenomenon; further weakening background noise in consideration of a correlation between a plurality of adjacent fragments by using a generalized autocorrelation method; and controlling an accumulation of periodic disturbances by considering only a correlation between several adjacent signal fragments based on that conventional noise resistant correlation (NRC) methods consider a correlation between all signal fragments and cannot eliminate influence of accumulated periodic disturbances. Compared with the conventional methods, this method overcomes the difficulties caused by mutually restricting signal features, and achieves a better effect.
Description
CROSS REFERENCE TO THE RELATED APPLICATIONS

This application is the national phase entry of International Application No. PCT/CN2022/075861, filed on Feb. 10, 2022, which is based upon and claims priority to Chinese Patent Application No. 202110913667.0, filed on Aug. 10, 2021, the entire contents of which are incorporated herein by reference.


TECHNICAL FIELD

The present invention belongs to the field of signal processing, and specifically relates to a generalized autocorrelation method for bearing fault feature extraction under a variable rotational speed condition.


BACKGROUND

As rolling bearings are key components commonly used in rotating machinery, it is of great significance to inspect rolling bearings accurately as early as possible. At present, the periodic detection of signals has been widely used in the fields of fault diagnosis and state detection of mechanical equipment. Due to the inevitable presence of a large amount of noise in the detection environment, periodic detection in the presence of strong background noise has always been a difficult problem in signal detection. Conventional time-domain methods such as variability method (VM) and anti-noise correlation method (noise resistant correlation, NRC) can be used for periodic detection in the presence of strong background noise, but are only suitable for strictly periodic signals and cannot be used to process signals contaminated by a large number of accumulated cyclic disturbances.


The most commonly used periodic detection method is to directly use the traditional autocorrelation function (ACF). ACF only considers two adjacent signal blocks, so the ACF method does not have the problem of accumulation of cyclic disturbances. However, due to the presence of strong background noise, the signal obtained by the ACF through transformation from the observed signal is still overwhelmed by the background noise. Therefore, the ACF method cannot suppress the strong background noise.


SUMMARY

In view of the above technical problems, the present invention proposes a generalized autocorrelation method for bearing fault feature extraction under a variable rotational speed condition. The present invention can achieve a balance between two mutually restricting features: suppression of strong background noise, and strictly periodic signals. It is proved by simulation and experiments that the GeACF method outperforms the conventional methods.


The following technical solutions are employed in the present invention.


A generalized autocorrelation method for bearing fault feature extraction under a variable rotational speed condition is provided, the method including following steps:

    • step S1, fusing an unknown fault signal custom-character(t) and a strong white Gaussian noise signal ε(t) to obtain a measured order tracking signal custom-character(t), where the measured order tracking signal custom-character(t)=custom-character(t)+ε(t), t represents an order domain, noise ε(t)˜custom-character(0, σ2),
    • a time series custom-character=[custom-character(1), custom-character(2), . . . , custom-character(L)]T represents an implementation of a cyclic signal custom-character(t), and L represents a total number of samples;
    • step S2, truncating the measured order tracking signal custom-character(t), and when L=mN, dividing custom-character into {custom-character1, custom-character2, . . . custom-characterm},
    • where: custom-characteri=[custom-character((i−1)N+1), . . . , custom-character(iN)]T, i=1, . . . , m, m represents a number of signal fragments, and N represents a length of each of the signal fragments and is an independent variable in the function;
    • step S3, proposing a generalized autocorrelation function (GeACF) based on an original autocorrelation function (ACF),









𝓎

(
N
)


=


1

m
-
n
+
1







k
=
0


m
-
n









𝓎



k





(
N
)










    • where:

















𝓎



k





(
N
)


=


1


n

(

n
-
1

)



N









1

i

j

n




𝓎

k
+
i

T




𝓎

k
+
j




,




where n is selected manually, satisfies (223 n≤m), and represents a number of block signals; and where custom-charactercustom-characterk(N) is an NRC function:












y
k




(
N
)


=


1


n

(

n
-
1

)


N









1

i

j

n





(

𝓎

k
+
i

k

)

T




𝓎

k
+
j

k



,




where n is selected manually, satisfies 2≤n≤m, and represents a number of block signals, and custom-characterk+ik and custom-characterk+jk represent discrete vector representations of a (k+i)th signal fragment and a (k+j)th signal fragment, respectively;

    • step S4, when L=Mn+N1 and N1>0, dividing custom-character into {custom-character1,1, custom-character1,2, custom-character2,1, custom-character2,2, . . . , custom-characterm,1, custom-characterm,2, custom-characterm+1,1}, where i=1, . . . , m, N represents a length of a signal fragment and is an independent variable in the function, and
    • where:






{






𝓎

i
,
1


=


[

𝓎
(




(

i
=
1

)


N

+
1

,


,

𝓎
(



(

(

i
-
1

)

)


N

+

N
1





]

T








𝓎

i
,
2


=


[


𝓎

(



(

i
-
1

)


N

+

N
1

+
1

)

,


,

𝓎

(
iN
)


]

T





;







    • step S5, synthesizing {custom-character1,j, custom-character2,j, . . . , custom-charactermi,j} to form a new signal custom-characterj, where j=1,2, m1=m+1, m2=m, and

    • where:









{







1

[


𝓎

1
,
1

T

,

𝓎

2
,
1

T

,





𝓎


m

1

,
1

T



]

T







2

=


[


𝓎

1
,
2

T

,

𝓎

2
,
2

T

,


,

𝓎


m

2

,
2

T


]

T





;







    • proposing a generalized autocorrelation function (GeACF) custom-character(N)=custom-charactercustom-character(N1)+custom-character2custom-character(N2), where custom-character1 and custom-character2 are respectively weights of autocorrelation functions custom-character(N1) and custom-character(N2) of signals custom-character1 and custom-character2, and custom-character1+custom-character2=1;

    • step S6, for the signal custom-character of the length L≥2N, if n=2, the GeACF is equal to the ACF, i.e., custom-character(N)=custom-character(N), the GeACF being an ACF,

    • where:











𝒜

(
N
)

=





𝒴

m
,
1

T



𝒴


m
+
1

,
1



+







i
=
1


m
-
1




𝒴
i
T



𝒴

i
+
1





L
-
N


=



1

L
-
N









i
=
1


L
-
N




𝒴

(
i
)



𝒴

(

i
+
N

)


=



(
N
)




;




and

    • step S7, for the signal custom-character of the length L≥2N, an expectation of the GeACF being not greater than an average power custom-character of the original signal custom-character(t), i.e., E[custom-character(N)]≥custom-character,


      where:








𝒫
𝓍

=


1

n

(

L
-


(

N
-
1

)


N


)









i
=
0


n
-
1









j
=
1


L
-


(

N
-
1

)


N






x

(

iN
+
j

)

2



,



E
[

𝒜

(
N
)

]

=



E
[



𝓌
1




𝒜

𝓇
1


(

N
1

)


+


𝓌
2




𝒜

𝓇
2


(

N
2

)



]










i
=
1

n



(








k
=
0



m
1

-
n




x


k
+
1

,
1

T



x

k
+
i



,

1
+







k
=
0



m
2

-
n




x


k
+
i

,
2

T



x

k
+
i




,
2

)





n

(


m
i

-
n
+
1

)



N
1


+


n

(


m
2

-
n
+
1

)



N
2





=


1

n

(

L
-


(

N
-
1

)


N


)









i
=
0


n
-
1









j
=
1


L
-


(

N
-
1

)


N







x

(

iN
+
j

)

2

.








The beneficial effects of the present invention are as follows. A generalized autocorrelation method for bearing fault feature extraction under a variable rotational speed condition is provided, which can overcome the two mutually restricting difficulties: strong background noise and accumulation of periodic disturbances. It is proved by simulation and experiments that this method has better performance than conventional methods. The present invention discloses a generalized autocorrelation method for bearing fault feature extraction under a variable rotational speed condition, which is used in combination with a periodic estimation method to achieve a balance between accumulated cycles and strong background noise and is used for bearing fault diagnosis under the variable rotational speed condition. The method of the present invention includes: resampling an original vibration signal in an order domain based on instantaneous phase information by using an order tracking processing method, to greatly weaken a frequency modulation phenomenon; further weakening background noise in consideration of a correlation between a plurality of adjacent fragments by using a generalized autocorrelation method; and controlling an accumulation of periodic disturbances by considering only a correlation between several adjacent signal fragments based on that conventional NRC methods consider a correlation between all signal fragments and cannot eliminate influence of accumulated periodic disturbances. Compared with the conventional methods, this method overcomes the difficulties caused by mutually restricting signal features, and achieves a better effect.





BRIEF DESCRIPTION OF THE DRAWINGS


FIGS. 1A-1C show signal analysis results of an application of a generalized autocorrelation method to bearing fault detection under orderless tracking, where there are obvious peaks at periodic and multiple points, FIG. 1A shows the case when n=8, FIG. 1B shows the case when n=12, and FIG. 1C shows the case when n=16.



FIG. 2 shows the division of signals according to a generalized autocorrelation algorithm when L=mN(m>1).



FIG. 3 shows the division of signals according to a generalized autocorrelation algorithm when L=Mn+N1(m>1, N1>0).



