3D Printer Selection for Aircraft Component Manufacturing Using a Nonlinear FGM and Dependency-Considered Fuzzy VIKOR Approach
Abstract
:1. Introduction
- Some existing methods are illustrated with numerical examples rather than real cases;
- As mentioned above, the performances of 3D printers in different aspects may be correlated, while existing methods assume that they are independent.
- The nFGM method is devised to derive the absolute priorities of criteria. In this way, the derivation accuracy can be enhanced without reducing efficiency;
- By considering the dependency between criteria, the defined reference points are reasonable and realizable, thereby improving the correctness of decision making.
2. 3D Printing Technologies for Manufacturing Aircraft Components
3. Methodology
- Step 1. Form the fuzzy pairwise comparison matrix and check its fuzzy consistency ratio;
- Step 2. Apply nFGM to derive the absolute priorities of criteria;
- Step 3. Apply the formulae of the criteria to assess the performances of each 3D printer;
- Step 4. Assess and compare 3D printers using dependency-considered fuzzy VIKOR;
- Step 5. Choose the 3D printer that surpasses the other alternatives.
3.1. nFGM for Deriving the Fuzzy Priorities of Criteria
- xACO is based on the actual α cuts of a fuzzy priority, while nFGM is based on the estimated α cuts to save time;
- In xACO, the half-membership function of an absolute priority is approximated by a logarithmic function, while in nFGM, the half-membership function is approximated by either an exponential or a logarithmic function.
- Step 1. Approximate the α cuts of for α = 0, 0.5, and 1;
- Step 2. Conduct a crisp eigen analysis using the cores of matrix elements: The result is indicated with ;
- Step 3. Calibrate as [43]:
- Step 4. Use the α cuts of for α = 0 and 1 to fit both types of functions as:
- Step 5. Determine the function type using the α cuts of when α = 0.5:
3.2. Dependency-Considered Fuzzy VIKOR for Assessing 3D Printers
- ∀ r ≠ q;
- or .
4. Case Study
4.1. Background
- Five attributes–the number of materials supported, the number of nozzles, the price, the resolution, and the speed, were comparable. However, other properties, such as the mechanical properties of 3D-printed aircraft parts (including consistency, yield stress, ultimate strength, fatigue, etc.) may be more important in practice, but it is difficult to compare the performances in these properties of 3D-printed aircraft parts manufactured by various 3D printers in practice. One possible way to solve this problem is to ask each 3D printer supplier to print samples and provide their measurement reports. However, this would not be a comparison on an equally fair basis, even if they follow the same standard;
- Except for price and resolution, if the other attributes were larger, then all the better.
4.2. Application of the Proposed Methodology
4.2.1. Comparing All 3D Printers
4.2.2. Comparing 3D Printers Using Different Materials
4.3. Discussion
- (1)
- The most important criterion for the decision maker’s selection of a suitable 3D printer was the price, followed by speed and the number of materials supported. In contrast, the number of nozzles was the least important criterion;
- (2)
- The 3D printer that most conformed to the subjective judgment of the decision maker was Stratasys Fortus 900mc, which had the largest number of nozzles and comparable speed, while the price was not the highest. However, only the second requirement was met. HP Jet Fusion 5200 and Concept Laser M2 Cusing came in second and third;
- (3)
- The superiority of the Stratasys Fortus 900mc over the other 3D printers became significant when the value of η exceeded 0.6, which meant that more emphasis was placed on the average performance rather than the worst performance.
- (4)
- Among 3D printers that apply the direct metal laser sintering (DMLS) technology, Concept Laser M2 Cusing was the best choice;
- (5)
- If the dependency between the two criteria was not considered, the ranks of 3D printers remained unchanged. However, the superiority of the Stratasys Fortus 900mc became less significant. As a result, η must be set to a value greater than 0.66 to satisfy both two requirements;
- (6)
- By considering the dependency between two attributes, 3D printers were compared with the closest reference points that were practically feasible. As a result, the distance between a 3D printer and its reference point was closer than that without considering the dependency, as shown in Figure 3.
