Industrial and Management Applications of Type-2 Multi-Attribute Decision-Making Techniques Extended with Type-2 Fuzzy Sets from 2013 to 2022
Abstract
:1. Introduction
- (1)
- Which IT2FMADM techniques are being used frequently in (i) industrial engineering and (ii) computer science?
- (2)
- Which characteristics of IT2FNs are mostly employed?
- (3)
- Which method is mostly used for the aggregation of DMs’ assessment into unique opinion?
- (4)
- Which type of study is executed on these IT2FMADM techniques (distance between two IT2FNs, method of defuzzification, a method for the comparison of IT2FNs, etc.)? This paper provides a systematic survey that provides answers to the identified gap in the literature.
2. Materials and Methods
2.1. Basic Consideration of Type 2 Fuzzy Sets
2.2. Determining the Relative Importance of Attributes and Their Values
2.3. Determining of Attributes’ Weight
2.3.1. The Assessment in a Direct Way
2.3.2. Interval Type 2 Fuzzy Analytical Hierarchy Process-IT2FAHP
2.3.3. Interval Type 2 Fuzzy Best Worst Method-IT2FBWM
2.4. Analysis of Ranking Multi-Atrubutive Decision-Making Methods
- The utility-based IT2FMADM
2.4.1. Interval Type 2 Fuzzy Additive Ratio Assessment-IT2FARAS
2.4.2. Interval Type 2 Fuzzy Multi-Objective Optimization on the Basis of Ratio Analysis-IT2FMOORA (IT2FMULTIMOORA)
2.4.3. Interval Type 2 Fuzzy “An Acronym in Portuguese for Interactive and Multi-Criteria Decision-Making”-IT2FTODIM
2.4.4. Interval Type 2 Fuzzy Analytical Hierarchy Process-IT2FAHP
- The outranking IT2FMADM
2.4.5. Interval Type 2 Fuzzy Elimination et Choix Traduisant la Realité-IT2FELECTRE
- The compromise IT2FMADM
2.4.6. Interval Type 2 Fuzzy Complex Proportional Assessment-IT2FCOPRAS
2.4.7. Interval Type 2 Fuzzy Multi-Attributive Border Approximation Area Comparison Method-IT2FMABAC
2.4.8. Interval Type 2 Fuzzy Technique for Order Preference by Similarity to Ideal Solution-IT2FTOPSIS
2.4.9. Interval Type 2 Fuzzy VIekriterijumsko KOmpromisno Rangiranje-IT2FVIKOR
- The other IT2FMADM
2.4.10. Interval Type 2 Fuzzy Weighted Aggregated Sum Product Assessment-IT2FWASPAS
2.4.11. Interval Type 2 Fuzzy Decision-Making Trial and Evaluation Laboratory-IT2FDEMATEL
3. Results and Discussion of the Research
4. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Appendix A
Authors | Type of IT2FNs | Granulation/The Domain | The Aggregation Operators | The Determination of Attribute Weights |
---|---|---|---|---|
Celik et al. [27] | IT2TrFN | 5/[0–10] | Fuzzy arithmetic mean | Fuzzy weights vector |
Baležentis and Zeng [28] | IT2TrFN | 9/[0–1] | - | Crisp weights vector |
Chen and Hong [30] | IT2TrFN | 7/[0–1] | Method for comparison of IT2FNS combined with arithmetic mean | Weight attributed to the largest variable/Crisp weights vector |
Ghorabaee et al. [29] | IT2TrFN | 7/[0–1] | Fuzzy arithmetic mean | Fuzzy weights vector |
