An Integrated Two-Dimension Linguistic Intuitionistic Fuzzy Decision-Making Approach for Unmanned Aerial Vehicle Supplier Selection
Abstract
:1. Introduction
- (1)
- The two-dimension linguistic intuitionistic fuzzy BWM is proposed by extending BWM with 2DLIFV, where the linguistic preference information of the attributes is expressed by 2DLIFVs and quantified by the score function, and the optimization model for calculating the attribute weights is constructed.
- (2)
- The two-dimension linguistic intuitionistic fuzzy MULTIMOORA method is proposed, where a 2DLIF ratio system, a 2DLIF reference point approach and a 2DLIF full multiplicative form are extended with 2DLIFV using the aggregation operators and Euclidean distance. Further, an expert weight calculation method that combines the uncertainty degree and consensus degree of the experts is introduced, which could effectively reflect the importance of the experts.
- (3)
- An integrated MAGDM method based on the 2DLIF-BWM and 2DLIF-MULTIMOORA method is proposed for sustainable supplier selection, where 2DLIFVs are utilized to represent the uncertain and linguistic evaluation information of experts.
2. Related works
2.1. Sustainable Supplier Selection
2.2. MAGDM Methods
2.2.1. Best-Worst Method
2.2.2. MULTIMOORA Method
3. Preliminaries
- 1.
- .
- 2.
- .
- 3.
- .
- 4.
- .
- 1.
- If , then ;
- 2.
- If :
- (a)
- If , then ;
- (b)
- If , then .
4. The Proposed Approach
4.1. Framework of the Proposed Approach
4.2. Stage I: Attribute Weight Calculation
4.3. Stage II: Supplier Ranking and Selection
5. Case Study
5.1. Problem Description
- (1)
- An expert committee was established, which included a supply chain manager, an inspection engineer and a professor who all had more than ten years of experience in this field.
- (2)
- After initial selection, four UAV companies were determined as candidate UAV suppliers for evaluation, denoted by .
- (3)
- Based on discussion and experiences, the experts committee identified eight evaluation attributes for this problem considering the unique characteristics of this problem, shown in Table 2.
- (4)
- Each expert used 2DLIFVs to evaluate four alternatives with regard to the evaluation attributes, where the I class linguistic term set was defined as , and the II class linguistic set was defined as .
Aspect | Attribute | Specification | Source |
---|---|---|---|
Economic | : price | The lowest price of the product and the service the supplier could offer. | [41,73,74] |
: quality | The supplier should provide UAV and service that could meet the requirements. This attribute denotes how the UAV and service of the supplier satisfy the requirements. | [40,41,74,75,76] | |
: delivery | The supplier should be able to provide the UAV and service on time. This attribute represents the ability of the supplier to deliver the UAV and service within the time limits. | [77,78,79,80] | |
: technology | The product provided by the supplier should be innovative and with new technology. This attribute represents the integrated technology behind the UAV and service provided by the supplier. | [76,77,78] | |
Social | : reliability | The UAV should be able to complete the task even under extreme circumstances. This attribute represents the ability of the UAV to complete the tasks. | [41,81] |
: training | The completion of the task not only requires a quality product, but also depends on the employees of the supplier to provide reliable services. This attribute represents the training and education of the employees. | [41] | |
Environmental | : pollution | Pollution is an important aspect for sustainability and environmental protection. This attribute represents the ability of the supplier to control and reduce pollution of the UAV. | [41,77,78,79,80] |
: eco-friendly | The UAV and service of the supplier should be sustainable for natural ecosystems. This attribute represents the ability of the supplier to provide the UAV and service in a green and eco-friendly way. | [41,73,77] |
5.2. Decision-Making Process
Attribute | ||
---|---|---|
6. Results and Discussion
6.1. Sensitivity Analysis
6.2. Comparative Analysis
- (1)
- The proposed method is developed based on the 2DLIFVs, which could provide the experts more freedom in expressing their uncertain, fuzzy and linguistic evaluations. Compared to the proposed method, other methods use LIFs and 2DLFs, which are particular cases of 2DLIFVs.
- (2)
- The 2DLIF-BWM is adopted as the attribute weight calculation method in the proposed method, which enables a consistent and reliable attribute weight calculation approach with significantly fewer pairwise comparisons.
- (3)
- The weights of the experts are calculated based on both the uncertainty degree and the consensus degree of the experts, which could more effectively and reliably reflect the relative importance of different experts.
- (4)
- The 2DLIF-MULTIMOORA method is developed for ranking different alternatives, where the results of 2DLIF ratio system, 2DLIF reference point approach and 2DLIF full multiplicative form are aggregated to obtain the final results, which increases the reliability of the proposed method.
7. Conclusions
- (1)
- With respect to the evaluation of the experts, the proposed method provided a more convenient and flexible way for experts to provide their uncertain, fuzzy and linguistic evaluations of the attributes by using 2DLIFVs.
- (2)
- With respect to the attribute weights, the proposed method presented an effective yet simple way to calculate the weights of different attributes by expanding the BWM with 2DLIFV, where the preferences among different attributes were expressed by 2DLIFVs.
