A Novel Evidence Theory and Fuzzy Preference Approach-Based Multi-Sensor Data Fusion Technique for Fault Diagnosis
Abstract
:1. Introduction
2. Preliminaries
2.1. Dempster–Shafer Evidence Theory
2.2. Distance of Pieces of Evidence
2.3. Belief Entropy
2.4. Fuzzy Preference Relations
- (1)
- ;
- (2)
- ;
- (3)
- ;
- (4)
- for all , where and .
3. The Proposed Method
3.1. Calculate the Support Degree of the Evidence
- Step 1:
- Step 2:
- The similarity measure between the BPAs and can be obtained by:Then, the similarity measure matrix can be constructed as follows:
- Step 3:
- The support degree of the BPA is defined as follows:
- Step 4:
- The support degree of the BPA is normalized as below, which is denoted as :
3.2. Generate the Credibility Value of the Evidence
- Step 1:
- The belief entropy of the BPA ) is calculated by leveraging Equation (11).Because the belief entropy of the evidence may be zero in a certain case, in order to avoid allocating zero weight to such kinds of evidence, we utilize the information volume for measuring the uncertainty of the BPA as below:
- Step 2:
- The information volume of the BPA is normalized as below, which is denoted as :
- Step 3:
- The fuzzy preference relation matrix , where can be constructed by the following steps:
- Step 3-1:
- According to Definition 6, the diagonal element is assigned to 0.5.
- Step 3-2:
- If there are only two pieces of evidence, all of the off-diagonal elements and will be assigned to 0.5, because we have no sufficient evidence to detect how the pieces of evidence are preferred with respect to each other. Thus, the fuzzy preference relation matrix can be constructed by:
- Step 3-3:
- If there are more than two pieces of evidence, the variance of entropy for the BPA will be calculated as follows:
- Step 3-4:
- The smaller the value has, the more conflict the evidence has in the decision-making system, so that a small preference value is supposed to be assigned to this evidence. Otherwise, the bigger the value has, the less conflict the evidence has in the decision-making system, so that a big preference value is supposed to be assigned to this evidence. On the basis of the above variance of entropy, the off-diagonal elements and will be computed by Equations (27) and (28) introduced in [79].
- Step 4:
- Based on the obtained fuzzy preference relation matrix , the consistency matrix can be constructed by Equation (16).
- Step 5:
- With the consistency matrix , the credibility value of the BPA is defined based on Equation (17):We can notice that . Hence, the credibility value of each piece of evidence is regarded as a weight that indicates the relative credibility preference in terms of the evidence.
3.3. Fuse the Weighted Average Evidence
- Step 1:
- Based on the credibility degree , the normalized support degree of the BPA will be adjusted, denoted as :
- Step 2:
- The is normalized as below, denoted as , which is considered as the final weight of the BPA .
- Step 3:
- On the basis of the final weight , the weighted average evidence can be obtained as follows:
- Step 4:
- The weighted average evidence is combined through Dempster’s combination rule, namely Equation (7), by times, if there are k number of pieces of evidence. Then, the final combination result of multiple pieces of evidence can be obtained.
4. Experiment
- Step 1:
- Construct the distance measure matrix as follows:
- Step 2:
- Construct the similarity measure matrix as follows:
- Step 3:
- Calculate the support degree of the BPA as below:
- = 2.4551,
- = 1.0716,
- = 2.7689,
- = 2.8239,
- = 2.8055.
- Step 4:
- Normalize the support degree of the BPA as follows:
- = 0.2059,
- = 0.0899,
- = 0.2322,
- = 0.2368,
- = 0.2353.
- Step 5:
- Measure the information volume of the BPA as below:
- = 4.7894,
- = 1.5984,
- = 6.1056,
- = 6.6286,
- = 5.8767.
- Step 6:
- Normalize the information volume of the BPA as follows:
- = 0.1916,
- = 0.0639,
- = 0.2442,
- = 0.2652,
- = 0.2351.
- Step 7:
- Construct the fuzzy preference relation matrix as follows:
- Step 8:
- Construct the consistency matrix as follows:
- Step 9:
- Calculate the credibility value of the BPA as below:
- = 0.2395,
- = 0.0749,
- = 0.2312,
- = 0.2198,
- = 0.2345.
- Step 10:
- Adjust the normalized support degree of the BPA based on the credibility value as below:
- = 0.0493,
- = 0.0067,
- = 0.0537,
- = 0.0521,
- = 0.0552.
- Step 11:
- Normalize the adjusted support degree of the BPA as below:
- = 0.2273,
- = 0.0310,
- = 0.2474,
- = 0.2399,
- = 0.2543.
- Step 12:
- Compute the weighted average evidence as below:
- = 0.5213,
- = 0.1606,
- = 0.0713,
- = 0.2469.
- Step 13:
- Combine the weighted average evidence by utilizing Dempster’s rule of combination four times. The results of the combination for the first time are shown below:
- = 0.8066,
- = 0.0393,
- = 0.0614,
- = 0.0929.
For the combination for the second time, the results are listed as follows:- = 0.9239,
- = 0.0087,
- = 0.0362,
- = 0.0317.
Next, the results of the third combination are calculated as:- = 0.9701,
- = 0.0019,
- = 0.0184,
- = 0.0105.
Then, the combination results of the fourth time, namely the final fusing results, are produced as follows:- = 0.9888,
- = 0.0004,
- = 0.0087,
- = 0.0034.
