Construction Material Selection by Using Multi-Attribute Decision Making Based on q-Rung Orthopair Fuzzy Aczel–Alsina Aggregation Operators
Abstract
:1. Introduction
2. Preliminaries
2.1. q-Rung Orthopair Fuzzy Set
2.2. Aczel–Alsina t-Norm & t-Conorm
3. Aczel–Alsina Operational Laws for q-ROFN
4. q-ROF Aczel–Alsina Aggregation Operators
5. MADM Algorithm Based on q-ROFAAWA
- Step 1.
- First, the q-ROF decision matrix is formed, which is further into the normalized decision matrix.
- Step 2.
- For alternatives aggregate all the values of with the help of q-ROFAAWA operator is given by:
- Step 3.
- Calculate the score value by applying this SF provided by Liu et al. [36], which is given by:
- Step 4.
- We arrange the ranking values of all of the options to choose the best one while keeping in mind.
6. Numerical Example
- Step 1.
- First, we construct the decision matrix by collecting the data from the five cement companies and provide all the data collection in the form of a matrix to experts for DM. We have considered four attributes with weight as follows: is the life of the cement , is the fineness of the cement , is the handling storage of cement , is the effect of climate on cement . The collection of the data is represented in Table 2.
- Step 2.
- In this step, we aggregate the information the DMs provide by using the q-ROFAAWA and q-ROFAAWG AOs. The aggregation findings are presented in Table 3. (Note that at the start, we take parameters and during the aggregation.)
- Step 3.
- Step 4.
6.1. The Effect of Parameters
6.1.1. The Effect of
6.1.2. The Effect of q
7. Comparative Analysis
- IF Aczel–Alsina WA (IFAAWA), and Aczel–Alsina WG (IFAAWG) operators by Senapati et al. [40].
- Interval-valued IFAAWA (IVIFAAWA) and interval-valued IFAAWA (IVIFAAWG) by Senapati et al. [41].
- PyF Aczel–Alsina weighted averaging (PyFAAWA) and geometric (PyFAAWG) operators by Hussain et al. [42].
- PyF weighted averaging (PyFWA) and geometric (PyFSWG) operators by Wei et al. [43].
8. Conclusions
- We pioneered AA operational laws for q-ROFSs and justified them with the help of examples.
- We diagnosed the theory of q-ROFAAWA, q-ROFAAWG, q-ROFAAOWA, q-ROFAAOWG, q-ROFAAHA, and q-ROFAAHG operators.
- We evaluated some properties (“Idempotency, Monotonicity, and Boundedness”) and the results of the evaluated approaches.
- We illustrated a MADM technique based on diagnosed information and also described the comparison between the proposed work and some prevailing information to enhance the worth of the evaluated theory.
- Geometrical representation of the proposed information is also part of this manuscript.
- We aim to try to utilize the proposed concept in wastewater management system [45], VIKOR method [46], lane-keeping systems [47], construction material [48], controlled distribution [49], detection of driver fatigues during traveling [50], pattern recognition [51], similarity measure [52], risk evaluation [53], and transportation systems [54].
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Symbols | Explanation | Symbols | Explanation |
Universal set | Element of universal set | ||
q-ROF Set | Non-membership degree of q-ROF Set | ||
Membership degree of q-ROF set | Hesitancy degree | ||
score function (SF) | |||
Any scalar number | Weight vector | ||
Accuracy function (AF) of q-ROF Set |
q-ROFAAWA | q-ROFAAWG | |
---|---|---|
q-ROFAAWA | q-ROFAAWG | |
---|---|---|
Ordering | |
---|---|
q-ROFAAWA | |
q-ROFAAWG |
Ranking of Score Values of q-ROFAAWA | |||
---|---|---|---|
Ordering | Ordering | ||
1 | 2 | No result identified | |
3 | 4 | No result identified | |
5 | 6 | No result identified | |
7 | 8 | No result identified | |
9 | 10 | No result identified | |
13 | 20 | No result identified | |
15 | 40 | No result identified | |
17 | 60 | No result identified | |
19 | 80 | No result identified | |
99 | 100 | No result identified |
Ranking of Score Values of q-ROFAAWG | |||
---|---|---|---|
Ordering | Ordering | ||
1 | 2 | No result identified | |
3 | 4 | No result identified | |
5 | 6 | No result identified | |
7 | 8 | No result identified | |
9 | 10 | No result identified | |
13 | 20 | No result identified | |
15 | 40 | No result identified | |
17 | 60 | No result identified | |
19 | 80 | No result identified | |
99 | 100 | No result identified |
q | Ranking of Score Values of q-ROFAAWA |
---|---|
3 | |
6 | |
9 | |
12 | |
15 | |
18 | |
36 |
Q | Ranking of Score Values of q-ROFAAWG |
---|---|
3 | |
6 | |
9 | |
12 | |
15 | |
18 | |
36 |
Methods | Operators | Score Values | Ranking Results |
---|---|---|---|
Proposed operators | q-ROFAAWA | ||
q-ROFAAWG | |||
Jana. et al. [17] | Dombi WA | ||
Dombi WG | , , | ||
Akram and Shahzadi [39] | q-ROFYHWA | ||
q-ROFYHWG | , | ||
Liu and Wang [36] | q-ROFWA | ||
q-ROFWG | , | ||
Senapati et al. [40] | IFAAFWA IFAAFWG | Unable to specify | Not applicable |
Senapati et al. [41] | IVIFAAWA IVIFAAWG | Unable to specify | Not applicable |
Hussain et al. [42] | PyFAAWA PyFAAWG | Unable to specify | Not applicable |
Wei et al. [43] | PyFS WA PyFS WG | Unable to specify | Not applicable |
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Khan, M.R.; Wang, H.; Ullah, K.; Karamti, H. Construction Material Selection by Using Multi-Attribute Decision Making Based on q-Rung Orthopair Fuzzy Aczel–Alsina Aggregation Operators. Appl. Sci. 2022, 12, 8537. https://doi.org/10.3390/app12178537
Khan MR, Wang H, Ullah K, Karamti H. Construction Material Selection by Using Multi-Attribute Decision Making Based on q-Rung Orthopair Fuzzy Aczel–Alsina Aggregation Operators. Applied Sciences. 2022; 12(17):8537. https://doi.org/10.3390/app12178537
Chicago/Turabian StyleKhan, Muhammad Rizwan, Haolun Wang, Kifayat Ullah, and Hanen Karamti. 2022. "Construction Material Selection by Using Multi-Attribute Decision Making Based on q-Rung Orthopair Fuzzy Aczel–Alsina Aggregation Operators" Applied Sciences 12, no. 17: 8537. https://doi.org/10.3390/app12178537
APA StyleKhan, M. R., Wang, H., Ullah, K., & Karamti, H. (2022). Construction Material Selection by Using Multi-Attribute Decision Making Based on q-Rung Orthopair Fuzzy Aczel–Alsina Aggregation Operators. Applied Sciences, 12(17), 8537. https://doi.org/10.3390/app12178537