Multisource heterogeneous fusion entropy ratio distance feature of bearing performance degradation based on DTW
Guangbin Wang^{1} , Jinhua Chen^{2} , Zhixian Zhong^{3} , Shangjun Hu^{4}
^{1}Mechanical and Electrical Engineering, Lingnan Normal University, Zhanjiang, China
^{1, 2, 3}School of Mechanical and Control Engineering, Guilin University of Technology, Guilin, China
^{4}China Railway China Tunnel Joint Heavy Equipment Co., Ltd., Foshan, China
^{1}Corresponding author
Vibroengineering PROCEDIA, Vol. 39, 2021, p. 1723.
https://doi.org/10.21595/vp.2021.22269
Received 25 October 2021; received in revised form 9 November 2021; accepted 16 November 2021; published 2 December 2021
The key to the evaluation of bearing performance degradation is to extract sensitive characteristic indicators that can reflect the degradation process. In order to solve the problem of insufficient sensitivity of the bearing multisource signals feature, a fusion entropy ratio feature based on dynamic time warping is proposed. First, the segmented approximate entropy, sample entropy and fuzzy entropy of the bearing performance degradation process are extracted, and then the mean clustering is used to obtain the standard entropy vector of the health state. In order to eliminate the influence of working environment and entropy value on state evaluation, a concept of entropy ratio is defined by the ratio of the entropy vector of each state to the standard entropy vector of the health state. Finally, using dynamic time warping has the advantage of accurately describing the similarity between vectors from a global perspective, and the multisource heterogeneous fusion entropy ratio distance feature is constructed to describe the degraded state of bearing performance. Experiments show that this feature is more sensitive to the bearing performance degradation than other features, such as fusion entropy ratio feature based on Euclidean distance, single entropy ratio feature based on dynamic time bending.
Keywords: bearing, performance degradation, dynamic time warping, entropy ratio distance.
1. Introduction
The key to accurate evaluation of machinery equipment’s state is to find sensitive indicators that reflect the degradation process. The most common way to construct performance degradation indicators is to extract root mean square, cliffness, wavelet energy, etc. [13], but it is difficult to install sensors in the narrow space, so the common method is to find the bearing status by monitoring the signal far away from the vibration source [4]. The development of artificial intelligence has led to an increasing number of studies using advanced algorithms such as genetic coding, neural networks, and deep learning for bearing service performance evaluation [57]. In the construction of information fusion evaluation index, since many physical quantities such as oil granularity and temperature do not have parameters of characteristic frequency, multiple information entropies are commonly used to construct feature values [89], but these literatures generally construct entropy improvement features based on single physical quantity signals, and do not consider the fusion of multisource heterogeneous signals. In this paper, we propose a multisource heterogeneous fusion entropy ratio distance feature based on dynamic time bending for bearing performance degradation.
2. Entropy characterization of multisource heterogeneous physical quantity of bearing performance degradation state
Entropy is often used as a quantitative measure of the information content in a system, characterizing the probability of occurrence of information embedded in a time series. If the probability of an event occurring is $p\left(x\right)$, then entropy is defined as:
The Eq. (1), entropy $H\left(X\right)$ is a function of the probability distribution about the variable $X$, the probability of taking the negative logarithm indicates the amount of information carried out when a possible event occurs. There are many types of information entropy, such as approximate entropy, sample entropy, fuzzy entropy, permutation entropy and so on. Suppose the vibration, strain and axial force signals of a bearing are monitored, and its approximate entropy, sample entropy and fuzzy entropy are extracted respectively, and define ${V}_{En}$, $S{A}_{En}$ and $S{E}_{En}$ as the vibration entropy vector, strain entropy vector and axial force entropy vector, then:
$S{A}_{En}=[S{A}_{ApEn},S{A}_{SampEn},S{A}_{FuzzyEn}]$.
Using these entropy vectors, a multisource heterogeneous entropy characteristic matrix $En$ that can characterize the degradation state of the bearing performance is constructed as follows:
3. Multisource fusion entropy ratio feature algorithm based on dynamic time bending
Assume bearing status data are sampled at 1 second intervals, and $N$ points are sampled in one sampling period. Assuming that the bearings are in a healthy state during the first $t1$ seconds, extract the multitype entropy values of these multisource physical quantities, and construct $t1$ multisource heterogeneous fusion features, and then the healthy standard entropy features are obtained by mean clustering as follows:
In the multisource heterogeneous vector, each physical quantity eigenvalue has a large difference between different physical quantities despite the fluctuation, and the entropy ratio characteristic is that each entropy in the vector is divided by the corresponding healthy standard entropy, defined as $EnR$, and the multisource heterogeneous fusion entropy ratio characteristic at the moment of $t$ as follows:
At this time, the entropy ratio features of the health state are all 1 vectors. As the monitoring time advances, each sampling moment can form the entropy ratio feature of this moment, which is equivalent to the probability of occurrence of the dimensionless feature after removing the initial health condition.
The dynamic time warping (DTW) [1011], has been proved to be an extremely strong distance metric for time series, whose main idea is to adjust the correspondence between time points and guide to find the best matching path between data in two arbitrary long time series, which can effectively avoid the Euclidean distance mismatch caused by the response time delay between different physical quantities.
It is assumed there are two feature vectors $Q=\{{q}_{1},{q}_{2},\cdots {q}_{n},\}$ and $C=\{{c}_{1},{c}_{2},\cdots {c}_{m}\}$, which form the distance ${D}_{n\times m}=\left\{d\right(i,j){\}}_{n\times m}$ between the data points of the two sequences, where $1\le i\le n$, $1\le j\le m$.$d(i,j)$, $d(i,j)={\left({q}_{i}{c}_{j}\right)}^{2}$, then DTW is to find a continuous path $P=\{{p}_{1},{p}_{2},\cdots {p}_{s}\}$ from this matrix such that the sum of the element values on the path is minimal and the three conditions of boundary restriction, continuity and monotonicity are satisfied. The path can be implemented by dynamic programming by defining the accumulation matrix $R=\left\{r\right(i,j){\}}_{n\times m}$ as the shortest path from the starting position to the ending position, then we have:
The DTW can be obtained as:
DTW describes the closest distance between all feature points, so it can describe the similarity of two vectors more accurately, and also can solve the problem of inconsistent length between two variables. According to the above analysis, Our algorithm steps are as follows:
Step 1: Collect the multiphysical quantity monitoring data of the whole life cycle of bearing operation, here it is assumed that the sampling is vibration, strain and stress data, i.e. $X\left(i\right)=\{{V}_{i},S{E}_{i},S{A}_{i}\}$, the data is preprocessed, and the bearing status is divided into four stages of healthy state, early fault, midterm fault and late fault by observation.
Step 2: Extract the approximate entropy, sample entropy and fuzzy entropy of the healthy stage of the bearing, construct a multisource fusion entropy feature vector $En=[{V}_{En},S{E}_{En},S{A}_{En}{]}^{T}$, obtain the standard entropy of the health state by mean clustering $HEn$.
Step 3: Calculate the multisource fusion entropy vector $E{n}_{t}$ for each period, and compare it with the health state standard entropy $HEn$ to get the entropy ratio feature $En{R}_{t}=E{n}_{t}/HEn$, and the health state entropy ratio standard feature $HEnR$ is defined as the all1 feature.
Step 4: According to Eq. (7), DTW distance ${L}_{DTW}$ between the multisource heterogeneous fusion entropy ratio $En{R}_{t}$ of each time period and the health state entropy ratio standard feature $HEnR$ is calculated, and the multisource heterogeneous fusion entropy ratio distance feature of each time period is obtained.
To compare the sensitivity of the features, two sensitivity evaluation functions, interval slope and interval maximum magnitude ratio, are proposed, assuming that the slope $I{S}_{i}$ of the $i$th feature stage interval ${t}_{i+1}{t}_{i}$ can be expressed as the ratio of the difference between the maximum and minimum values in the interval to the length of time, and the maximum magnitude ratio $IA{R}_{i}$ of the $i$th interval ${t}_{i+1}{t}_{i}$ is expressed as the ratio between the maximum and minimum values in the interval.
4. Service performance evaluation experiment in the process of bearing oil cutoff
The main bearing of aeroengine is a highspeed bearing, the maximum speed can be more than 30,000 r/min, which often adopts the elastic support structure, as shown in Fig. 1, and the monitoring data are the vibration at the bearing position, the strain at the patch position and the axial force, as shown in Fig. 2. The main bearing is ultimately t inner ring, outer ring and rolling body all failed. The sampling frequency is 10000 Hz, the sampling time vibration is 2.4718 seconds, the strain, the front force is 2.6210 seconds, the first 2.4 seconds are taken as the analysis data. The analysis data were divided into 80 equal segments, and each segment are 0.03 seconds. The approximate entropy, sample entropy and fuzzy entropy of each segment were calculated separately, and the segmented entropy and normalized entropy change graphs were obtained as shown in Fig. 3.
Fig. 1. Elastic support for main bearings
Fig. 2. Vibration, strain, and forward force monitoring data after bearing oil cutoff
From Fig. 3, it is clear that the vibration entropy gradually increases from the 38th paragraph to the 49th paragraph and then oscillates at a high level; the stress entropy and the front axial force entropy both increase continuously from about the 50th paragraph to the 64th paragraph and reach the maximum, the stress entropy oscillates lower and the front axial force entropy diverges. From the response of vibration, strain and axial force, the changes of all three entropies are relatively consistent, but the vibration response is the most sensitive, and the axial force response of strain is delayed for a period of time.
Fig. 3. a) Three entropy and b) normalized entropy for vibration, strain, and forward axial force
Fig. 4. a) The change of fusion entropy and b) entropy ratio during performance degradation
Table 1. Multisource fusion entropy and entropy ratio based on $ED$ to reaction of the fault stage
Early fault

