Abstract
In this paper, we construct an extended version of the TOPSIS method by using cubic information, and provide a numerical application to verify and demonstrate the practicality of the method. A new extension of the gray relation analysis (GRA) method is introduced by using cubic information. We also propose the cubic fuzzy multi-attribute group decision-making model, and the relation between the cubic TOPSIS method and the cubic gray relation analysis (CGRA) method is introduced. Finally, the proposed method is used for selection in sol–gel synthesis of titanium carbide nanopowders. We analyzed the proposed method by using a numerical application to sol–gel synthesis of titanium carbide nanopowders.
1 Introduction
Advanced ceramics have been broadly used in various formidable industrial devices owing to their invaluable properties [5]. Among these advanced ceramics, titanium carbide (TiC) is one of the most famous ones and is broadly used in the construction of dangerous contraptions, wear-proof coatings, aerospace materials, and reinforcing components in composites because of its high liquefaction point, high hardness, high substance impenetrability to corroding agents, and decent electrical conductivity [8]. Many methods have been founded on the high-temperature pathways that are conventionally used to synthesize TiC. However, these methods have some limitations in their suitability of use. To overcome the limitations of old-fashioned procedures, many different synthesis methods to produce TiC nanopowders have been proposed, including grinding, carbothermal decrease [9], synthetic vapor deposition [2], warm plasma combination [16], self-spreading high-temperature synthesis [15], and sol–gel synthesis [18]. Currently, synthesis of TiC nanopowders by using the sol–gel strategy has gained much attention, as this technique includes systems at the atomic level. Furthermore, the technique results in the improvement of properties, such as high compositional homogeneity at low synthesis temperatures.
Thus, a reasonable decision about the carbon source assumes a huge part in the synthesis of TiC nanopowders through the sol–gel strategy [1, 11]. Routinely, while choosing a material whose elements are known, experts apply trial-and-error techniques or utilize the findings of previous researches. These shortcomings can be managed by using a multi-attribute decision-making (MADM) model. On the other hand, the MADM approach is effective in assessing and selecting problems where the decisions contain a set of alternatives and a set of performance attributes [13]. To date, several MADM approaches have already been planned and established to report the material collection problems. Rao [12] planned a procedure that is formed on the basis of a graph theory and a matrix approach that helps in the collection of an appropriate material from among a large number of existing alternative materials. This procedure measures material determination variables, and material appropriateness evaluation assesses the suitability of materials for an expected material choice issue. Chauhan and Vaish [4] employed the VIKOR and TOPSIS method for order performance according to similarity to ideal solution (TOPSIS) methods to measure the relative ranking of magnetic materials. Shannon’s entropy strategy is utilized as a part of the basic leadership handle on which the relative weight of traits was computed. Milani et al. [10] hybridized the entropy method and the TOPSIS technique. In Chatterjee et al. [3], utilized the VIKOR and ELECTRE strategies to rank materials for which a few supplies are being considered simultaneously, and two illustrations were referred to approve these two strategies for MADM. In Shanian et al. [14], employed a revised Simos method with the ELECTRE III optimization model, with the aim to offer a decision aid structure that accounts for both effects. In Jahan and Edwards [6], reported the VIKOR technique, which depends on interval data to address material determination. In 1965, Zadeh initiated the notion of fuzzy sets [17].
Cubic sets were introduced by Jun et al. [7]. Cubic sets are generalizations of fuzzy sets and intuitionistic fuzzy sets, in which there are two representations: one is used for the degree of membership and other is used for the degree of non-membership. The membership function is held in the form of interval, while the non-membership function is used for the normal fuzzy set.
For the universal increase of the use of the cubic TOPSIS method, the ideal theory and the performance of the proposed cubic fuzzy (CF) multi-attribute group decision-making model (MAGDM) are mainly discussed. In this paper, the cubic TOPSIS method, cubic gray analysis set (CGAS), and CF-MAGDM are defined, with many of their properties investigated. We discuss the relationships among the cubic TOPSIS method, CGAS, and proposed CF-MAGDM. In Section 2, we provide some basic concepts about CF sets (CFSs) and their definitions. In Section 3, we introduce the cubic TOPSIS method to determine the weights of attributes based on the cubic positive-ideal solution (CPIS) and the cubic negative-ideal solution (CNIS). Section 4 proposes a new CGAS. In Section 5, we describe the proposed CF-MAGDM and its numerical applications. In Section 6, we give some new applications of the proposed model for the precursor selection problem. Section 7 gives the results and discussion. The last part, Section 8, offers some closing comments.
