Literature DB >> 29088117

A Novel Evidence Theory and Fuzzy Preference Approach-Based Multi-Sensor Data Fusion Technique for Fault Diagnosis.

Fuyuan Xiao1.   

Abstract

The multi-sensor data fusion technique plays a significant role in fault diagnosis and in a variety of such applications, and the Dempster-Shafer evidence theory is employed to improve the system performance; whereas, it may generate a counter-intuitive result when the pieces of evidence highly conflict with each other. To handle this problem, a novel multi-sensor data fusion approach on the basis of the distance of evidence, belief entropy and fuzzy preference relation analysis is proposed. A function of evidence distance is first leveraged to measure the conflict degree among the pieces of evidence; thus, the support degree can be obtained to represent the reliability of the evidence. Next, the uncertainty of each piece of evidence is measured by means of the belief entropy. Based on the quantitative uncertainty measured above, the fuzzy preference relations are applied to represent the relative credibility preference of the evidence. Afterwards, the support degree of each piece of evidence is adjusted by taking advantage of the relative credibility preference of the evidence that can be utilized to generate an appropriate weight with respect to each piece of evidence. Finally, the modified weights of the evidence are adopted to adjust the bodies of the evidence in the advance of utilizing Dempster's combination rule. A numerical example and a practical application in fault diagnosis are used as illustrations to demonstrate that the proposal is reasonable and efficient in the management of conflict and fault diagnosis.

Entities:  

Keywords:  Dempster–Shafer evidence theory; belief entropy; evidence distance; evidential conflict; fault diagnosis; fuzzy preference relations; sensor data fusion; variance of entropy

Year:  2017        PMID: 29088117      PMCID: PMC5713492          DOI: 10.3390/s17112504

Source DB:  PubMed          Journal:  Sensors (Basel)        ISSN: 1424-8220            Impact factor:   3.576


1. Introduction

The multi-sensor data fusion technique plays a significant role in fault diagnosis. Due to the complexity of the targets, the report collected from a single sensor is insufficient in decision making processes. Additionally, because of the impact of the environment, the data gathered from multiple sensors may be unreliable or even wrong so that it can cause erroneous results in fault diagnosis. Hence, multi-sensor data fusion technologies are required in various fields of practical applications [1,2,3,4,5,6,7,8,9], especially in the area of data fusion using vibration data [10,11,12,13,14,15]. However, in the practical applications, the data that are gathered from the multi-sensors are usually uncertain. An open issue is how to model and handle such kinds of uncertain information. To address this issue, a variety of theoretical methods has been exploited for multi-sensor data fusion, like the rough sets theory [16,17], fuzzy sets theory [18,19,20,21,22], evidence theory [23,24,25], Z numbers [26,27], and D numbers theory [28,29,30], evidential reasoning [31,32,33,34], and so on [35,36,37,38]. Dempster–Shafer evidence theory, which is an uncertainty reasoning tool, was firstly proposed by Dempster [23]; then, it was developed by Shafer [24]. Because Dempster–Shafer evidence theory is flexible and effective in modeling the uncertainty regardless of prior information, it is widely applied to various areas of information fusion, like pattern recognition [39,40,41], decision making [42,43,44,45,46,47], supplier selection [48,49], optimization problems [50,51], risk analysis [52,53,54] and fault diagnosis [55,56,57,58,59,60]. Although Dempster–Shafer evidence theory has many advantages, it may generate counter-intuitive results, when fusing highly conflicting pieces of evidence [61,62]. To solve this problem, many methods have been proposed. They are divided into two types of methodologies [63,64,65,66,67]. The first type involves modifying Dempster’s combination rule, while the second type involves pre-processing the bodies of evidence. The main research works for the first type include the unnormalized combination rule presented by Smets [68], the disjunctive combination rule proposed by Dubois and Prade [69] and the combination rule presented by Yager [70]. Nevertheless, the modification of the combination rule often destructs the good properties, like the commutativity and associativity. Furthermore, if sensor failure results in the counter-intuitive results, such a modification is regarded to be unreasonable. Therefore, many researchers pre-process the bodies of evidence to resolve the problem of highly conflicting evidence, which falls into the second type. The main research works for the second type include the simple average approach of the bodies of evidence proposed by Murphy [71], the weighted average of the masses based on the evidence distance presented by Deng et al. [72] and the cosine theorem-based method proposed by Zhang et al. [73]. Deng et al.’s weighted average approach [72] overcomes the weakness of Murphy’s method [71] to some extent. Later on, Zhang et al. [73] made an improvement based on [72] and introduced the concept of vector space to handle the conflicting evidence. However, the effect of evidence’s uncertainty itself on the weight was overlooked. In this paper, therefore, a novel multi-sensor data fusion method is proposed, which is a hybrid methodology in terms of the distance of evidence, belief entropy and fuzzy preference relation analysis. The proposal considers the support degree among the pieces of evidence, the uncertainty measure of the evidence and the effect of the relative credibility of the evidence on the weight, so that it can obtain more appropriately weighted average evidence before using Dempster’s combination rule. Specifically, the proposed method consists of the following procedures. First, in order to measure the support degree between the pieces of evidence, the function of evidence distance is leveraged, where the support degree represents the reliability of the evidence. After that, the relative credibility preference of the evidence is indicated by taking advantage of the fuzzy preference relation analysis on the foundation of the uncertainty of each piece of evidence measured by the belief entropy. Based on that, the support degrees of the evidence are adjusted, which can be utilized to generate the appropriate weights with regard to the evidence. Finally, the weighted average evidence can be obtained on the basis of the modified weights of the evidence before using Dempster’s combination rule. A numerical example and a practical application in fault diagnosis are used as illustrations to demonstrate that the proposed method outperforms the related methods with respect to the conflict management and fault diagnosis. The remaining content of this paper is arranged below. Section 2 introduces the preliminaries of this paper briefly. In Section 3, a novel multi-sensor data fusion approach with regard to fault diagnosis is proposed. Section 4 gives a numerical example to illustrate the effectiveness of the proposal. Then, the proposed method is applied to a practical application in fault diagnosis in Section 5. Finally, Section 6 gives the conclusion.