Abdullah and Zulkifli [33] | TrFN | 9/[1–9] | - | FAHP and fuzzy geometric mean/defuzzification are performed by using the centroid defuzzification method [89]/crisp weights vector |
Ghorabaee [19] | IT2TrFN | 7/[0–1] | Fuzzy arithmetic mean | Fuzzy weights vector |
Kilic and Kaya [32] | IT2TrFN | 5/[1–9] | IT2FAHP and fuzzy geometric mean/defuzzification are performed by using the center of area method [77]/crisp weights vector | |
Cebi and Otay [34] | IT2TrFN | 7/[0–1] | Fuzzy arithmetic mean | Fuzzy weights vector |
Qin et al. [31] | IT2TFN | 5/[0–10] | - | Fuzzy weights vector |
Qin et al. [43] | IT2TrFN | 7/[0–10] | Type 2 fuzzy weighted aggregation method | KM algorithm [90] |
Özkan et al. [37] | IT2TrFN | 5/[1–9] | IT2FAHP and fuzzy geometric mean/aggregation performed by using fuzzy arithmetic mean/fuzzy weights vector | |
Liao [38] | IT2TrFN | 5/[0–1] | - | Fuzzy weights vector |
Sang and Liu [39] | crisp | Crisp weights vector | ||
Ghorabaee et al. [36] | IT2TrFN | 7/[0–1] | Fuzzy arithmetic mean | Fuzzy weights vector |
Qin et al. [35] | IT2TrFN | 7/[0–10] | - | Fuzzy weights vector |
Ghorabaee et al. [41] | IT2TrFN | 7/[0–1] | Entropy method/fuzzy weights vector | |
Celik et al. [40] | IT2TrFN | 7/[0–10] | Fuzzy arithmetic mean | - |
Buyoukozkan [42] | IT2TrFN | 7/[0–1] | Fuzzy arithmetic mean | Fuzzy weights vector |
Gorener et al. [44] | IT2TrFN | 5/[1–9] | - | IT2FAHP and fuzzy geometric mean/fuzzy weights vector |
Deveci et al. [45] | IT2TrFN | 7/[0–1] | Fuzzy arithmetic mean | Fuzzy weights vector |
Mousakhani [46] | IT2TrFN | 7/[0–1] | Fuzzy geometric mean | Fuzzy weights vector |
Soner et al. [47] | IT2TrFN | 9/[1–10] | IT2FAHP and fuzzy geometric mean/fuzzy weights vector | |
Zhong and Yao [48] | IT2TrFN | 7/[0–1] | - | The information entropy/crisp weights vector |
Deveci et al. [49] | IT2TrFN | 5/[0–10] | Fuzzy arithmetic mean | Fuzzy weights vector |
Celik and Akyuz [20] | IT2TrFN | 9/[1–10] | - | IT2FAHP and fuzzy geometric mean/defuzzification procedure [76]/crisp weights vector |
Debnath and Biswas [50] | IT2TrFN | 5/[1–9] | - | IT2FAHP and fuzzy geometric mean/the proposed defuzzification procedure/fuzzy weights vector |
Meng et al. [51] | IT2TrFN | 7/[0–1] | The linear normalization procedure | |
Xu et al. [54] | crisp | / | / | AHP/crisp vector weights |
Dinçer et al. [53] | IT2TrFN | 7/[0–1] | - | IT2DEMATEL combined with IT2FANP and defuzzification procedure [76]/crisp weights vector |
Wu et al. [55] | IT2TrFN | 9/[1–9] | - | IT2FBWM and fuzzy geometric mean and defuzzification by using the centroid area method [91] |
Aleksic et al. [56] | IT2TrFN | 3/[1–5] | Fuzzy averaging mean | Ranking of IT2FNs [74]/crisp weights vector |
Yucesan et al. [57] | BWM/crisp weights vector | |||
Đurić et al. [52] | IT2TrFN | 3/[1–5] | IT2FAHP and fuzzy geometric mean/fuzzy weights vector | |
Dorfeshan and Mousavi [58] | IT2TrFNs | 7/[0–1] | IT2FWASPAS/crisp weights vector | |