2 Preliminaries
In this section, the essential meanings of the CS hypothesis, cubic gray relation analysis set (CGRAS), and cubic TOPSIS technique are presented briefly. In light of these essential ideas, another CF-MAGDM is presented.
Definition 1 ([17]): Let H be a creation of discourse. The idea of fuzzy set was presented by Zadeh and defined as follows: J={h, ΓJ (h)|h∈H}. A fuzzy set in a set H is defined as ΓJ : H→I, which is a membership function; ΓJ (h) denotes the degree of membership of the element h to the set H, where I=[0, 1]. The collection of all fuzzy subsets of H is denoted by IH . Define the relation of IH as follows:
Definition 2 ([17]): An Atanassov intuitionistic fuzzy set on H is a set J={h, Γ(h), η(h): h∈H}, where ΓJ and ηj are the membership and non-membership functions, respectively. ΓJ (h): h→[0, 1], h∈H→ΓJ (h)∈[0, 1], ηJ (h): h→[0, 1], h∈H→ηJ (h)∈[0, 1] and 0≤ΓJ (h)+ηJ (h)≤1 for all h∈H, πJ (h)=1−ΓJ (h)−ηJ (h).
Definition 3 ([7]): Let H be a non-empty set. By a cubic set in H, we mean the structure F={h, α(h), β(h): h∈H}, in which α is an IVF set in H and β is a fuzzy set in H. A cubic set F={h, α(h), β(h): h∈H} is simply denoted by F=〈α, β〉. Denote by CH the collection of all cubic sets in the H. A cubic set F=〈α, β〉, in which α(h)=0 and β(h)=1 (resp. α(h)=1 and β(h)=0) for all h∈H is denoted by 0 (resp. 1). A cubic set D=〈λ, ξ〉 in which λ(h)=0 and ξ(h)=0 (resp. λ(h)=1 and ξ(h)=1) for all h∈H is denoted by 0 (resp. 1).
Definition 4 ([7]): Let H be a non-empty set. A cubic set F=(C, λ) in H is said to be an internal cubic set if C−(h)≤λ(h)≤C+(h) for all h∈H.
Definition 5 ([7]): Let H be a non-empty set. A cubic set F=(C, λ) in H is said to be an external cubic set if λ(h)∉(C−(h), C+(h)) for all h∈H.
3 Cubic TOPSIS Method
In this section, we apply the cubic set to the TOPSIS method. We define a new extension of the cubic TOPSIS method by using the cubic set.
Step 1: Suppose that a cubic decision-making problem under multiple attributes has m students and n decision attributes. The framework of the cubic decision matrix can be exhibited as follows:
Step 2: Construct a normalized cubic decision matrix R=[βij ]. The normalized value rij is calculated as below.
A cubic set β=(Bij , ηij ) in which Bij =B−, Bij =B+ and ηij =η:
Step 3: Make the weighted normalized cubic decision matrix by multiplying the normalized cubic decision matrix by its associated weights. The weight vector W=(w1, w2, …, wn ) is collected from the isolated weights wj (j=1, 2, 3, …, n) for each attribute Cj satisfying
where 0≤Bj ≤1, i=1, 2, 3, …, m and j=1, 2, 3, …, n. The entropy weight of the jth attribute is defined as
Step 4: Identify the positive ideal solution (α*) and the negative ideal solution (α−). The CPIS (α*) and the CNIS (α−) are shown as follows:
Step 5: Estimate the separation measures using the n-dimensional Euclidean distance. The separation of each candidate from the CPIS,
The separation of each candidate from the CNIS,
Step 6: Calculate the similarities to the ideal solution. This progression determines the similitudes to an ideal solution by using the following equation:
3.1 Linguistic Variables for the Rating of Candidates
What is a linguistic variable? Linguistic variables are used every day to express what is significant and the linguistic context. For example, “This room is hot” in particular interprets an opinion of the measuring system of rule, and it has information that most hearers will understand. Linguistic variables are used in ordinary daily activities, including the formulation of instructions for making soup mixtures. These instructions are filled with linguistic references. “Heat to the point of boiling,” “blending always,” “lower the temperature,” “half cover,” “simmer,” and “occasional stirring” are all linguistic variables within the context of soup preparation. In the manufacturing business of instant soup, these ostensibly vague instructions somehow clearly tell the consumer how to make their product successfully (Table 1).
