A Novel Method for Failure Mode and Effect Analysis Based on the Fermatean Fuzzy Set and Bonferroni Mean Operator
Abstract
:1. Introduction
- Failure to consider the weighting relationship between risk factors, ignoring the fact that different risk factors are emphasized differently.
- Experts are unable to take into account the ambiguity and uncertainty of the assessment information when using traditional FMEA techniques for risk assessment. In a complex decision-making environment, Yes, it retains its intended meaning make them make biased risk assessments.
- When traditional FEMA techniques are used for risk assessment, it is easy to achieve results with the same assessment ordering; however, in practice, the failure modes with the same ordering results may need to represent different meanings.
- (1)
- The method proposed in this paper adopts FFZS to express the uncertainty of FMEA, which enhances the uncertainty and reliability of FMEA information.
- (2)
- The introduction of the BM operator simultaneously considers the weight relationship and correlation between risk factors, expanding the scope of risk factors to be considered.
- (3)
- The introduced cost factor and time factor enhance the accuracy of the risk ranking results.
2. FMEA Implementation
- (1)
- Information on target product failures (failed components, failure modes, failure frequencies, etc.) will be collected by technicians and can be extracted directly from the failure maintenance records of the target product to reduce the workload.
- (2)
- A small expert meeting, which may take the form of a videoconference, is held on the basis of the fault information collected, and typical failure modes, assessment criteria, and risk factor weightings are determined by joint decision-making.
- (3)
- Each expert can individually rate the typical failure modes based on their own expertise and in accordance with the evaluation criteria.
- (4)
- A staff member will summarize the assessment results from the experts using the new methodology proposed in this paper, and the summarization process can be calculated using a computer via FFZBWM to produce the final risk ranking results of the failure modes, to clarify the weaknesses, and to target the corrective actions.
3. Preliminaries
- (1)
- if and only if and .
- (2)
- if and only if and .
- (3)
- .
- (4)
- .
- (5)
- .
- (6)
- .
- (7)
- .
- (8)
- .
- (9)
- .
4. Some Fermatean Fuzzy Z Number Bonferroni Mean Operators
4.1. Fermatean Fuzzy Z-Number Bonferroni Mean Operator (FFZBM)
4.2. Fermatean Fuzzy Z-Number-Weighted Bonferroni Mean (FFZWBM) Operator
5. New Method
6. Example
6.1. Numerical Example
6.2. Comparing with the Other Operators
- Failure mode F4 is in the first place in the results of all three methods, and failure mode F7 is in the last place, which proves the effectiveness of the method of this paper.
- The traditional FMEA method provides the results of the failure mode F1 = F3; this paper proposes a method and the FFZWA method that F3 > F1. In practice, the failure mode F1 for the tool holder cannot be rotated; the severity of its degree of severity is higher than the failure mode F3’s poor positioning accuracy. However, the probability of the occurrence of F1 is much lower than F3, and the failure mode F3 positioning accuracy is an important observation index of the CNC tool holder, so it should have a higher degree of concern. Thus, the failure mode F3 sorting results should be higher than failure mode F1, which also shows that the traditional FMEA method is purely in the shortcomings.
- The results obtained from the method proposed in this paper are as follows: F1 > F8. Conversely, the results from the FFZWA method indicate F8 > F1. Specifically, F1 refers to the inability to rotate the tool holder for the failure mode, while F8’s power head rotation accuracy is poor. In actual working conditions, the tool holder’s inability to be indexed directly affects the working condition of the tool holder with high severity, and at the same time, its severity has a certain correlation with the detectable condition, which should also be considered when considering the sorting results. The poor rotational accuracy of the power head is less severe in the severity of the failure mode, but the detection of its failure mode requires more complex detection equipment and is also more expensive in terms of economic and time costs. Using the FFZWBM method proposed in this paper, the scoring values of different risk factors are aggregated, and the values of parameters r and t are set to clarify the correlation between different risk factors. For example, in this case, the correlation between failure mode severity and monitorability is considered, and the parameters r and t are set to 1 for these two items and 0 for the other items. Therefore, it is more reasonable to rank failure mode F1 before failure mode F8. Obtaining this result also indirectly proves the necessity of considering the correlation between risk factors.
7. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Number | Failure Mode | Fault Impact | Cause of Failure |
---|---|---|---|
E1 | Cutter cannot be rotated | Tool holder does not work | Motor failure |
E2 | Power head cannot be rotated | Tool holder does not work | Motor failure |
E3 | Poor positioning accuracy | Reduced accuracy of tool holder machining | Poor positioning accuracy |
E4 | Cutter cannot be rotated | Tool holder does not work | Motor failure |
E5 | Tool holder rattling | Reduced tool holder life | Gear damage |
E6 | Hydraulic oil leakage | Tool holder does not work | Damaged seal |
E7 | Power head rattling | Power head accuracy exceeds the standard | Bearing wear |
E8 | Poor power head rotation accuracy | Reduced accuracy of tool holder machining | Power head bearing wear |
Failure Mode | L1 | L2 | L3 | L4 | L5 |
---|---|---|---|---|---|
E1 | {(0.2, 0.8), (0.5, 0.7)} | {(0.7, 0.6), (0.5, 0.7)} | {(0.6, 0.7), (0.4, 0.8)} | {(0.4, 0.5), (0.6, 0.6)} | {(0.3, 0.7), (0.7, 0.7)} |
E2 | {(0.6, 0.7), (0.4, 0.6)} | {(0.8, 0.7), (0.2, 0.6)} | {(0.6, 0.8), (0.4, 0.8)} | {(0.7, 0.7), (0.3, 0.6)} | {(0.6, 0.5), (0.4, 0.5)} |
E3 | {(0.6, 0.8), (0.4, 0.7)} | {(0.5, 0.7), (0.5, 0.7)} | {(0.5, 0.8), (0.5, 0.6)} | {(0.6, 0.6), (0.4, 0.5)} | {(0.6, 0.6), (0.4, 0.7)} |
E4 | {(0.8, 0.7), (0.2, 0.7)} | {(0.9, 0.8), (0.1, 0.7)} | {(0.7, 0.8), (0.3, 0.7)} | {(0.8, 0.7), (0.2, 0.6)} | {(0.6, 0.7), (0.4, 0.8)} |
E5 | {(0.2, 0.8), (0.8, 0.6)} | {(0.3, 0.7), (0.7, 0.7)} | {(0.6, 0.8), (0.4, 0.8)} | {(0.6, 0.7), (0.4, 0.7)} | {(0.5, 0.7), (0.5, 0.6)} |
E6 | {(0.2, 0.7), (0.8, 0.8)} | {(0.2, 0.6), (0.8, 0.7)} | {(0.5, 0.7), (0.5, 0.7)} | {(0.6, 0.6), (0.4, 0.6)} | {(0.4, 0.6), (0.6, 0.6)} |
E7 | {(0.2, 0.8), (0.8, 0.8)} | {(0.1, 0.8), (0.9, 0.7)} | {(0.4, 0.7), (0.6, 0.8)} | {(0.5, 0.7), (0.5, 0.8)} | {(0.6, 0.5), (0.4, 0.6)} |
E8 | {(0.2, 0.7), (0.8, 0.8)} | {(0.5, 0.8), (0.5, 0.7)} | {(0.4, 0.6), (0.6, 0.7)} | {(0.6, 0.7), (0.4, 0.6)} | {(0.5, 0.6), (0.5, 0.6)} |
Failure Mode | Comprehensive Evaluation | Score |
---|---|---|
F1 | {(0.5601, 0.7703), (0.3702, 0.5523)} | 0.6135 |
F2 | {(0.7658, 0.7901), (0.1765, 0.4601} | 0.7619 |
F3 | {(0.6597, 0.8072), (0.3079, 0.4814)} | 0.6922 |
F4 | {(0.8635, 0.8406), (0.1054, 0.5523)} | 0.8338 |
F5 | {(0.5639, 0.8406), (0.4131, 0.5293)} | 0.6277 |
F6 | {(0.4972, 0.7437), (0.4879, 0.5293)} | 0.5558 |
F7 | {(0.4927, 0.8116), (0.5236, 0.6127)} | 0.5396 |
F8 | {(0.5515, 0.7857), (0.4014, 0.5293)} | 0.6104 |
Rank | F4 > F2 > F3 > F5 > F1 > F8 > F6 > F7 |
Method | Rank |
---|---|
FFZWBM | F4 > F2 > F3 > F5 > F1 > F8 > F6 > F7 |
FFZWA | F4 > F2 > F3 > F5 > F8 > F1 > F6 > F7 |
Traditional FMEA | F4 > F2 > F1 = F3 > F8 > F5 >F6 > F7 |
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Han, L.; Xia, M.; Yu, Y.; He, S. A Novel Method for Failure Mode and Effect Analysis Based on the Fermatean Fuzzy Set and Bonferroni Mean Operator. Machines 2024, 12, 332. https://doi.org/10.3390/machines12050332
Han L, Xia M, Yu Y, He S. A Novel Method for Failure Mode and Effect Analysis Based on the Fermatean Fuzzy Set and Bonferroni Mean Operator. Machines. 2024; 12(5):332. https://doi.org/10.3390/machines12050332
Chicago/Turabian StyleHan, Liangsheng, Mingyi Xia, Yang Yu, and Shuai He. 2024. "A Novel Method for Failure Mode and Effect Analysis Based on the Fermatean Fuzzy Set and Bonferroni Mean Operator" Machines 12, no. 5: 332. https://doi.org/10.3390/machines12050332
APA StyleHan, L., Xia, M., Yu, Y., & He, S. (2024). A Novel Method for Failure Mode and Effect Analysis Based on the Fermatean Fuzzy Set and Bonferroni Mean Operator. Machines, 12(5), 332. https://doi.org/10.3390/machines12050332