Uncertain Quality Function Deployment Using a Hybrid Group Decision Making Model
Abstract
:1. Introduction
2. Literature Review
3. Preliminaries
3.1. Hesitant Fuzzy Linguistic Term Sets
3.2. Interval 2-Tuple Linguistic Model
4. QFD Using Hesitant 2-Tuples and QUALIFLEX Method
4.1. Assess the Relationships between WHATs and HOWs
4.2. Determine the Importance Weights of CRs
- A weak ranking: ;
- A strict ranking: ;
- A ranking of differences: ;
- A ranking with multiples: ;
- An interval form: .
4.3. Determine the Ranking Order of DRs
5. Illustrative Example
5.1. Implementation
- P1 = (DR1, DR2, DR3, DR4), P2 = (DR1, DR2, DR4, DR3), P3 = (DR1, DR3, DR2, DR4),
- P4 = (DR1, DR3, DR4, DR2), P5 = (DR1, DR4, DR2, DR3), P6 = (DR1, DR4, DR3, DR2),
- P7 = (DR2, DR1, DR3, DR4), P8 = (DR2, DR1, DR4, DR3), P9 = (DR2, DR3, DR1, DR4),
- P10 = (DR2, DR3, DR4, DR1), P11 = (DR2, DR4, DR1, DR3), P12 = (DR2, DR4, DR3, DR1),
- P13 = (DR3, DR1, DR2, DR4), P14 = (DR3, DR1, DR4, DR2), P15 = (DR3, DR2, DR1, DR4),
- P16 = (DR3, DR2, DR4, DR1), P17 = (DR3, DR4, DR1, DR2), P18 = (DR3, DR4, DR2, DR1),
- P19 = (DR4, DR1, DR2, DR3), P20 = (DR4, DR1, DR3, DR2), P21 = (DR4, DR2, DR1, DR3),
- P22 = (DR4, DR2, DR3, DR1), P23 = (DR4, DR3, DR1, DR2), P24 = (DR4, DR3, DR2, DR1).
5.2. Comparisons and Discussions
- Different types of uncertainties in the implementation of QFD, such as imprecision, uncertainty and hesitation, can be well modeled via the hesitant 2-tuple linguistic term sets. The QFD team members can use more flexible and richer expressions to express their subjective judgments.
- By using the ITOWA operator, the proposed method can relieve the influence of unfair judgments concerning the relationships between CRs and DRs on the QFD analysis results, through assigning very low weights to those “false” or “biased” opinions.
- The proposed approach is able to deal with QFD problems in which the information about CR weights is incompletely known. Under the condition of incomplete weight information, a multiple objective programming model can be established to solve the optimal weights of CRs.
- The proposed methodology can get a more reasonable and credible ranking of DRs by using the modified QUALIFLEX approach, which makes the QFD analysis results certain and facilitates product planning decision-making.
- The proposed model is suitable to solve complicated QFD problems with comprehensive CRs and limited DRs, since the number of CRs has little effect upon the implementation efficiency of the proposed method.
6. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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WHATs (CRs) | Team Members | HOWs (DRs) | |||
---|---|---|---|---|---|
DR1 | DR2 | DR3 | DR4 | ||
CR1 | TM1 | Greater than MH | ML | Between L and M | M |
TM2 | H | M | M | At least ML | |
TM3 | Between H and VH | M | ML | M | |
TM4 | H | MH | Less than M | M | |
TM5 | H | At most MH | M | Between ML and MH | |
CR2 | TM1 | At least H | Greater than MH | Between MH and VH | H |
TM2 | VH | H | H | Greater than H | |
TM3 | Greater than H | VH | VH | Between MH and VH | |
TM4 | H | At least H | Greater than MH | H | |
TM5 | Between MH and VH | H | H | At least H | |
CR3 | TM1 | Greater than M | H | At least H | Between MH and VH |
TM2 | MH | Between MH and VH | VH | H | |
TM3 | H | H | Greater than H | H | |
TM4 | At least H | VH | VH | At most H | |
TM5 | VH | Greater than MH | VH | VH | |
CR4 | TM1 | Less than H | M | Greater than MH | MH |
TM2 | H | Between ML and MH | H | H | |
TM3 | MH | M | H | Less than H | |
TM4 | M | At most MH | MH | At most MH | |
TM5 | At most H | Less than MH | Between MH and VH | M | |
CR5 | TM1 | Between MH and VH | MH | At most H | Between L and ML |
TM2 | H | H | MH | ML | |
TM3 | H | Less than H | H | L | |
TM4 | At least MH | M | M | At most M | |
TM5 | H | MH | Between MH and VH | ML |
WHATs | HOWs | |||
---|---|---|---|---|
DR1 | DR2 | DR3 | DR4 | |
CR1 | [(s5, 0), (s6, 0)] | [(s2, 0), (s2, 0)] | [(s1, 0), (s3, 0)] | [(s3, 0), (s3, 0)] |
CR2 | [(s5, 0), (s6, 0)] | [(s5, 0), (s6, 0)] | [(s4, 0), (s6, 0)] | [(s5, 0), (s5, 0)] |
CR3 | [(s4, 0), (s6, 0)] | [(s5, 0), (s5, 0)] | [(s5, 0), (s6, 0)] | [(s4, 0), (s6, 0)] |
CR4 | [(s0, 0), (s4, 0)] | [(s3, 0), (s3, 0)] | [(s5, 0), (s6, 0)] | [(s4, 0), (s4, 0)] |
CR5 | [(s4, 0), (s6, 0)] | [(s4, 0), (s4, 0)] | [(s0, 0), (s5, 0)] | [(s1, 0), (s2, 0)] |
WHATs | HOWs | |||
---|---|---|---|---|
DR1 | DR2 | DR3 | DR4 | |
CR1 | ∆[0.833, 0.884] | ∆[0.884, 0.448] | ∆[0.448, 0.543] | ∆[0.543, 0.322] |
CR2 | ∆[0.876, 0.994] | ∆[0.994, 0.839] | ∆[0.839, 0.949] | ∆[0.949, 0.833] |
CR3 | ∆[0.791, 0.935] | ∆[0.935, 0.833] | ∆[0.833, 0.949] | ∆[0.949, 0.994] |
CR4 | ∆[0.426, 0.709] | ∆[0.709, 0.29] | ∆[0.290, 0.551] | ∆[0.551, 0.782] |
CR5 | ∆[0.782, 0.884] | ∆[0.884, 0.614] | ∆[0.614, 0.667] | ∆[0.667, 0.614] |
P1 | CR1 | CR2 | CR3 | CR4 | CR5 |
---|---|---|---|---|---|
0.131 | 0.059 | −0.030 | 0.069 | 0.147 | |
0.250 | 0.063 | −0.165 | −0.141 | 0.103 | |
0.119 | 0.063 | 0.034 | 0.008 | 0.250 | |
0.119 | 0.004 | −0.135 | −0.210 | −0.044 | |
−0.012 | 0.004 | 0.065 | −0.061 | 0.103 | |
−0.130 | 0.000 | 0.200 | 0.149 | 0.147 |
P1 | P2 | P3 | P4 | P5 | P6 | P7 | P8 | P9 | P10 | P11 | P12 |
0.0708 | 0.0708 | 0.0250 | 0.0250 | 0.0908 | 0.0908 | −0.0708 | −0.0708 | −0.0458 | −0.0458 | 0.0200 | 0.0200 |
0.0250 | 0.0908 | 0.0708 | 0.0908 | 0.0708 | 0.0250 | −0.0458 | 0.0200 | −0.0708 | 0.0200 | −0.0708 | −0.0458 |