Linguistic variables | Cubic fuzzy intervals and non membership |
---|---|
Extremely good (EG) | 〈[0.5, 0.95], 0.20〉 |
V V G | 〈[0.10, 0.90], 0.15〉 |
M H | 〈[0.30, 0.60], 0.40〉 |
E H | 〈[0.15, 0.95], 0.40〉 |
M G | 〈[0.25, 0.60], 0.40〉 |
F | 〈[0.20, 0.80], 0.30〉 |
B | 〈[0.25, 0.60], 0.30〉 |
M | 〈[0.20, 0.50], 0.30〉 |
E C | 〈[0.05, 0.95], 0.30〉 |
3.2 Numerical Applications
Let A={A1, A2, A3} be a set of alternatives and C={C1, C2, C3} be a set of criteria. Let B be a set of decision matrix. The decision matrix evaluates each alternative based on given criteria. Each decision maker gives his opinion in the form of a linguistic variable for rating the performance and the importance of each criteria according to the linguistic variable. Suppose that a cubic decision-making problem under multiple attributes has m students and n decision attributes. The structure of cubic decision metric can be expressed as follows:
M H | E H | V V B | V V B | F | M | E C | M H | M | |||
D1= | F | M G | B , | D2= | F | H | V H , | D3= | M G | M H | L |
V V B | M L | V L | V V B | V V G | M G | M L | M L | V V B | |||
〈[0.20, 0.60], 0.40〉 | 〈[0.15, 0.95], 0.40〉 | 〈[0.10, 0.90], 0.15〉 | |
D1= | 〈[0.20, 0.80], 0.30〉 | 〈[0.30, 0.60], 0.40〉 | 〈[0.25, 0.60], 0.30〉 |
〈[0.10, 0.90], 0.15〉 | 〈[0.20, 0.50], 0.30〉 | 〈[0.10, 0.75], 0.15〉 | |
〈[0.20, 0.60], 0.30〉 | 〈[0.40, 0.80], 0.60〉 | 〈[0.25, 0.95], 0.40〉 | |
D2= | 〈[0.10, 0.90], 0.15〉 | 〈[0.20, 0.70], 0.50〉 | 〈[0.40, 0.80], 0.60〉 |
〈[0.20, 0.60], 0.25〉 | 〈[0.25, 0.95], 0.40〉 | 〈[0.30, 0.60], 0.35〉 | |
〈[0.05, 0.95], 0.30〉 | 〈[0.30, 0.60], 0.40〉 | 〈[0.20, 0.50], 0.30〉 | |
D3= | 〈[0.25, 0.60], 0.40〉 | 〈[0.30, 0.60], 0.40〉 | 〈[0.25, 0.60], 0.45〉 |
〈[0.25, 0.95], 0.40〉 | 〈[0.25, 0.95], 0.40〉 | 〈[0.20, 0.60], 0.30〉 |
Unknown weight
0.4 | 0.3 | 0.3 |
Step 1: In this step, we aggregate the CF-decision matrix D1, D2, D3 based on the opinions of experts after the weight values for the experts are obtained. The evaluated values provided by different experts can be aggregated based on the CFWG operator as below. The aggregated CF-decision matrix can be defined as follows (Table 2).
〈[0.1319, 0.6886], 0.3419〉 | 〈[0.2478, 0.7861], 0.4688〉 | 〈[0.1621, 0.7668], 0.2777〉 | |
B= | 〈[0.1736, 0.7602], 0.2916〉 | 〈[0.2656, 0.6283], 0.4319〉 | 〈[0.2878, 0.6541], 0.4494〉 |
〈[0.1620, 0.8099], 0.2626〉 | 〈[0.2286, 0.7348], 0.3618〉 | 〈[0.1711, 0.6561], 0.2602〉 |
Step 2: Construct a normalized cubic decision matrix (Table 3).