FIG. 4 is a simulation waveform diagram of a resampling signal.



FIGS. 5A-5D show experimental data from University of Ottawa, which is analysis results of fault signals using different methods under order tracking with gear interference, where FIG. 5A shows the case using an autocorrelation analysis (ACF) method, FIG. 5B shows the case using a strictly periodic signal analysis method (NRC), FIG. 5C shows the case using a strictly periodic signal analysis method (VM), and FIG. 5D shows the cases using a generalized autocorrelation method (GeACF).



FIGS. 6A-6F show analysis results of fault signals using different methods under order tracking on a self-made test bench, where FIG. 6A shows the case using an autocorrelation analysis (ACF) method, FIG. 6B shows the case using a strictly periodic signal analysis method (NRC), FIG. 6C shows the case using a strictly periodic signal analysis method (VM), and FIGS. 6D-6F show the cases using a generalized autocorrelation method (GeACF).





DETAILED DESCRIPTION OF THE EMBODIMENTS

The present invention will be further described in detail below with reference to drawings and specific embodiments, but the present invention is not limited thereto.


A generalized autocorrelation method for bearing fault feature extraction under a variable rotational speed condition is provided, the method including following steps.

    • Step S1. An unknown fault signal custom-character(t) and a strong white Gaussian noise signal ε(t) are fused to obtain a measured order tracking signal custom-character(t), where the measured order tracking signal custom-character(t)=custom-character(t)+ε(t), t represents an order domain, the noise ε(t)˜custom-character(0, σ2),
    • where a time series custom-character=[custom-character(1), custom-character(2), . . . , custom-character(L)]T represents an implementation of a cyclic signal custom-character(t), and L represents a total number of samples.
    • Step S2. When L=mN, custom-character is divided into {custom-character1, custom-character2, . . . custom-characterm}, as shown in FIG. 2.



custom-character
i=[custom-character((i−1)N+1), . . . , custom-character(iN)]T, i=1, . . . , m, N represents a length of each of the signal fragments and is an independent variable in the function.

    • Step S3. A generalized autocorrelation function (GeACF) is proposed based on an original autocorrelation function (ACF),








𝒴


(
N
)


=


1

m
-
n
+
1







k
=
0


m
-
n




𝒴
k


(
N
)










    • where:












𝒴
k


(
N
)


=


1


n

(

n
-
1

)


N









1

i

j

n




𝒴

k
+
i

T



𝒴

k
+
j




,




where n is selected manually, satisfies 2≤n≤m, and represents a number of block signals.

    • Step S4. When L=Mn+N1 and N1>0, custom-character is divided into {custom-character1,1, custom-character1,2, custom-character2,1, custom-character2,2, . . . , custom-characterm,1, custom-characterm,2, custom-characterm+1,1}, where i=1, . . . , m, N represents a length of a signal fragment and is an independent variable in the function, as shown in FIG. 3.






{





𝒴

i
,
1


=


[

𝒴
(




(

i
-
1

)


N

+
1

,


,

𝒴
(



(

(

i
-
1

)

)


N

+

N
1





]

T








𝒴

i
,
2


=


[


𝒴

(



(

i
-
1

)


N

+

N
1

+
1

)

,


,

𝒴

(
iN
)


]

T











    • Step S5. {custom-character1,j, custom-character2,j, . . . custom-charactermi,j} is synthesized to form a new signal custom-characterj, where j=1,2, and m1=m+1, m2=m.









{





𝓇
1

=


[


𝒴

1
,
1

T

,

𝒴

2
,
1

T

,





𝒴


m

1

,
1

T



]

T








𝓇
2

=


[


𝒴

1
,
2

T

,

𝒴

2
,
2

T

,


,

𝒴


m

2

,
2

T


]

T









A generalized autocorrelation function (GeACF) custom-character(N)=custom-charactercustom-character(N1)+custom-charactercustom-character(N2) is proposed. NRC values of all adjacent fragments are calculated, and a weighted sum of the NRC values is calculated.


Finally, the proposed GeACF is defined:







𝒜

(
N
)

=

{





y


(
N
)






=
mN








𝓌
1




𝒜

𝓇
1


(

N
1

)


+


𝓌
2




𝒜

𝓇
2


(

N
2

)








mN









The custom-character(N) method is used in simulations and experiments of the present invention. A resampling signal is simulated. custom-character(N)=custom-character(N)+ε(N), N≤L. As shown in FIG. 4, a simulated signal is








𝒳

(
N
)

=







k
=
1




L

P
0







e



-
ζ2π



f

f
s




(

N
-

P
k


)




1
-

ζ
2






sin

2

π


f

f
s




(

N
-

P
k


)



,


ϵ

(
N
)

~


𝒩

(

0
,
σ

)

.