2. Preliminaries

2.1. Dempster–Shafer Evidence Theory

Dempster–Shafer evidence theory [23,24] is extensively applied to handle uncertain information that belongs to the category of artificial intelligence. Because Dempster–Shafer evidence theory is flexible and effective in modeling the uncertainty regardless of prior information, it requires weaker conditions compared with the Bayesian theory of probability. When the probability is confirmed, Dempster–Shafer evidence theory degenerates to the probability theory and is considered as a generalization of Bayesian inference [74]. In addition, Dempster–Shafer evidence theory has the advantage that it can directly express the “uncertainty” via allocating the probability into the set’s subsets, which consists of multi-objects, instead of a single object. Furthermore, it is capable of combining the bodies of evidence to derive new evidence. The basic concepts and definitions are described as below. Let Θ be a nonempty set of events that are mutually-exclusive and collectively-exhaustive, defined by: in which the set Θ denotes a frame of discernment. The power set of Θ is represented as and ∅ is an empty set. When A is an element of the power set of Θ, i.e., In the frame of discernment Θ, a mass function m is represented as a mapping from which meets the conditions below: The mass function m in the Dempster–Shafer evidence theory can also be called a basic probability assignment (BPA). When is greater than zero, A as the element of is named as a focal element of the mass function, where the mass function indicates how strongly the evidence supports the proposition or hypothesis A. Let A be a proposition where The plausibility function where Apparently, the plausibility function is equal to or greater than the belief function , where the belief function is the lower limit function of the proposition A, and the plausibility function is the upper limit function of the proposition A. Let two basic probability assignments (BPAs) be Θ where the BPAs with: where B and C are also the elements of Notice that Dempster’s combination rule is only practicable for the BPAs and under the condition that .

2.2. Distance of Pieces of Evidence

Jousselme et al. [75] presented a distance function of the evidence to measure the distance among the basic probability assignments (BPAs), which is defined as below. Let two basic probability assignments (BPAs) Θ, which contains N number of mutually-exclusive and collectively-exhaustive propositions. The distance between the BPAs where The elements of where It can be stated that . Specifically, the value of is zero, when no common items exist between the elements A and B, which means that the element A highly conflicts with the element B so that the degree of similarity between the elements A and B is zero. Therefore, the smaller the is, the less similarity between the elements A and B there is; whereas, indicates that the element A is identical to the element B.