〈[0.4856, 0.5268], 0.6569〉 | 〈[0.5774, 0.5063], 0.6396〉 | 〈[0.4358, 0.6376], 0.4717〉 | |
B= | 〈[0.6391, 0.5816], 0.5603〉 | 〈[0.6189, 0.4046], 0.5893〉 | 〈[0.7738, 0.5439], 0.7632〉 |
〈[0.5964, 0.6197], 0.5046〉 | 〈[0.5327, 0.4732], 0.4936〉 | 〈[0.4600, 0.5455], 0.4419〉 |
Step 3: Construct the weighted normalized cubic decision matrix by multiplying the normalized cubic decision matrix by its associated weights. The weight vector W=(w1, w2, …, wn ) is composed of the individual weights wj (j=1, 2, 3, …, n) for each attribute Cj satisfying
Attribute | |||
Weight | 0.3334 | 0.3328 | 0.3337 |
〈[0.1618, 0.1756], 0.2190〉 | 〈[0.1921, 0.1684], 0.2128〉 | 〈[0.1454, 0.2127], 0.1574〉 | |
Q= | 〈[0.2130, 0.1939], 0.1868〉 | 〈[0.2059, 0.1346], 0.1961〉 | 〈[0.2582, 0.1814], 0.2546〉 |
〈[0.1988, 0.2066], 0.1682〉 | 〈[0.1772, 0.1574], 0.1642〉 | 〈[0.1535, 0.1820], 0.1474〉 |
Positive ideal solution: The CPIS (α*) is shown as follows:
PIS= | 〈[0.2130, 0.2066], 0.1682〉 | 〈[0.2059, 0.1684], 0.1642〉 | 〈[0.2582, 0.2127], 0.1474〉 |
Negative ideal solution: The CNIS (α−) is shown as follows:
NIS= | 〈[0.1618, 0.1756], 0.2190〉 | 〈[0.1772, 0.1346], 0.2128〉 | 〈[0.1454, 0.1814], 0.2546〉 |
Calculate the separation measures using the n-dimensional Euclidean distance. The separation of each candidate from the CPIS
Zli | Final ranking | ||
---|---|---|---|
〈0.1081〉 | 〈0.0514〉 | 〈0.3222〉 | 3 |
〈0.0785〉 | 〈0.0942〉 | 〈0.5454〉 | 2 |
〈0.0631〉 | 〈0.0944〉 | 〈0.5993〉 | 1 |
4 CGRAS
In this section, we apply the cubic set to gray relation analysis (GRA). We define a new extension of the CGRAS by using the cubic set. We also define the CGRAS.
Let
where ρ is the identification coefficient at different cases: ρ∈[0, 1], i∈l={1, 2, 3, …, m}, j∈J={1, 2, 3, …, n}. By later attaining the cubic gray relation coefficients altogether, the grade of cubic gray relations
5 Proposed CF-MAGDM
This section presents an original idea for CF-MADM founded on combining the notions of CFSs, cubic TOPSIS method, and cubic gray relation analysis (CGRA). Through CFSs, the proposed CF-MAGDM could be effectively dealt with by using vague material data. The steps of the proposed model are as follows.
Step 1: Find the attributes for a certain presentation and shortlist candidates on the basis of the identified attributes satisfying the requirements.
Step 2: CF-decision matrix is obtained as the following form. Particularly, the rating of the candidates, where [B−, B+] is an IV fuzzy set in X and η is a fuzzy set in X.