Bera et al. [59] | IT2TrFN | 7/[0–1] | - | Fuzzy weights vector |
Mohamadghasemi et al. [26] | (GIT2FN) | 7/[3–15] | - | Crisp weights vector |
Ayyildiz et al. [60] | IT2TrFN | 9/[1–10] | - | IT2FAHP and fuzzy geometric mean/defuzzification procedure/linear normalization procedure/crisp weights vector |
Kiraci and Akan [21] | IT2TrFN | 5/[1–9] | IT2FAHP and fuzzy geometric mean/defuzzification are performed by using the center of area method [77]/arithmetic mean/crisp weights vector | |
Pourmand et al. [62] | IT2TrFN | 7/[0–1] | - | IT2FTOPSIS combined with the ranking of IT2FNs [74] and linear normalization procedure/crisp weights vector |
Özdemir and Üsküdar [63] | IT2TrFN | 5/[1–9] | - | IT2FAHP and fuzzy geometric mean/fuzzy weights vector |
Deveci et al. [64] | IT2TFN | 7/[0–1] | Fuzzy arithmetic mean | Fuzzy weights vector |
Mirnezami et al. [65] | - | - | ||
Komatina et al. [67] | IT2TFN | 9/[0–1] | - | IT2FDelphi technique |
Karagöz et al. [68] | IT2TFN | 7/[0–1] | Fuzzy arithmetic mean | Fuzzy weights vector |
Kaya and Aycin [92] | IT2TrFN | 5/[1–9] | IT2FAHP and fuzzy geometric mean/fuzzy weights vector | |
Celik et al. [69] | IT2TrFN | 9/[1–10] | IT2FBWM based on [55]/fuzzy weights vector | |
Zhang et al. [70] | IT2TrFN | 5/[0–10] | Fuzzy arithmetic mean | Fuzzy weights vector |
Sharaf [66] | IT2TrFN | 7/[0–1] | Fuzzy arithmetic mean | Fuzzy weights vector |
Komatina et al. [71] | IT2TFN | 5/[1–9] | IT2FAHP and fuzzy geometric mean/fuzzy weights vector | |
Aleksić et al. [72] | IT2TFN | 6/[1–9] | Geometric mean | IT2FBWM [55] |
Ecer [73] | IT2TFN | 5/[1–9] | - | IT2FAHP and fuzzy geometric mean/fuzzy weights vector |
Appendix B
Authors | Type of IT2FNs | Granulation/The Domain | The Aggregation Operators |
---|---|---|---|
Celik et al. (2013) [27] | IT2TrFN | 5/[0–10] | Fuzzy arithmetic mean |
Baležentis and Zeng (2013) [28] | IT2TrFN | 9/[0–1] | The weighted geometric average operator |
Chen and Hong (2014) [30] | IT2TrFN | 7/[0–10] | Fuzzy arithmetic mean |
Ghorabaee et al. (2014) [29] | IT2TrFN | 7/[0–10] | Fuzzy arithmetic mean |
Abdullah and Zulkifli (2015) [33] | IT2TrFN | 5/[0–1] | - |
Cebi and Otay (2015) [34] | IT2TrFN | 7/[0–10] | Fuzzy arithmetic mean |
Qin et al. (2015) [31] | IT2TrFN | 7/[0–1] | - |
Ghorabaee et al. (2016) [19] | IT2TrFN | 7/[0–1] | Fuzzy arithmetic mean |
Kilic and Kaya (2015) [32] | IT2TrFN | 7/[0–1] | Fuzzy arithmetic mean |
Özkan et al. (2015) [37] | IT2TrFN | 5/[1–9] | Fuzzy arithmetic mean |
Liao (2015) [38] | IT2TrFN | 5/[0–1] | - |
Sang and Liu (2015) [39] | IT2TrFN | 7/[0–1] | Fuzzy arithmetic mean |
Qin et al. (2015) [35] | IT2TrFN | 5/[0–10] | |
Ghorabaee et al. (2015) [36] | IT2TrFN | 7/[0–1] | Fuzzy arithmetic mean |
Ghorabaee et al. (2016) [41] | IT2TrFN | 7/[0–1] | Fuzzy arithmetic mean |
Buyoukozkan (2016) [42] | IT2TrFN | 7/[0–1] | fuzzy arithmetic mean |
Celik et al. (2016) [40] | IT2TrFN | 7/[1–10] | Fuzzy arithmetic mean |