- (7)
- The application results of four contrasting MCDM methods are reported in Table 14: FGM–fuzzy weighted average (FWA) [52,53,54], the ordered weighted average (OWA) [55,56,57], FGM–FTOPSIS [58,59,60,61,62,63], and FGM-fuzzy VIKOR [64,65,66,67]. Clearly, the same 3D printer, Stratasys Fortus 900mc, was chosen by all methods, showing the trustability of the experimental result using the proposed methodology. However, 3D printers ranked differently in various methods. Their unequal performances in deriving the absolute priorities accounted for such difference. Defining and comparing with practically feasible solutions also accounted for such differences. For example, the EOS M 400-4 was not as good as the HP Jet Fusion 5200 for speed, and the opposite was true for resolution. Therefore, the two 3D printers were compared to different reference points, whereas in existing methods, they were compared to the same reference point. This explains why their ranking results in the proposed methodology differ from those in existing methods.
- (8)
- Although the attributes of the 3D printers compared in this experiment were not specific to 3D printers for manufacturing aircraft components, the decision maker was from the aviation industry, so his judgment on the relative priorities of criteria was only applicable to 3D printers for manufacturing aircraft components, not general-purpose 3D printers. In addition, in previous studies such as Chen and Lin [57], the number of supported application types was critical for choosing a general-purpose 3D printer, but it was not considered in this study when choosing a suitable 3D printer for manufacturing aircraft components;
- (9)
- The ground truth of this case study is that the EOS M 290 was dominated by other 3D printers and, therefore, could not be selected, while other 3D printers could be recommended using different MCDM methods. In addition, 3D printers performed better in more criteria, such as Stratasys Fortus 900mc and EOS M 400-4, which are more likely to be selected. The experimental results also support these facts.
5. Conclusions
- (1)
- The criterion most critical to the selection of a suitable 3D printer for manufacturing aircraft components was the price, followed by the speed and the number of materials supported;
- (2)
- The best 3D printers using FDM, DMLS, and MJF were Stratasys Fortus 900mc, Concept Laser M2 Cusing, and HP Jet Fusion 5200V, respectively.
- (3)
- In total, Stratasys Fortus 900mc achieved the best overall performance with an advantage of 88% over the other compared 3D printers.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Method | Method for Deriving Criteria | Method for Evaluating Alternatives | Accuracy | Efficiency | Dependency between Criteria |
---|---|---|---|---|---|
Lin and Chen [14] | Fuzzy geometric mean (FGM)-Fuzzy intersection (FI) | FTOPSIS | Low | High | Not considered |
Robertson et al. [17] | Subjective assignment | WA | Low | Very high | Not considered |