Step 3: To terminate the weight of each expert from the cubic decision matrix, a method of entropy weights is offered, as follows:
Step 4: Make an aggregated CF-decision matrix founded on estimations of the authorities after the weight values for the authorities are obtained. The estimated values delivered by different experts can be aggregated, founded on the CFWG operator as below:
The aggregated CF-decision matrix can be defined as follows:
Step 5: Acquire the entropy weights of the attributes. All attributes could not be anticipated to be of equal significance. We characterize a set for the evaluation of significance. To take w, the CF entropy will be used:
where 0≤Bj ≤1, i=1, 2, 3, …, m and j=1, 2, 3, …, n. The entropy weight of the jth attribute is defined as follows:
Step 6: Make a weighted aggregated CF-decision matrix indomitable based on the different significance of attributes as follows:
Step 7: Determine the CPIS and CNIS as
Let J1 and J2 be the benefit attribute and the cost attribute, respectively.
Step 8: Define a CF positive-ideal separation matrix M+ and a CF-negative-ideal separation matrix M− as follows:
Step 9: Calculate the cubic gray relational coefficient of each candidate from the CPIS and CNIS as below:
where i=1, 2, …, m and j=1, 2, 3, …, n.
where i=1, 2, …, m and j=1, 2, 3, …, n, and where the identification coefficient ρ=0.5.
Step 10: Compute the degree of gray relational coefficient of each candidate using the resulting equation:
where
Step 11: Estimate the collective index (Zl) based on the degree of gray relational coefficient of each candidate by
Step 12: Decide the primacy of candidates Bi (i=1, 2, …, m) by the proposed Z (i=1, 2, …, m). If any of the candidates has the highest Zli values, then it is the most important one. The flowchart of the proposed CF-decision method is illustrated (Figure 2).
6 Application of the Proposed Model for the Precursor Selection Problem
TiC powders are commonly synthesized from precursors of Ti and C. The sol–gel method is one of the novel systems for TiC nanopowder synthesis at low refining temperatures. The sol–gel process is a mixed pathway consisting of the preparation of a sol, successive gelation, and solvent removal [15]. In a sol–gel amalgamation pathway, a large volume of titanium alkoxide, for example, titanium superoxide, is condensed in an appropriate dissolving solution. On the other hand, the carbon source is liquefied in water using another measuring glass at room temperature. Thereafter, this course of action is added dropwise to the titanium alkoxide sol. The sol–gel compound should be handled with caution as it contains hazardous substances such as destructive acids and H2O2. Shortly thereafter, gelation occurs in which the solvents are vaporized, first at room temperature and thereafter at 110°C, and the dried gels are reinforced in graphite and water using an alumina tube warmer at 1400°C in gushing argon. The warming rate is 10°C/min and the holding time is 1 h. The initial formation temperature of titanium hexachloride (TiCx Oy ) is under 1000°C, and immaculate TiC powders with a size range of 20–100 nm are finally synthesized. The flowchart of the synthesis of nanocrystalline TiC powders by the sol–gel route is illustrated in Figure 3.
Titanium alkoxides are widely used as a titanium source for the synthesis of nanosized TiC by the sol–gel route, while various materials including activated carbon, carbon black, ethyl acetoacetate, sucrose, and sugar can be used as carbon sources. The grain size and morphology of TiC powders can be attributed to the differences in the nature of the carbon obtained from various sources. Therefore, the synthesis of TiC powders by the sol–gel technique largely depends on the appropriate selection of the carbon source as precursor.
In this application example, a research group selects a suitable carbon source as a precursor for blending of TiC nanopowders through the sol–gel amalgamation pathway. There are diverse motivations in the choice of the right carbon source. Five carbon sources are available in the sol–gel process, which are labeled as B1, B2, B3, B4, and B5. The clarification of these carbon source candidates is given in Table 6.
Candidates | Carbon sources |
---|---|
B1 | Activated carbon |
B2 | Carbon black |
B3 | Ethyl acetoacetate |
B4 | Sucrose |
B5 | Sugar |
In comparative sessions, countless attributes were extracted from a careful assessment of the literature. Then, five attributes for selecting the carbon source were obtained.
Cost (M1): The cost of carbon precursors in sol–gel synthesis of TiC nanopowders plays a very significant role in the selection of the best of them. Therefore, one of the main goals in precursor selection in the synthesis of TiC nanopowders is to minimize the cost of the synthesis process.
Carbon content (M2): The structure requires little amount of the carbon precursor when it has high carbon content. Furthermore, increasing the carbon content of the carbon source leads to the use of a small amount of water.