0.0908 | 0.0250 | 0.0908 | 0.0708 | 0.0250 | 0.0708 | 0.0200 | −0.0458 | 0.0200 | −0.0708 | −0.0458 | −0.0708 |
−0.0458 | 0.0200 | 0.0458 | 0.0659 | −0.0200 | −0.0659 | 0.0250 | 0.0908 | −0.0250 | 0.0659 | −0.0908 | −0.0659 |
0.0200 | −0.0458 | 0.0659 | 0.0458 | −0.0659 | −0.0200 | 0.0908 | 0.0250 | 0.0659 | −0.0250 | −0.0659 | −0.0908 |
0.0659 | −0.0659 | 0.0200 | −0.0200 | −0.0458 | 0.0458 | 0.0659 | −0.0659 | 0.0908 | −0.0908 | 0.0250 | −0.0250 |
0.0708 | 0.0708 | 0.0250 | 0.0250 | 0.0908 | 0.0908 | −0.0708 | −0.0708 | −0.0458 | −0.0458 | 0.0200 | 0.0200 |
0.0250 | 0.0908 | 0.0708 | 0.0908 | 0.0708 | 0.0250 | −0.0458 | 0.0200 | −0.0708 | 0.0200 | −0.0708 | −0.0458 |
P13 | P14 | P15 | P16 | P17 | P18 | P19 | P20 | P21 | P22 | P23 | P24 |
−0.0250 | −0.0250 | 0.0458 | 0.0458 | 0.0659 | 0.0659 | −0.0908 | −0.0908 | −0.0200 | −0.0200 | −0.0659 | −0.0659 |
0.0458 | 0.0659 | −0.0250 | 0.0659 | −0.0250 | 0.0458 | −0.0200 | −0.0659 | −0.0908 | −0.0659 | −0.0908 | −0.0200 |
0.0659 | 0.0458 | 0.0659 | −0.0250 | 0.0458 | −0.0250 | −0.0659 | −0.0200 | −0.0659 | −0.0908 | −0.0200 | −0.0908 |
0.0708 | 0.0908 | −0.0708 | 0.0200 | −0.0908 | −0.0200 | 0.0708 | 0.0250 | −0.0708 | −0.0458 | −0.0250 | 0.0458 |
0.0908 | 0.0708 | 0.0200 | −0.0708 | −0.0200 | −0.0908 | 0.0250 | 0.0708 | −0.0458 | −0.0708 | 0.0458 | −0.0250 |
0.0200 | −0.0200 | 0.0908 | −0.0908 | 0.0708 | −0.0708 | −0.0458 | 0.0458 | 0.0250 | −0.0250 | 0.0708 | −0.0708 |
−0.0250 | −0.0250 | 0.0458 | 0.0458 | 0.0659 | 0.0659 | −0.0908 | −0.0908 | −0.0200 | −0.0200 | −0.0659 | −0.0659 |
0.0458 | 0.0659 | −0.0250 | 0.0659 | −0.0250 | 0.0458 | −0.0200 | −0.0659 | −0.0908 | −0.0659 | −0.0908 | −0.0200 |
HOWs | QFD | Fuzzy QFD | Linguistic QFD | Proposed Approach | |||
---|---|---|---|---|---|---|---|
Wj | Ranking | Ranking | Ranking | ||||
DR1 | 7.221 | 1 | (0.267, 0.475, 0.724) | 1 | s5.06 | 1 | 1 |
DR2 | 6.303 | 3 | (0.231, 0.415, 0.659) | 3 | s4.32 | 3 | 3 |
DR3 | 7.035 | 2 | (0.253, 0.448, 0.689) | 2 | s4.60 | 2 | 2 |
DR4 | 5.919 | 4 | (0.217, 0.400, 0.641) | 4 | s4.05 | 4 | 4 |
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Wang, Z.-L.; You, J.-X.; Liu, H.-C. Uncertain Quality Function Deployment Using a Hybrid Group Decision Making Model. Symmetry 2016, 8, 119. https://doi.org/10.3390/sym8110119
Wang Z-L, You J-X, Liu H-C. Uncertain Quality Function Deployment Using a Hybrid Group Decision Making Model. Symmetry. 2016; 8(11):119. https://doi.org/10.3390/sym8110119
Chicago/Turabian StyleWang, Ze-Ling, Jian-Xin You, and Hu-Chen Liu. 2016. "Uncertain Quality Function Deployment Using a Hybrid Group Decision Making Model" Symmetry 8, no. 11: 119. https://doi.org/10.3390/sym8110119
APA StyleWang, Z.-L., You, J.-X., & Liu, H.-C. (2016). Uncertain Quality Function Deployment Using a Hybrid Group Decision Making Model. Symmetry, 8(11), 119. https://doi.org/10.3390/sym8110119