Prabhu and Ilangkumaran [19] | FGM | Fuzzy VIKOR | Low | High | Not considered |
Prabhu and Ilangkumaran [20] | Grey analysis | TOPSIS | Not comparable | Medium | Not considered |
Lei et al. [21] | PDHL | EDAS | Low | High | Not considered |
Chen [24] | Efficient approximating alpha-cut operations (xACO) | Type-II fuzzy VIKOR | High | Low | Not considered |
The proposed methodology | nFGM | Dependency- considered fuzzy VIKOR | High | High | Considered |
Method | Number of Crisp Eigen Analyses Required | Number of FGM Calculations Required | Shape of Membership Function | Efficiency | Accuracy |
---|---|---|---|---|---|
ACO | 0 | Nonlinear | Very low | Very high | |
xACO | 0 | Nonlinear | Very low~Low | High~Very high | |
FGM | 0 | 1 | Linear | Very high | Very low~Very high * |
cFGM | 1 | 1 | Linear | High | Low~Very high * |
cpFGM | 1 | 2λ − 1 | Piecewise linear | High | Moderate~Very high * |
acFGM | 1 | 1 | Linear | High | Moderate~Very high * |
nFGM | 1 | 1 | Nonlinear | High | High~Very high * |
Parameter | ||||||||
---|---|---|---|---|---|---|---|---|
11.43 | −12.38 | −4.49 | 6.26 | 1.47 | 3.72 | −1.34 | −1.48 | |
43.17 | −44.52 | −11.39 | 13.01 | 1.84 | 6.41 | −1.09 | −2.19 | |
3.17 | −4.16 | −3.01 | 5.90 | 1.72 | 2.23 | −3.10 | −1.23 | |
30.99 | −31.80 | −13.87 | 15.68 | 1.27 | 4.64 | −1.30 | −2.72 | |
6.44 | −7.23 | −3.93 | 6.03 | 1.33 | 2.87 | −1.81 | −1.54 |
Fuzzy Priorities | Left | Right |
---|---|---|
Exponential | Logarithmic | |
Exponential | Logarithmic | |
Logarithmic | Logarithmic | |
Exponential | Logarithmic | |
Exponential | Logarithmic |
3D Printer | Stratasys Fortus 900mc I | EOS M 290 II | Concept Laser M2 Cusing III | EOS M 400-4 IV | HP Jet Fusion 5200 V |
---|---|---|---|---|---|
Number of materials supported | 7 | 5 | 4 | 2 | 5 |
Number of nozzles | 1~4 | 1~2 | 1~2 | 4 | 2 |
Price (USD) | 400,000~1,000,000 | 250,000~450,000 | 500,000~1,000,000 | 1,000,000 | 400,000 |
Printing technology | FDM | DMLS | DMLS | DMLS | MJF |
Resolution (mm) | 0.13 ~ 0.5 | 0.02 ~ 0.04 | 0.02 ~ 0.08 | 0.1 ~ | 0.08 ~ |
Speed | 2230 cm3/h | 2.5 cm3/h | 2.5 cm3/h & nozzle | 100 g/h | 4500 cm3/h |
Vendor | Stratasys | EOS | Concept Laser | EOS | HP |
q | |||||
---|---|---|---|---|---|
1 | (4, 5, 5) | (4, 5, 5) | (4, 5, 5) | (4, 5, 5) | (1.5, 2.5, 3.5) |
2 | (1.5, 2.5, 3.5) | (0, 0, 1) | (0, 0, 1) | (0, 0, 1) | (0, 0, 1) |
3 | (1.5, 2.5, 3.5) | (0, 0, 1) | (4, 5, 5) | (0, 0, 1) | (0, 0, 1) |
4 | (0, 0, 1) | (4, 5, 5) | (4, 5, 5) | (3, 4, 5) | (0, 0, 1) |
5 | (1.5, 2.5, 3.5) | (0, 0, 1) | (0, 0, 1) | (1.5, 2.5, 3.5) | (4, 5, 5) |
Reference Point | i = 1 | i = 2 | i = 3 | i = 4 | i = 5 |
---|---|---|---|---|---|
(4, 5, 5) | (4, 5, 5) | (4, 5, 5) | (4, 5, 5) | (1.5, 2.5, 3.5) | |
(4, 5, 5) | (4, 5, 5) | (0, 0, 1) | (4, 5, 5) | (4, 5, 5) |
q | |
---|---|
1 | (0, 0, 0.2) |
2 | (0.1, 0.5, 0.7) |
3 | (0.1, 0.5, 0.7) |
4 | (0.6, 1, 1) |
5 | (0.1, 0.5, 0.7) |