Water solvability (M3): In the sol–gel process, the carbon foundation is disintegrated in water. The solution is then gently mixed with titanic sol to obtain the gel. The coordination requires less water to accomplish when the carbon source has high water dissolvability, and the volume of included water is standard in the hydrolysis of the sol–gel precursor. Increased water content is related to augmentation in the hydrolysis rate, and the potential to achieve stable sol decreases at higher water/precursor content.
Temperature of TiC formation (M4): Decrease in contamination in nanomaterial preparation is one of the fundamental concerns about the innovative work. The fundamental advantage of the sol–gel technique is that nanopowders can be combined at a considerably lower temperature in addition to its lower time and power requirements. Synthesis of TiC at low temperatures is required to obtain TiC nanopowders because at high temperature, the creation rate of valuable nanostones is much quicker and a very high amount of TiC powder is gained.
Crystallite size (M5): The important properties of nanomaterials are dependent on continuing the lifespan of precious stones, and observing gem sizes is an important step in product optimization. The expanded correspondence between carbon (from the carbon source) and titanium makes the response reasonable for diminishing the crystallite size of TiC powders. TiC powders with small crystallite sizes in the range of 1–100 nm have been found to show novel and frequently enhanced mechanical properties. The crystallite size from various titanium alkoxide/carbon sources at a strengthening temperature of 1400°C can be measured with X-beam diffraction.
The categorized arrangement of carbon source selection is illustrated in Figure 4.
6.1 Implementation and Computational Results
In the following, the proposed CF-MAGDM is employed to evaluate and select the best carbon source for the synthesis of TiC nanopowders by the sol–gel technique.
Step 1: After identifying the attributes and carbon sources as candidates, a committee of three professional experts (E1, E2, E3) is formed to conduct the evaluation and to select the most suitable carbon source.
Step 2: The CF-value ratings of the five carbon source candidates according to the linguistic variables, and their relevant CF-value in Table 1 are estimated by the experts with respect to the attributes. In the next step, the CF performance matrix is cut for each of the three experts as explained in Tables 7–9.
Step 3: The weights of each expert are determined by Eqs. (12) and (13).
Step 4: The aggregated CF-decision matrix is constructed based on the thoughts of experts by using Eq. (7). The attained outcomes are shown in Table 10.
Step 5: The weights of five attributes are shown in Eqs. (9) and (10) and given in the “Known Weights of the Attributes” table below.
Step 6: The weighted aggregated CF-decision matrix is constructed by using Eq. (11), and the results are illustrated in Table 11.
Step 10: The degree of gray relational coefficient of each candidate is computed using Eqs. (18)–(21), and the results are illustrated in Table 18.
Step 12: The larger the Zli , the higher the priority of the candidate. Therefore, the final ranking based on the CF-MAGDM is as follows: B2>B5>B4>B1>B3.