2.3. Belief Entropy

A belief entropy, called the Deng entropy, was first proposed by Deng [43] and has been applied in various fields [76]. As the generalization of the Shannon entropy [77,78], the Deng entropy is an effective math tool for measuring the uncertain information, because the uncertain information can be expressed by BPAs, so that it can be used in the evidence theory. In such a situation that the uncertainty is expressed by the probability distribution, the uncertain degree measured by the Deng entropy will be identical to the uncertain degree measured by the Shannon entropy. The basic concepts and definitions are introduced below. Let A be a proposition of the basic probability assignment (BPA) m on the frame of discernment ; the Deng entropy of the BPA m is defined as follows: where is the cardinality of the proposition A. When the belief is only allocated to the single object, which means that , the Deng entropy degenerates to the Shannon entropy, namely, The larger the cardinality of the proposition is, the larger the Deng entropy of evidence is, so that the evidence contains more information. When a piece of evidence has a big Deng entropy, it is supposed to be better supported by other evidence, which represents that this evidence plays an important part in the final combination.

2.4. Fuzzy Preference Relations

Fuzzy preference relations play a fundamental part in many decision-making processes, and they were first presented by Tanino [79] in 1984. It is a kind of method that can construct the decision matrices of pairwise comparisons by using the linguistic values that are provided by experts. The basic concepts are introduced below. (Fuzzy preference relations [79,80,81,82]). Let P be a fuzzy preference relation and where It should be stated that represents the indifference between the alternatives and ; represents that is absolutely preferred by ; represents that is preferred by . Whereas, the preference values may be inconsistent in the fuzzy preference relation, hence, Tanino [79] proposed the concept of the additive consistency for the fuzzy preference relation as follows: where and (). After that, Lee [80] claimed that the complete fuzzy preference relation may not satisfy the consistency of the order in certain cases. Hence, the consistency of the order in fuzzy preference relations was presented by Lee [80] to solve this problem. (The consistency matrix [80]). Let The consistency matrix () has the properties below: ; ; ; for all , where and . Let be a consistency matrix; the ranking value of alternative , denoted as , is defined by: where and .

3. The Proposed Method

In this paper, by considering not only the conflicts between pieces of evidence, but also the impact of the evidence’s uncertainty itself, a novel multi-sensor data fusion approach is presented and applied in fault diagnosis. The proposed method is a hybrid methodology that integrates the distance of evidence, belief entropy and fuzzy preference relation analysis, which consists of the following parts. The function of evidence distance is first leveraged for measuring the conflict degree among the pieces of evidence, then the support degree resulting from the distance of the evidence is obtained to denote the evidence’s reliability. When the evidence is well supported by other pieces of evidence, it is supposed to have less conflict with other pieces of evidence, so that a big weight should be allocated to this piece of evidence. Instead, when the evidence is poorly supported by other pieces of evidence, it is regarded to highly conflict with other pieces of evidence so that a small weight should be allocated to this evidence. Next, the information volume of the evidence is calculated by making use of the belief entropy. Based on the calculated quantitative information volume, the fuzzy preference relations analysis is applied to indicate the relative credibility preference in terms of the pieces of evidence. Whereafter, the support degree of the evidence is adjusted by taking advantage of the relative credibility preference of the pieces of evidence. Thanks to introducing the fuzzy preference relations analysis based on the belief entropy, it can automatically construct the fuzzy preference relation matrix, rather than being determined by experts, which decreases the epistemic non-determinacy in the decision-making process. Finally, the adjusted weights of the pieces of evidence are applied to modify the body of the pieces of evidence before utilizing Dempster’s combination rule. The flowchart of the proposal is shown in Figure 1.
Figure 1

The flowchart of the proposed method.