q (3D Printer No.) | (Overall Performance) ( Cut) | Rank | |
---|---|---|---|
1 | 0: [0, 0.105]; 0.1: [0, 0.102]; 0.2: [0, 0.097]; 0.3: [0, 0.091]; 0.4: [0, 0.083]; 0.5: [0, 0.074]; 0.6: [0, 0.063]; 0.7: [0, 0.05]; 0.8: [0, 0.035]; 0.9: [0, 0.019]; 1: [0,0] | 0.022 | 1 |
2 | 0: [0.19, 0.437]; 0.1: [0.22, 0.458]; 0.2: [0.252, 0.48]; 0.3: [0.288, 0.501]; 0.4: [0.328, 0.522]; 0.5: [0.37, 0.542]; 0.6: [0.417, 0.563]; 0.7: [0.467, 0.583]; 0.8: [0.521, 0.603]; 0.9: [0.58, 0.623]; 1: [0.643, 0.643] | 0.531 | 5 |
3 | 0: [0.036, 0.171]; 0.1: [0.046, 0.181]; 0.2: [0.057, 0.19]; 0.3: [0.072, 0.198]; 0.4: [0.088, 0.204]; 0.5: [0.106, 0.21]; 0.6: [0.125, 0.214]; 0.7: [0.146, 0.217]; 0.8: [0.168, 0.218]; 0.9: [0.192, 0.218]; 1: [0.217, 0.217] | 0.182 | 3 |
4 | 0: [0.054, 0.163]; 0.1: [0.065, 0.173]; 0.2: [0.078, 0.182]; 0.3: [0.093, 0.191]; 0.4: [0.108, 0.198]; 0.5: [0.125, 0.205]; 0.6: [0.142, 0.211]; 0.7: [0.161, 0.216]; 0.8: [0.181, 0.22]; 0.9: [0.202, 0.222]; 1: [0.224, 0.224] | 0.189 | 4 |
5 | 0: [0.024, 0.132]; 0.1: [0.029, 0.133]; 0.2: [0.035, 0.133]; 0.3: [0.042, 0.136]; 0.4: [0.05, 0.137]; 0.5: [0.059, 0.137]; 0.6: [0.069, 0.136]; 0.7: [0.081, 0.133]; 0.8: [0.093, 0.13]; 0.9: [0.106, 0.125]; 1: [0.119, 0.119] | 0.107 | 2 |
Reference Point | i = 1 | i = 2 | i = 3 | i = 4 | i = 5 |
---|---|---|---|---|---|
(4, 5, 5) | (4, 5, 5) | (0, 0, 1) | (4, 5, 5) | (4, 5, 5) |
q (3D Printer No.) | Rank | |
---|---|---|
2 | 0.451 | 3 |
3 | 0.092 | 1 |
4 | 0.113 | 2 |
Reference Point | i = 1 | i = 2 | i = 3 | i = 4 | i = 5 |
---|---|---|---|---|---|
(4, 5, 5) | (4, 5, 5) | (4, 5, 5) | (4, 5, 5) | (4, 5, 5) |
q (3D Printer No.) | Rank | |
---|---|---|
1 | 0.150 | 1 |
5 | 0.479 | 2 |
q | Rank (FGM-FWA) | OWA | Rank (FGM-FTOPSIS) | Rank (FGM-Fuzzy VIKOR) | Rank (Proposed Methodology) |
---|---|---|---|---|---|
1 | 1 | 1 | 1 | 1 | 1 |
2 | 5 | 5 | 5 | 5 | 5 |
3 | 3 | 4 | 4 | 3 | 3 |
4 | 2 | 2 | 3 | 2 | 4 |
5 | 4 | 3 | 2 | 4 | 2 |
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Wang, Y.-C.; Chen, T.-C.T.; Lin, Y.-C. 3D Printer Selection for Aircraft Component Manufacturing Using a Nonlinear FGM and Dependency-Considered Fuzzy VIKOR Approach. Aerospace 2023, 10, 591. https://doi.org/10.3390/aerospace10070591
Wang Y-C, Chen T-CT, Lin Y-C. 3D Printer Selection for Aircraft Component Manufacturing Using a Nonlinear FGM and Dependency-Considered Fuzzy VIKOR Approach. Aerospace. 2023; 10(7):591. https://doi.org/10.3390/aerospace10070591
Chicago/Turabian StyleWang, Yu-Cheng, Tin-Chih Toly Chen, and Yu-Cheng Lin. 2023. "3D Printer Selection for Aircraft Component Manufacturing Using a Nonlinear FGM and Dependency-Considered Fuzzy VIKOR Approach" Aerospace 10, no. 7: 591. https://doi.org/10.3390/aerospace10070591
APA StyleWang, Y. -C., Chen, T. -C. T., & Lin, Y. -C. (2023). 3D Printer Selection for Aircraft Component Manufacturing Using a Nonlinear FGM and Dependency-Considered Fuzzy VIKOR Approach. Aerospace, 10(7), 591. https://doi.org/10.3390/aerospace10070591