D1= | |||||
D2= | |||||
D3= | |||||
Q= | |||||
H= | |||||
PIS= |
NIS= |
0.0022 | 0.0983 | 0.1447 | 0.1046 | 0.1386 | |
0.0801 | 0.0898 | 0.1247 | 0.1279 | 0.1178 | |
0.0896 | 0.1228 | 0.0136 | 0.0366 | 0.0660 | |
0.058 | 0.0248 | 0.0472 | 0.0688 | 0.0513 | |
0.0119 | 0.0492 | 0.0402 | 0.0668 | 0.0081 |
0.1231 | 0.0271 | 0.0365 | 0.0358 | 0.0255 | |
0.0696 | 0.0427 | 0.0126 | 0.0185 | 0.0397 | |
0.0533 | 0.0201 | 0.1292 | 0.1248 | 0.1162 | |
0.0815 | 0.1200 | 0.0894 | 0.0698 | 0.0853 | |
0.1403 | 0.1243 | 0.1450 | 0.1021 | 0.1381 |
〈0.5246〉 | 〈1.7543〉 | 〈1.4269〉 | 〈1.4470〉 | 〈1.8257〉 | |
〈0.8610〉 | 〈1.2705〉 | 〈2.7157〉 | 〈2.2206〉 | 〈1.3416〉 | |
〈0.8611〉 | 〈2.1160〉 | 〈0.5023〉 | 〈0.5182〉 | 〈0.5525〉 | |
〈0.7536〉 | 〈0.5368〉 | 〈0.6959〉 | 〈0.8589〉 | 〈0.7246〉 | |
〈0.4661〉 | 〈0.5201〉 | 〈0.4523〉 | 〈0.6196〉 | 〈0.4728〉 |
〈0.0271〉 | 〈0.2396〉 | 〈0.1702〉 | 〈0.2275〉 | 〈0.1770〉 | |
〈0.2864〉 | 〈0.2598〉 | 〈0.1946〉 | 〈0.1903〉 | 〈0.2048〉 | |
〈0.2603〉 | 〈0.1973〉 | 〈0.9644〉 | 〈0.5303〉 | 〈0.3362〉 | |
〈0.3738〉 | 〈0.6895〉 | 〈0.4392〉 | 〈0.3333〉 | 〈0.4118〉 | |
〈1.0265〉 | 〈0.4254〉 | 〈0.4954〉 | 〈0.3333〉 | 〈1.1991〉 |
Candidates | Zli | Final ranking | ||||||
---|---|---|---|---|---|---|---|---|
B1 | 2.6476 | 0.0121 | 3.3037 | 0.0151 | 0.0321 | 0.0498 | 0.3903 | 4 |
B2 | 2.6463 | 0.0121 | 3.3020 | 0.0151 | 0.0320 | 0.0498 | 0.3911 | 1 |
B3 | 2.6450 | 0.0120 | 3.3004 | 0.0151 | 0.0317 | 0.0495 | 0.3902 | 5 |
B4 | 2.6427 | 0.0120 | 3.2987 | 0.0151 | 0.0317 | 0.0494 | 0.3908 | 3 |
B5 | 2.6529 | 0.0120 | 3.3103 | 0.0151 | 0.0321 | 0.0499 | 0.3910 | 2 |
p-Value | B1 | B2 | B3 | B4 | B5 |
---|---|---|---|---|---|
p=0, Zli | 0.0025 | 0.7084 | 0.0138 | 0.0077 | 0.0005 |
Preference order ranking | 4 | 1 | 2 | 3 | 5 |
p=0.1, Zli | 0.6190 | 0.7560 | 0.0436 | 0.4473 | 0.0122 |
Preference order ranking | 2 | 1 | 4 | 3 | 5 |
p=0.2, Zli | 0.5609 | 0.6018 | 0.1096 | 0.4624 | 0.0351 |
Preference order ranking | 2 | 1 | 4 | 3 | 5 |
p=0.3, Zli | 0.5502 | 0.5812 | 0.1634 | 0.4707 | 0.0783 |
Preference order ranking | 2 | 1 | 4 | 3 | 5 |
p=0.4, Zli | 0.6121 | 0.5879 | 0.2062 | 0.4760 | 0.8819 |
Preference order ranking | 2 | 3 | 5 | 4 | 1 |
p=0.5, Zli | 0.3903 | 0.3911 | 0.3902 | 0.3908 | 0.3910 |
Preference order ranking | 4 | 1 | 5 | 3 | 2 |
p=0.6, Zli | 0.7121 | 0.4423 | 0.2694 | 0.4317 | 0.1409 |
Preference order ranking | 1 | 2 | 4 | 3 | 5 |
p=0.7, Zli | 0.2323 | 0.0067 | 0.2456 | 0.0006 | 0.1234 |
Preference order ranking | 2 | 4 | 1 | 5 | 3 |
p=0.8, Zli | 0.6259 | 0.1210 | 0.0002 | 0.0009 | 0.1893 |
Preference order ranking | 1 | 3 | 5 | 4 | 2 |
p=0.9, Zli | 0.4530 | 0.6722 | 0.8900 | 0.5406 | 0.2014 |
Preference order ranking | 4 | 2 | 1 | 3 | 5 |
p=1, Zli | 0.4634 | 0.4230 | 0.0029 | 0.4821 | 0.2185 |
Preference order ranking | 2 | 3 | 5 | 1 | 4 |
6.2 Numerical Applications
Let A={A1, A2, A3, A4, A5} be a set of alternative and C={C1, C2, C3, C4, C5} be the set of criteria. Let D1, D2, D3 be sets of the decision matrix. The decision matrix evaluates each alternative based on the given criteria. Each decision maker gives his opinion in the form of a linguistic variable for the rating performance and the importance of each criterion according to the linguistic variable.