The distance measure between the BPAs and can be obtained by Equations (9) and (10); thus, a distance measure matrix can be constructed as follows: The similarity measure between the BPAs and can be obtained by: Then, the similarity measure matrix can be constructed as follows: The support degree of the BPA is defined as follows: The support degree of the BPA is normalized as below, which is denoted as :

3.2. Generate the Credibility Value of the Evidence

In the course of information fusion, it is important to identify the relatively credible evidence in terms of the obtained pieces of evidence. Due to the increase of the uncertainty in the collection of information, the degree of anarchy involved in the systems rises, which violates the necessary condition to use Dempster’s rule of combination. Utilizing the ordered information can make the technologies based on the Dempster–Shafer evidence theory more robust. Therefore, we take advantage of the fuzzy preference relations analysis [79] based on the belief entropy [43] to indicate the relative credibility preference among the pieces of evidence. The concrete steps are listed as follows: 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: The information volume of the BPA is normalized as below, which is denoted as : The fuzzy preference relation matrix , where can be constructed by the following steps: According to Definition 6, the diagonal element is assigned to 0.5. 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: If there are more than two pieces of evidence, the variance of entropy for the BPA will be calculated as follows: 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]. where and . Based on the obtained fuzzy preference relation matrix , the consistency matrix can be constructed by Equation (16). 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. Based on the credibility degree , the normalized support degree of the BPA will be adjusted, denoted as : The is normalized as below, denoted as , which is considered as the final weight of the BPA . On the basis of the final weight , the weighted average evidence can be obtained as follows: where k denotes the number of BPAs and represents the i-th BPA, which are modeled from the sensor reports. 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

In this section, to demonstrate the effectiveness of the proposal, a numerical example is illustrated. Consider a target recognition problem based on multiple sensors associated with the sensor reports that are collected from five different types of sensors. These sensor reports that are modeled as the BPAs are given in Θ that consists of three potential objects is given by Construct the distance measure matrix as follows: Construct the similarity measure matrix as follows: Calculate the support degree of the BPA as below: = 2.4551, = 1.0716, = 2.7689, = 2.8239, = 2.8055. Normalize the support degree of the BPA as follows: = 0.2059, = 0.0899, = 0.2322, = 0.2368, = 0.2353. Measure the information volume of the BPA as below: = 4.7894, = 1.5984, = 6.1056, = 6.6286, = 5.8767. Normalize the information volume of the BPA as follows: = 0.1916, = 0.0639, = 0.2442, = 0.2652, = 0.2351. Construct the fuzzy preference relation matrix as follows: Construct the consistency matrix as follows: Calculate the credibility value of the BPA as below: = 0.2395, = 0.0749, = 0.2312, = 0.2198, = 0.2345. 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. Normalize the adjusted support degree of the BPA as below: = 0.2273, = 0.0310, = 0.2474, = 0.2399, = 0.2543. Compute the weighted average evidence as below: = 0.5213, = 0.1606, = 0.0713, = 0.2469. 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. From Example 1, we can notice that the evidence highly conflicts with other pieces of evidence, because the normalized support degree of the evidence is 0.0899, which is much lower than the normalized support degrees of other pieces of evidence. The fusing results that are generated by different combination methods are shown in Table 2. The comparisons of the BPA of the target A by different combination rules are shown in Figure 2.
Table 2

Combination results of the evidence in terms of different combination rules.

EvidenceMethod{A}{B}{C}{AC}Target
m1,m2,m3Dempster [23]00.63500.36500B
Murphy [71]0.49390.41800.07920.0090A
Deng et al. [72]0.49740.40540.08880.0084A
Zhang et al. [73]0.56810.33190.09290.0084A
Proposed method0.76170.11270.11760.0080A
m1,m2,m3,m4Dempster [23]00.33210.66790C
Murphy [71]0.83620.11470.04100.0081A
Deng et al. [72]0.90890.04440.03790.0089A
Zhang et al. [73]0.91420.03950.03990.0083A
Proposed method0.95070.00600.03340.0087A
m1,m2,m3,m4,m5Dempster [23]00.14220.85780C
Murphy [71]0.96200.02100.01380.0032A
Deng et al. [72]0.98200.00390.01070.0034A
Zhang et al. [73]0.98200.00340.01150.0032A
Proposed method0.98880.00040.00870.0034A
Figure 2

The comparison of different methods in Example 1.