Qin et al. (2017) [43] | TrFN | 7/[0–1] | - |
Soner et al. (2017) [47] | IT2TrFN | 7/[0–10] | Fuzzy arithmetic mean |
Deveci et al. (2017) [45] | IT2TrFN | 7/[0–10] | Fuzzy arithmetic mean |
Gorener et al. (2017) [44] | IT2TrFN | 7/[0–1] | Fuzzy arithmetic mean |
Zhong and Yao (2017) [48] | IT2TrFN | 7/[0–1] | - |
Mousakhani (2017) [46] | IT2TrFN | 7/[0–10] | Fuzzy geometric mean |
Debnath and Biswas (2018) [50] | IT2TrFN | 5/[1–9] | - |
Celik and Akyuz (2018) [20] | IT2TrFN | 7/[0–1] | - |
Deveci et al. (2018) [49] | IT2TrFN | 9/[0–10] | Fuzzy arithmetic mean |
Meng et al. (2019) [51] | IT2TrFN | 7/[0–1] | - |
Dinçer et al. (2019) [53] | IT2TrFN | 7/[0–1] | Fuzzy arithmetic mean |
Xu et al. (2019) [54] | IT2TrFN | 5/[0–1] | - |
Yucesan et al. (2019) [57] | IT2TrFN | -/[0–1] | Fuzzy arithmetic mean |
Aleksic et al. (2019) [56] | IT2TrFN | 7/[0–1] and 5/[0–1] | - |
Đurić et al. (2019) [52] | IT2TrFN | 5/[0–1] and 7/[0–1] | - |
Wu et al. (2019) [55] | IT2TrFN | 7/[0–10] | The interval type 2 fuzzy weighted average operator |
Dorfeshan and Mousavi (2020) [58] | IT2TrFN | 7/[0–1] | - |
Bera et al. (2020) [59] | IT2TrFN | 7/[0–1] | Fuzzy arithmetic mean |
Mohamadghasemi et al. (2020) [26] | GIT2FN | 7/[3–15] | - |
Ayyildiz et al. (2020) [60] | IT2TrFN | 9/[1–10] | Fuzzy arithmetic mean |
Kiraci and Akan (2020) [21] | IT2TrFN | 7/[0–1] | Fuzzy arithmetic mean |
Pourmand et al. (2020) [62] | IT2TrFN | 7/[0–1] | - |
Özdemir and Üsküdar (2020) [63] | IT2TrFN | 7/[0–1] | Fuzzy arithmetic mean |
Deveci et al. (2020) [64] | IT2TFN | 7/[0–10] | - |
Mirnezami et al. (2021) [65] | IT2TrFN | 7/[0–1] | - |
Sharaf (2021) [66] | IT2TrFN | 7/[0–1] | - |
Zhang et al. (2022) [70] | IT2TrFN | 5/[0–10] | |
Komatina et al. (2021) [67] | IT2TFN | 7/[1–9] | - |
Karagöz et al. (2021) [68] | IT2TFN | 7/[1–10] | Fuzzy arithmetic mean |
Kaya and Aycin (2021) [92] | 7/[0–10] | - | |
Celik et al. (2021) [69] | IT2TrFN | 9/[1–10] | - |
Komatina et al. (2022) [71] | IT2TFN | 7/[1–9] | - |
Aleksić et al. (2022) [72] | IT2TFN | 5/[1–10] | |
Ecer, F. (2022) [73] | IT2TFN | 5/[1–9] | - |
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Classification is Given by [5] | Classification is Given by [1] | Classification is Given by [3,4] | |
---|---|---|---|
Weighted Aggregated Sum Product Assessment-WASPAS [6] | Utility-based | Other MADMs | |
Technique for Order Preference by Similarity to Ideal Solution-TOPSIS [7] | Distance-based | Normalizing models-additive types | Compromise |
VIekriterijumsko KOmpromisno Rangiranje-VIKOR [8] | Distance-based | Normalizing models-additive types | Compromise |
Complex Proportional Assessment-COPRAS [9] | Utility-based | Compromise | |
Multi-Objective Optimization on the basis of Ratio Analysis-MOORA [10] | Other | ||
Additive Ratio ASsessment-ARAS [11] | Other | Utility-based | |