Midterm fault


Fusion entropy

Interval amplitude ratio $IAR$

19.01

12.63

Interval slope $IS$

10.29

57.66


Fusion entropy ratio

Interval amplitude ratio $IAR$

56.89

0.86

Interval slope $IS$

193.69

–16.09

Table 2. Multisource fusion entropy and entropy ratio based on $DTW$ to reaction of the fault stage
Early fault

Midterm fault


Fusion entropy

Interval amplitude ratio $IAR$

14.64

8.75

Interval slope $IS$

17.64

69.64


Fusion entropy ratio

Interval amplitude ratio $IAR$

58.05

1.54

Interval slope $IS$

287.73

83.98

Here extracted characterization of the bearing operating state features vector have vibration, stress, front axial force of each approximate entropy, sample data entropy vector divided by the health benchmark feature vector to get segment entropy ratio vector, and health state benchmark entropy ratio vector of each element can be all set to 1, and then calculate the $DTW$ between each segment entropy ratio vector and health benchmark entropy ratio vector, then get the bearing multisource heterogeneous fusion entropy ratio distance The curve of feature variation with state is shown in Fig. 4. Here the embedding dimension is taken as 2 and the similarity tolerance is 0.2 times of the entropy standard deviation.
Because the performance degradation is mainly to determine when the degradation occurs and when it is severe enough to fail, it is mainly to discriminate the sensitivity of the eigenvalues of the early and midterm fault stages, the results are shown in Table 1 and Table 2. The interval amplitude ratio represents the absolute change of the signal feature strength, and the interval slope represents the sensitivity of the signal feature to fault stage. As can be seen from Fig. 4, Table 1 and Table 2, Whether it is early or midfault, multisource heterogeneous fusion entropy ratio feature based on $DTW$ has the greatest sensitivity and feature strength compared with fusion entropy ratio features based on $ED$.
Fig. 5. The change law of bearing entropy ratio features with the stage of bearing performance degradation
In order to compare the multisource heterogeneous fusion entropy ratio and the single entropy ratio feature to characterize the performance degradation state of the bearing, the changes of the entropy ratio of 9 single entropy with the bearing performance degradation stage are calculated, as shown in Fig. 5 and Table 3. It can be seen from them, the single entropy ratio of the vibration signal is more sensitive to early faults, but not sensitive to midterm faults, vibration sample entropy and approximate entropy even show opposite trends. The single entropy ratio of the strain and front force signals have both effects on early fault, and not very sensitive to midterm fault. In contrast, the interval slope of the multisource heterogeneous fusion entropy ratio is much larger than other single faults, and it is very sensitive to early and midterm faults. Based on the above analysis, the multisource heterogeneous fusion entropy ratio feature proposed in this paper has the strongest ability to characterize the degradation state of bearing performance compare with the single entropy ratio feature.
Table 3. Sensitivity of entropy ratio feature to early fault midterm fault of the bearing
Types of entropy ratio features

Interval slope $IS$

Types of entropy ratio features

Interval slope $IS$


Early fault

Midterm fault

Early fault

Midterm fault


Vibration approximate entropy ratio

97.21

12.43

Strain fuzzy entropy ratio

1.43

1.65

Vibration sample entropy ratio

168

–34.55

Forward force approximate entropy ratio

1.08

5.73

Vibration fuzzy entropy ratio

27.82

–7.1

Forward force sample entropy ratio

1.03

15.29

Strain approximate entropy ratio

1.19

20.56

Forward force fuzzy entropy ratio

1.19

26.09

Strain sample entropy ratio

1.19

31.91

Multisource fusion entropy ratio

287.73

83.98

5. Conclusions
The paper proposes a multisource heterogeneous fusion entropy ratio feature based on DTW, defines a new entropy ratio concept that uses the ratio of the entropy vector of each state of the bearing to the standard entropy vector of the healthy state, and makes innovative use of DTW constructs a multisource heterogeneous fusion entropy ratio distance that can accurately describe the degradation state of bearing performance. The experiments proves that the multisource fusion entropy ratio feature based on DTW is more sensitive to the response of bearing performance degradation process, compared with the fusion entropy ratio feature based on Euclidean distance, and the single entropy ratio based on DTW.
Acknowledgements
Financial support from Special Research Project on the Key Fields in General Universities of Guangdong Province “Research on Health Monitoring and Intelligent Diagnosis of Main Drive Bearings of Shield Machines” (2020ZDZX2033).
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