As shown in Table 2, Dempster’s combination rule generates a counterintuitive result, even though the other four pieces of evidence support the target A. As the number of pieces of evidence increases from 3–5, Murphy’s method [71], Deng et al.’s method [72], Zhang et al.’s method [73] and the proposed method present reasonable results. Additionally, the proposed method is efficient in dealing with the conflicting pieces of evidence with better convergence as shown in Figure 2. The reason is that the proposal not only makes use of the function of evidence distance to obtain the evidence’s support degree, but also adopts the fuzzy preference relations analysis based on the belief entropy to measure the relative credibility preference among the pieces of evidence. After considering these aspects, the unreliable evidence’s weight is decreased, so that its negative effect can be relieved on the final fusing results compared to other methods.

5. Application

In this section, the proposal is applied to the fault diagnosis of a motor rotor, where the practical data in [27] are used for the comparison with the related method.

5.1. Problem Statement

Supposing that the frame of discernment , which consists of three types of faults for a motor rotor is given by = , , = . The set of vibration acceleration sensors given by S = is positioned at different places for gathering the vibration signals. The acceleration vibration frequency amplitudes at frequency, frequency and frequency are considered as the fault feature variables. The collected sensor reports at frequency, frequency and frequency that are modeled as BPAs are given in Table 3, Table 4 and Table 5, respectively, where , and represent the BPAs reported from the three vibration acceleration sensors , and .
Table 3

The collected sensor reports at the frequency of modeled as BPAs.

BPA{F2}{F3}{F1,F2}{F1,F2,F3}
S1:m1(·)0.81760.00030.15530.0268
S2:m2(·)0.56580.00090.06460.3687
S3:m3(·)0.24030.00040.01410.7452
Table 4

The collected sensor reports at the frequency of modeled as BPAs.

BPA{F2}{F1,F2,F3}
S1:m1(·)0.62290.3771
S2:m2(·)0.76600.2341
S3:m3(·)0.85980.1402
Table 5

The collected sensor reports at the frequency of modeled as BPAs.

BPA{F1}{F2}{F1,F2}{F1,F2,F3}
S1:m1(·)0.36660.45630.11850.0586
S2:m2(·)0.27930.41510.26520.0404
S3:m3(·)0.28970.43310.24700.0302

5.2. Motor Rotor Fault Diagnosis Based on the Proposed Method

5.2.1. Motor Rotor Fault Diagnosis at Frequency

According to the proposed method in Section 3 and Table 3’s BPAs modeled by the collected sensor reports at the frequency of , the weighted average evidence in terms of motor rotor fault diagnosis at frequency is obtained as follows: = 0.5636, = 0.0006, = 0.0782, = 0.3576. After that, the weighted average evidence in terms of motor rotor fault diagnosis at frequency is fused by utilizing Dempster’s rule of combination two times. The results of the combination for the first time are shown below: = 0.8095, = 0.0004, = 0.0621, = 0.1280. Then, the results of the combination for the second time, namely the final fusing results for motor rotor fault diagnosis at frequency, are generated as follows: = 0.9169, = 0.0002, = 0.0371, = 0.0458.

5.2.2. Motor Rotor Fault Diagnosis at Frequency

On the basis of the proposed method in Section 3 and Table 4’s BPAs modeled by the collected sensor reports at the frequency of , the weighted average evidence with respect to motor rotor fault diagnosis at frequency is obtained as follows: = 0.7754, = 0.2246. Next, by leveraging Dempster’s rule of combination, the weighted average evidence with respect to motor rotor fault diagnosis at frequency is fused two times. For the combination for the first time, the fusion results are given below: = 0.9496, = 0.0504. Afterwards, for the combination for the second time, the final fusion results with respect to motor rotor fault diagnosis at frequency are shown below: = 0.9887, = 0.0113.

5.2.3. Motor Rotor Fault Diagnosis at Frequency

By applying the proposed method in Section 3 and Table 5’s BPAs modeled by the collected sensor reports at the frequency of , the weighted average evidence with regard to motor rotor fault diagnosis at frequency is obtained as follows: = 0.3028, = 0.4323, = 0.2254, = 0.0395. Therewith, the weighted average evidence with regard to motor rotor fault diagnosis at frequency is fused by utilizing Dempster’s rule of combination two times. The combination results for the first time are listed below: = 0.3415, = 0.5634, = 0.0929, = 0.0021. Then, the final combination results for the second time for motor rotor fault diagnosis at frequency are shown below: = 0.3266, = 0.6365, = 0.0368, = 0.0001.