Elimination et Choix Traduisant la Realité-ELECTRE [12] | Outranking | Normalizing models-additive types | Outranking |
Analytical Network Process-ANP [13] | Pairwise comparison | Weighting models | Utility-based |
Analytic Hierarchy Process-AHP [14] | Pairwise comparison | Weighting models | Utility-based |
(An acronym in Portuguese for interactive and multi-criteria decision-making)-TODIM [15] | Outranking | Utility-based | |
Best Worst Method-BWM [16] | Pairwise comparison | Compromise | |
Multi-attributive border approximation area comparison method-MABAC [17] | Other | Compromise | |
Decision Making Trial and Evaluation Laboratory-DEMATEL [18] | Interaction based | Evaluating or choosing models | Other |
Authors | Year | Research Focus | Rank of Alternatives |
---|---|---|---|
Celik et al. [27] | 2013 | The satisfaction of customers with public transportation | IT2FTOPSIS |
Baležentis and Zeng [28] | 2013 | Selection of manager for research and development | IT2FMULTIMOORA |
Ghorabaee et al. [29] | 2014 | Supplier selection | IT2FCOPRAS |
Chen and Hong [30] | 2014 | The selection of a system analysis engineer | IT2FTOPSIS |
Qin et al. [31] | 2015 | Metro station dynamic risk assessment | IT2FTOPSIS |
Kilic and Kaya [32] | 2015 | Evaluation and selection of investment projects | IT2FTOPSIS |
Abdullah and Zulkifli [33] | 2015 | Human resource management problem | IT2FDEMATEL |
Cebi and Otay [34] | 2015 | Cement factory selection | IT2FTOPSIS |
Qin et al. [35] | 2015 | Evaluation of the high-tech risk investment project | IT2FVIKOR |
Ghorabaee et al. [36] | 2015 | Selecting a suitable hydroelectric power station project | IT2FVIKOR |
Özkan et al. [37] | 2015 | Determining the best electrical energy storage technology | IT2FTOPSIS |
Liao [38] | 2015 | Evaluation of materials | IT2FTOPSIS |
Sang and Liu [39] | 2015 | Green supplier selection in the automotive industry | IT2FTODIM |
Ghorabaee [19] | 2016 | Selecting the suitable robot for its production process | IT2FVIKOR |
Celik et al. [40] | 2016 | Green Logistic Service Providers Evaluation | IT2FELECTRE |
Ghorabaee et al. [41] | 2016 | Green supplier selection | IT2FWASPAS |
Buyoukozkan et al. [42] | 2016 | Evaluation of Knowledge Management Tools | IT2FTOPSIS |
Qin et al. [43] | 2017 | Green supplier selection | IT2FTODIM |
Gorener et al. [44] | 2017 | Supplier selection in a high-stake aviation company | IT2FTOPSIS |
Deveci et al. [45] | 2017 | Airline new route selection | IT2FTOPSIS |
Mousakhani et al. [46] | 2017 | Green supplier evaluation | IT2FTOPSIS |
Soner et al. [47] | 2017 | Selecting the right hatch cover design in maritime transportation industry | IT2FVIKOR |
Zhong and Yao [48] | 2017 | Supplier selection | IT2FELECTRE |
Deveci et al. [49] | 2018 | Selection for car-sharing station | IT2FWASPAS |
Celik and Akyuz [20] | 2018 | Selecting the appropriate ship loader type | IT2FTOPSIS |
Debnath and Biswas [50] | 2018 | The supplier selection problem | IT2FAHP |