5. Application
5.1. Problem Statement
5.2. Motor Rotor Fault Diagnosis Based on the Proposed Method
5.2.1. Motor Rotor Fault Diagnosis at Frequency
- = 0.5636,
- = 0.0006,
- = 0.0782,
- = 0.3576.
- = 0.8095,
- = 0.0004,
- = 0.0621,
- = 0.1280.
- = 0.9169,
- = 0.0002,
- = 0.0371,
- = 0.0458.
5.2.2. Motor Rotor Fault Diagnosis at Frequency
- = 0.7754,
- = 0.2246.
- = 0.9496,
- = 0.0504.
- = 0.9887,
- = 0.0113.
5.2.3. Motor Rotor Fault Diagnosis at Frequency
- = 0.3028,
- = 0.4323,
- = 0.2254,
- = 0.0395.
- = 0.3415,
- = 0.5634,
- = 0.0929,
- = 0.0021.
- = 0.3266,
- = 0.6365,
- = 0.0368,
- = 0.0001.
5.3. Discussion
6. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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BPA | ||||
---|---|---|---|---|
0.41 | 0.29 | 0.30 | 0.00 | |
0.00 | 0.90 | 0.10 | 0.00 | |
0.58 | 0.07 | 0.00 | 0.35 | |
0.55 | 0.10 | 0.00 | 0.35 | |
0.60 | 0.10 | 0.00 | 0.30 |
Evidence | Method | Target | ||||
---|---|---|---|---|---|---|
Dempster [23] | 0 | 0.6350 | 0.3650 | 0 | B | |
Murphy [71] | 0.4939 | 0.4180 | 0.0792 | 0.0090 | A | |
Deng et al. [72] | 0.4974 | 0.4054 | 0.0888 | 0.0084 | A | |
Zhang et al. [73] | 0.5681 | 0.3319 | 0.0929 | 0.0084 | A | |
Proposed method | 0.7617 | 0.1127 | 0.1176 | 0.0080 | A | |
Dempster [23] | 0 | 0.3321 | 0.6679 | 0 | C | |
Murphy [71] | 0.8362 | 0.1147 | 0.0410 | 0.0081 | A | |
Deng et al. [72] | 0.9089 | 0.0444 | 0.0379 | 0.0089 | A | |
Zhang et al. [73] | 0.9142 | 0.0395 | 0.0399 | 0.0083 | A | |
Proposed method | 0.9507 | 0.0060 | 0.0334 | 0.0087 | A | |
Dempster [23] | 0 | 0.1422 | 0.8578 | 0 | C | |
Murphy [71] | 0.9620 | 0.0210 | 0.0138 | 0.0032 | A | |
Deng et al. [72] | 0.9820 | 0.0039 | 0.0107 | 0.0034 | A | |
Zhang et al. [73] | 0.9820 | 0.0034 | 0.0115 | 0.0032 | A | |
Proposed method | 0.9888 | 0.0004 | 0.0087 | 0.0034 | A |
BPA | ||||
---|---|---|---|---|
0.8176 | 0.0003 | 0.1553 | 0.0268 | |
0.5658 | 0.0009 | 0.0646 | 0.3687 | |
0.2403 | 0.0004 | 0.0141 | 0.7452 |
BPA | ||
---|---|---|
0.6229 | 0.3771 | |
0.7660 | 0.2341 | |
0.8598 | 0.1402 |
BPA | ||||
---|---|---|---|---|
0.3666 | 0.4563 | 0.1185 | 0.0586 | |
0.2793 | 0.4151 | 0.2652 | 0.0404 | |
0.2897 | 0.4331 | 0.2470 | 0.0302 |
Method | Target | ||||
---|---|---|---|---|---|
Jiang et al. [27] | 0.8861 | 0.0002 | 0.0582 | 0.0555 | |
Proposed method | 0.9169 | 0.0002 | 0.0371 | 0.0458 |
Method | Target | ||
---|---|---|---|
Jiang et al. [27] | 0.9621 | 0.0371 | |
Proposed method | 0.9887 | 0.0113 |
Method | Target | ||||
---|---|---|---|---|---|
Jiang et al. [27] | 0.3384 | 0.5904 | 0.0651 | 0.0061 | |
Proposed method | 0.3266 | 0.6365 | 0.0368 | 0.0001 |
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Xiao, F. A Novel Evidence Theory and Fuzzy Preference Approach-Based Multi-Sensor Data Fusion Technique for Fault Diagnosis. Sensors 2017, 17, 2504. https://doi.org/10.3390/s17112504
Xiao F. A Novel Evidence Theory and Fuzzy Preference Approach-Based Multi-Sensor Data Fusion Technique for Fault Diagnosis. Sensors. 2017; 17(11):2504. https://doi.org/10.3390/s17112504
Chicago/Turabian StyleXiao, Fuyuan. 2017. "A Novel Evidence Theory and Fuzzy Preference Approach-Based Multi-Sensor Data Fusion Technique for Fault Diagnosis" Sensors 17, no. 11: 2504. https://doi.org/10.3390/s17112504
APA StyleXiao, F. (2017). A Novel Evidence Theory and Fuzzy Preference Approach-Based Multi-Sensor Data Fusion Technique for Fault Diagnosis. Sensors, 17(11), 2504. https://doi.org/10.3390/s17112504