5.3. Discussion

According to the results as shown in Table 6, Table 7 and Table 8, we can notice that the proposed method can diagnose the fault type , which is consistent with Jiang et al.’s method [27]. Even facing the conflicting sensor reports where the normalized support degrees of the sensor reports are different at frequency, frequency and frequency, both of the methods can well manage the conflicting pieces of evidence and diagnose the fault type .
Table 6

Fusion results of different methods for motor rotor fault diagnosis at frequency.

Method{F2}{F3}{F1,F2}{F1,F2,F3}Target
Jiang et al. [27]0.88610.00020.05820.0555F2
Proposed method0.91690.00020.03710.0458F2
Table 7

Fusion results of different methods for motor rotor fault diagnosis at frequency.

Method{F2}{F1,F2,F3}Target
Jiang et al. [27]0.96210.0371F2
Proposed method0.98870.0113F2
Table 8

Fusion results of different methods for motor rotor fault diagnosis at frequency.

Method{F1}{F2}{F1,F2}{F1,F2,F3}Target
Jiang et al. [27]0.33840.59040.06510.0061F2
Proposed method0.32660.63650.03680.0001F2
Furthermore, the proposed method outperforms Jiang et al.’s method [27] in terms of dealing with the conflicting pieces of evidence, as well as coping with the uncertainty as shown in Figure 3, Figure 4 and Figure 5, because the belief degrees assigned to the target at frequency, frequency and frequency by the proposed method rise to 91.69%, 98.87% and 63.65%, respectively, while the belief degrees assigned to the target at frequency, frequency and frequency by the method Jiang et al. [27] are 88.61%, 96.21% and 59.04%, respectively.
Figure 3

The comparison of different methods for motor rotor fault diagnosis at frequency.

Figure 4

The comparison of different methods for motor rotor fault diagnosis at frequency.

Figure 5

The comparison of different methods for motor rotor fault diagnosis at frequency.

On the other hand, the uncertainty falls to 0.0371 from 0.0582, and the uncertainty falls to 0.0458 from 0.0555 at frequency; the uncertainty drops to 0.0113 from 0.0371 at frequency; the uncertainty falls to 0.0368 from 0.0651, and the uncertainty falls to 0.0001 from 0.0061 at frequency. The main reason is that the proposed method not only takes the support degree of the sensor reports into account by making use of the function of evidence distance, but also considers the relative credibility preference of the sensor reports by taking advantage of the fuzzy preference relations analysis on the basis of the belief entropy. As a result, the proposed method can diagnose motor rotor fault more accurately.

6. Conclusions

In this paper, on account of the support degree among the pieces of evidence, the uncertainty measure of the evidence and the effect of the relative credibility of evidence on the weight, a novel method for multi-sensor data fusion was proposed. The proposed method was a hybrid methodology by integrating the distance of evidence, belief entropy and fuzzy preference relation analysis. It consisted of three main procedures. Firstly, the support degree of the evidence was calculated to represent the reliability of the evidence. Secondly, the credibility value of the evidence was generated to indicate the relative credibility preference of the evidence. Thirdly, based on the first two procedures, the weighted average evidence was obtained; thus, it could be fused by applying Dempster’s combination rule. As described above, the proposed method was a kind of approach to pre-process the bodies of evidence. Through a numerical example, it was illustrated that the proposal was more effective and feasible than other related methods to handle the conflicting evidence combination problem under a multi-sensor environment with better convergence. On the other hand, a practical application in fault diagnosis was presented to demonstrate that the proposed method could diagnose the faults more accurately. In future work, I intend to consider further fault diagnosis of complicated equipment/systems that involves certain faults, such as cracks and misalignment. On the other hand, multiple faults, like bearing faults, rotor-related faults, etc., will be taken into account in future work to improve the robustness of the technique. References
Table 1

The basic probability assignments (BPAs) for Example 1.