Meng et al. [51] | 2019 | Risk assessment of supply chain in social commerce | IT2FTODIM |
Đurić et al. [52] | 2019 | The software failure analysis | IT2FCOPRAS |
Dinçer et al. [53] | 2019 | Evaluate the financial service performance in E7 economies | IT2FMOORA |
Xu et al. [54] | 2019 | Green supplier selection | IT2FAHP Sort II |
Wu et al. [55] | 2019 | Green supplier selection | IT2FVIKOR |
Aleksic et al. [56] | 2019 | Ranking failures in a recycling center | IT2FTOPSIS |
Yucesan et al. [57] | 2019 | Green supplier selection | IT2FTOPSIS |
Dorfeshan and Mousavi [58] | 2020 | Aircraft maintenance planning | IT2FMABAC |
Bera et al. [59] | 2020 | Supplier selection | IT2FTOPSIS |
Mohamadghasemi et al. [26] | 2020 | Selection of conveyors | IT2FELECTRE |
Ayyildiz et al. [60] | 2020 | Credit application | IT2FELECTRE |
Yang et al. [61] | 2020 | Choosing the best investment option | IT2FTOPSIS |
Kiraci and Akan [21] | 2020 | Aircraft selection | IT2FTOPSIS |
Pourmand et al. [62] | 2020 | Water Resources Management | IT2FTOPSIS |
Özdemir and Üsküdar [63] | 2020 | Strategy selection | IT2FTOPSIS |
Deveci et al. [64] | 2020 | Offshore wind farm development | IT2FTOPSIS |
Mirnezami et al. [65] | 2021 | Project cash flow evaluation | IT2FTODIM |
Sharaf [66] | 2021 | Solar power systems | IT2FTOPSIS |
Komatina et al. [67] | 2021 | Evaluation of different risk factors | IT2FTOPSIS |
Karagöz et al. [68] | 2021 | Facility location | IT2FARAS |
Celik et al. [69] | 2021 | Green supplier selection | IT2FTODIM |
Zhang et al. [70] | 2022 | The subway station’s risks | IT2FTOPSIS |
Komatina et al. [71] | 2022 | Supplier selection | IT2FMABAC |
Aleksić et al. [72] | 2022 | Evaluation and ranking of failures in the automotive industry | IT2FVIKOR |
Ecer [73] | 2022 | Green supplier selection in-home appliance manufacturer | IT2FAHP |
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Aleksić, A.; Tadić, D. Industrial and Management Applications of Type-2 Multi-Attribute Decision-Making Techniques Extended with Type-2 Fuzzy Sets from 2013 to 2022. Mathematics 2023, 11, 2249. https://doi.org/10.3390/math11102249
Aleksić A, Tadić D. Industrial and Management Applications of Type-2 Multi-Attribute Decision-Making Techniques Extended with Type-2 Fuzzy Sets from 2013 to 2022. Mathematics. 2023; 11(10):2249. https://doi.org/10.3390/math11102249
Chicago/Turabian StyleAleksić, Aleksandar, and Danijela Tadić. 2023. "Industrial and Management Applications of Type-2 Multi-Attribute Decision-Making Techniques Extended with Type-2 Fuzzy Sets from 2013 to 2022" Mathematics 11, no. 10: 2249. https://doi.org/10.3390/math11102249
APA StyleAleksić, A., & Tadić, D. (2023). Industrial and Management Applications of Type-2 Multi-Attribute Decision-Making Techniques Extended with Type-2 Fuzzy Sets from 2013 to 2022. Mathematics, 11(10), 2249. https://doi.org/10.3390/math11102249