The simulation results are shown in FIGS. 5A-5D. The results show that there are many interference peaks in the case of using the ACF (autocorrelation function) to process the signal, and the signal period cannot be accurately determined; the NRC method cannot generate identifiable peaks; the Variability Method does not meet the desired signal conditions and exhibits a significant shift; and for the GeACF (n=16), there are obvious peaks at the true periodic and multiple points. The simulation results show that the GeACF method has a stronger ability to suppress noise.


To further verify the effectiveness of the GeACF method, the proposed method is validated using a case with inner ring fault data and a case with outer ring fault data. A first set of data was collected from University of Ottawa, and a second set of data was collected on a self-made test bench.


For the first set of data from University of Ottawa, a signal length is 2,000,000, an acceleration sampling rate is 200 kHz, a vibration signal and an optical pulse signal are used for dual-channel measurement, and the bearing runs at uniform acceleration, with gear interference, and with great periodic fluctuations and a low signal-to-noise ratio. The order tracking method is used for signal resampling, i.e., a peak value of an optical pulse signal and a corresponding vibration signal are selected using phase information of the optical pulse signal, and the signals are resampled in the order domain. As shown in FIGS. 6A-6F, the experimental results show that the autocorrelation method has no obvious peaks, and cannot detect the real period due to the strong background noise of the signal; for the strictly periodic signal analysis methods such as NRC and VM, there are no obvious peaks at periodic points, the number of interference peaks is large, and the accumulation of periodic disturbances also fails; the generalized autocorrelation method balances periodic disturbances and background noise, and has strong robustness regardless of whether there are disturbances from other equipment or not.


For the second set of data from the self-made test bench, a vibration signal and an optical pulse signal are used for dual-channel measurement, and the bearing runs at a variable rotational speed, with great periodic fluctuations and a high signal-to-noise ratio. The experimental results show that although the autocorrelation method cannot provide clear peaks despite of the continuous periodic fluctuations, because the period feature is overwhelmed by strong background noise; the NRC and VM methods fail to detect the real period of the resampled signal due to the accumulated period disturbances; and for the GeACF method, there are obvious peaks at periodic and multiple points, and periodic disturbances and background noise are well balanced.


In the description of the specification, the description with reference to the terms “an embodiment”, “some embodiments”, “exemplary embodiments”, “example”, “specific example”, or “some example” and so on means that specific features, structures, materials or characteristics described in connection with the embodiment or example are embraced in at least one embodiment or example of the present invention. In the present specification, the illustrative expression of the above terms is not necessarily referring to the same embodiment or example. Moreover, the described specific features, structures, materials or characteristics may be combined in any suitable manner in one or more embodiments.


Although the embodiments of the present invention have been illustrated and described above, it is to be understood by those of ordinary skill in the art that various changes, alterations, replacements and modifications can be made to these embodiments without departing from the principle and spirit of the present invention. The scope of the present invention is defined by the appended claims and equivalents thereof.

Claims
  • 1. A generalized autocorrelation method for a bearing fault feature extraction under a variable rotational speed condition, comprising the following steps: step S1, fusing an unknown fault signal (t) and a strong white Gaussian noise signal ε(t) to obtain a measured order tracking signal (t), wherein the measured order tracking signal (t)=(t)+ε(t). t represents an order domain, the strong white Gaussian noise signal ε(t)˜(0, σ2), a time series =[(1), (2), . . . , (L)]T represents an implementation of a cyclic signal (t), and L represents a total number of samples;step S2, truncating the measured order tracking signal (t), and when L=mN, dividing into {1, 2, . . . m}, wherein i=[(i−1)N+1), . . . , (iN)]T, i=1, . . . , m, m represents a number of signal fragments, and N represents a length of each of the signal fragments and is an independent variable in a function;step S3, proposing a generalized autocorrelation function based on an original autocorrelation function,
  • 2. The generalized autocorrelation method for the bearing fault feature extraction under the variable rotational speed condition according to claim 1, wherein the step of truncating the measured order tracking signal comprises: when the original signal is exactly divisible into m fragments each with a length N and n. in a noise resistant correlation is determined manually, a length of the original signal being exactly a multiple of a period and N being exactly the period; if L is not exactly divisible by N, dividing the original signal into two sub-signals each comprising several signal fragments, constructing a series of noise resistant correlation functions based on the signal fragments, and using a weighted sum of the noise resistant correlation functions to suppress a strong background noise;
Priority Claims (1)
Number Date Country Kind
202110913667.0 Aug 2021 CN national
PCT Information
Filing Document Filing Date Country Kind
PCT/CN2022/075861 2/10/2022 WO