BPA{A}{B}{C}{A,C}
S1:m1(·)0.410.290.300.00
S2:m2(·)0.000.900.100.00
S3:m3(·)0.580.070.000.35
S4:m4(·)0.550.100.000.35
S5:m5(·)0.600.100.000.30
  8 in total

1.  Ordered visibility graph average aggregation operator: An application in produced water management.

Authors:  Wen Jiang; Boya Wei; Yongchuan Tang; Deyun Zhou
Journal:  Chaos       Date:  2017-02       Impact factor: 3.642

2.  A novel generalized belief structure comprising unprecisiated uncertainty applied to aphasia diagnosis.

Authors:  Farnaz Sabahi
Journal:  J Biomed Inform       Date:  2016-06-11       Impact factor: 6.317

3.  Advances in multi-sensor data fusion: algorithms and applications.

Authors:  Jiang Dong; Dafang Zhuang; Yaohuan Huang; Jingying Fu
Journal:  Sensors (Basel)       Date:  2009-09-30       Impact factor: 3.847

4.  Sensor Data Fusion with Z-Numbers and Its Application in Fault Diagnosis.

Authors:  Wen Jiang; Chunhe Xie; Miaoyan Zhuang; Yehang Shou; Yongchuan Tang
Journal:  Sensors (Basel)       Date:  2016-09-15       Impact factor: 3.576

5.  Evidence conflict measure based on OWA operator in open world.

Authors:  Wen Jiang; Shiyu Wang; Xiang Liu; Hanqing Zheng; Boya Wei
Journal:  PLoS One       Date:  2017-05-18       Impact factor: 3.240

6.  Novel algorithm for identifying and fusing conflicting data in wireless sensor networks.

Authors:  Zhenjiang Zhang; Tonghuan Liu; Dong Chen; Wenyu Zhang
Journal:  Sensors (Basel)       Date:  2014-05-30       Impact factor: 3.576

7.  Modeling Sensor Reliability in Fault Diagnosis Based on Evidence Theory.

Authors:  Kaijuan Yuan; Fuyuan Xiao; Liguo Fei; Bingyi Kang; Yong Deng
Journal:  Sensors (Basel)       Date:  2016-01-18       Impact factor: 3.576

8.  Zero-Sum Matrix Game with Payoffs of Dempster-Shafer Belief Structures and Its Applications on Sensors.

Authors:  Xinyang Deng; Wen Jiang; Jiandong Zhang
Journal:  Sensors (Basel)       Date:  2017-04-21       Impact factor: 3.576

  8 in total
  7 in total

1.  Some aggregation operators of neutrosophic Z-numbers and their multicriteria decision making method.

Authors:  Shigui Du; Jun Ye; Rui Yong; Fangwei Zhang
Journal:  Complex Intell Systems       Date:  2020-11-01

2.  Interval-valued distributed preference relation and its application to group decision making.

Authors:  Yin Liu; Chao Fu; Min Xue; Wenjun Chang; Shanlin Yang
Journal:  PLoS One       Date:  2018-06-11       Impact factor: 3.240

3.  A Novel Evidence Conflict Measurement for Multi-Sensor Data Fusion Based on the Evidence Distance and Evidence Angle.

Authors:  Zhan Deng; Jianyu Wang
Journal:  Sensors (Basel)       Date:  2020-01-09       Impact factor: 3.576

4.  Negation of Belief Function Based on the Total Uncertainty Measure.

Authors:  Kangyang Xie; Fuyuan Xiao
Journal:  Entropy (Basel)       Date:  2019-01-15       Impact factor: 2.524

5.  Bayesian Update with Information Quality under the Framework of Evidence Theory.

Authors:  Yuting Li; Fuyuan Xiao
Journal:  Entropy (Basel)       Date:  2018-12-21       Impact factor: 2.524

6.  Energy and Entropy Measures of Fuzzy Relations for Data Analysis.

Authors:  Ferdinando Di Martino; Salvatore Sessa
Journal:  Entropy (Basel)       Date:  2018-05-31       Impact factor: 2.524

7.  A Weighted Combination Method for Conflicting Evidence in Multi-Sensor Data Fusion.

Authors:  Fuyuan Xiao; Bowen Qin
Journal:  Sensors (Basel)       Date:  2018-05-09       Impact factor: 3.576

  7 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.