- (3)
- With respect to the expert weights, the proposed method enabled a more balanced and reliable calculation of the expert weights by combining the uncertainty degree and consensus degree of the experts, which could embed both the uncertainty and the consensus of the experts into the experts’ weights.
- (4)
- With respect to the ranking alternatives, the proposed method introduced an effective and reliable method by proposing the 2DLIF-MULTIMOORA method, where the evaluation results were obtained by aggregating the results of all three subordinates.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Ref | Year | Evaluation Representation | Method | Application |
---|---|---|---|---|
[22] | 2017 | Fuzzy set | BWM-TOPSIS | Sustainable supplier selection |
[23] | 2017 | Fuzzy set | ANP-VIKOR | Wood and paper industry |
[24] | 2017 | Interval type-2 fuzzy set | TODIM | Green supplier selection |
[25] | 2017 | Intuitionistic fuzzy set | PROMETHEE | Automobile factory |
[26] | 2017 | Fuzzy set | MULTIMOORA | Green supplier selection |
[27] | 2017 | Interval 2-tuple linguistic variable | ANP-ELECTRE II | Sustainable supplier selection |
[28] | 2017 | Interval type-2 fuzzy set | ELECTRE I | Sustainable supplier selection |
[29] | 2018 | Fuzzy set | AHP-VIKOR | Electronic goods manufacturing company |
[30] | 2018 | Fuzzy set | MOORA | Home appliance industry |
[31] | 2018 | Fuzzy set | QFD | Beverage industry |
[32] | 2018 | Interval-valued intuitionistic uncertain linguistic set | GRA-TOPSIS | Agri-food industry |
[33] | 2018 | Interval type-2 fuzzy set | ANP-VIKOR | Sustainable supplier selection |
[34] | 2019 | Interval-valued Pythagorean fuzzy set | TOPSIS | Home appliances manufacturer |
[35] | 2019 | Interval type-2 fuzzy set | AHPSort II | Sustainable supplier selection |
[36] | 2019 | Interval-valued intuitionistic uncertain linguistic set | BWM-AQM | Watch manufacturer |
[37] | 2019 | Interval type-2 fuzzy set | BWM-VIKOR | Green supplier selection |
[38] | 2019 | Probabilistic linguistic set | MABAC | Medical consumption products |
[39] | 2019 | Interval-valued linguistic variable | TODIM | Green supplier selection |
[40] | 2019 | Intuitionistic fuzzy set | TOPSIS | Automotive spare parts manufacturer |
[41] | 2020 | Crisp number | MARCOS | Healthcare industry |
[42] | 2020 | Fuzzy set | DEMATEL-TOPSIS | Smart supply chain |
[43] | 2020 | Intuitionistic fuzzy set | TOPSIS | Green supplier selection |
[44] | 2020 | Fuzzy set | BWM-CoCoSo’B | Home appliance manufacturer |
[45] | 2020 | Fuzzy set | BWM-TOPSIS | Steel industry |
[46] | 2020 | Fuzzy set | Fuzzy inference system | Iron and steel industry |
[47] | 2020 | Fuzzy set | BWM | Refinery equipment supplier selection |
[48] | 2020 | Fuzzy neutrosophic set | MABAC | Sustainable supplier selection |
[49] | 2020 | Interval type-2 fuzzy set | AHP | Home appliance manufacturer |
[50] | 2020 | Hesitant fuzzy set | PROMETHEE | Green supplier selection |
[51] | 2020 | Probabilistic uncertain linguistic set | QUALIFLEX | Green supplier selection |
[52] | 2021 | Probabilistic uncertain linguistic set | CODAS | Green supplier selection |
[53] | 2021 | Pythagorean fuzzy set | AHP-TOPSIS | Agricultural tools and machinery company |
[54] | 2021 | Interval-valued fuzzy neutrosophic set | CRITIC | Large dairy company |
[55] | 2021 | Intuitionistic linguistic rough set | MULTIMOORA | Shared power bank supplier selection |
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Method | Ranking Order |
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PROMETHEE | |
Verma’s method | |
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Li, C.; Huang, H.; Luo, Y. An Integrated Two-Dimension Linguistic Intuitionistic Fuzzy Decision-Making Approach for Unmanned Aerial Vehicle Supplier Selection. Sustainability 2022, 14, 11666. https://doi.org/10.3390/su141811666
Li C, Huang H, Luo Y. An Integrated Two-Dimension Linguistic Intuitionistic Fuzzy Decision-Making Approach for Unmanned Aerial Vehicle Supplier Selection. Sustainability. 2022; 14(18):11666. https://doi.org/10.3390/su141811666
Chicago/Turabian StyleLi, Chong, He Huang, and Ya Luo. 2022. "An Integrated Two-Dimension Linguistic Intuitionistic Fuzzy Decision-Making Approach for Unmanned Aerial Vehicle Supplier Selection" Sustainability 14, no. 18: 11666. https://doi.org/10.3390/su141811666
APA StyleLi, C., Huang, H., & Luo, Y. (2022). An Integrated Two-Dimension Linguistic Intuitionistic Fuzzy Decision-Making Approach for Unmanned Aerial Vehicle Supplier Selection. Sustainability, 14(18), 11666. https://doi.org/10.3390/su141811666