Decision Matrix 1:
E G | V V G | F | M L | F | |
V V G | V G | M | M B | V G | |
D1= | H | F | M G | M G | M B |
M L | V G | M L | V H | M L | |
V V G | M L | V H | M | V G |
Decision Matrix 2:
V V L | V G | H | V G | M B | |
V G | L | V V L | M L | V | |
D2= | M G | M B | M L | E C | V V G |
E H | V V G | V V H | F | E C | |
V V L | F | F | M | V G |
Decision Matrix 3:
V G | M B | V B | M G | M B | |
V H | L | V V G | M H | V L | |
D3= | V H | M B | M L | L | M G |
E C | H | V V L | M B | V V L | |
L | F | E C | H | V L |
W1 | W2 | W3 | W4 | W5 |
0.1983 | 0.2007 | 0.2006 | 0.1993 | 0.2008 |
In this step, we aggregated the CF-decision matrix D1, D2, D3 based on the opinions of the experts after the weight values for the experts are obtained. The evaluated values provided by different experts can be aggregated based on the CFWG operator as below. The aggregated CF-decision matrix can be defined as follows:
Known weights of the attributes:
Attributes | W1 | W2 | W3 | W4 | W5 |
Weights | 0.2001 | 0.2000 | 0.1999 | 0.1998 | 0.2001 |
Determine CPIS and CNIS as
The values of
Examination between the inclination and arrange ranking of the CF model for request execution by likeness to perfect arrangement (cubic TOPSIS) display and the proposed CF model.
6.3 Comparison Between the Proposed CF Model and the CF TOPSIS Model
In this subsection, the CF TOPSIS model demonstrates accessibility and is employed for the purpose of assuring the position of the candidates and interfacing the outcomes in the execution to the precursor determination. The computational imprints are shown in Figure 5. The outcomes of the proposed model are obviously settled by the CF TOPSIS strategy. As it can be seen, the two strategies have comparable outcomes; that is, competitors B2 and B5 are ranked first and second, and candidate B4 is ranked third. In any case, B1 and B3, as alternative sources, are ranked fourth and fifth, respectively.
6.4 Sensitivity Analysis
In this subsection, the identification coefficient rate ρ functions to understand whether every identification measurement value may influence the results of the ranking of the candidates through the proposed model. The modified identification coefficient ideals are useful to study the proposed model. The condition instruction of the candidates and the standards of the ranking index B established on modified q are shown in Table 19 and characterized in Figure 6. The results clarify the dissimilarity of the ranking index value of each candidate using numerous identification coefficient values, and also that the ranking orders of the five candidates are identical despite deviations of an influential coefficient value from ρ=0.1 to ρ=1. These outcomes can assist decision makers in evaluating and selecting a reasonable candidate. Moreover, the proposed model determines that the gaps between the Zl values of various candidates become larger when the resolving coefficient value is reduced from 1 to 0.1. Through the gap between each Zl value of each candidate, the decision maker can distinguish the differences among the candidates more easily. According to the overhead analysis, this article shows that the proposed model can provide reasonable findings and deliver suitable data to benefit decision makers in the collection of decision-making problems.
7 Discussion
As mentioned above, it is important to indicate that the proposed model can concurrently acquire the gap between the ideal candidate and each candidate, the ranking order of candidates, and the priority items for the development for each candidate. According to the sensitivity analysis, it has been demonstrated that this model can employ any identification coefficient value to appraise the gap between the Zl values of several candidates, which can help the decision makers to choose a suitable candidate. Further, the study determines that the proposed model employs the major technique of CFSs to handle vague information and/or data, and then the CFSs might achieve more flexibility to represent the imprecise/vague information resulting from a lack of data. Moreover, the entropy method is employed to continuously utilize the information from CF decision matrices as a rational way for attribute and expert weighting, and also results in robust decisions.
The X-ray wide-angle deflection shapes of powders synthesized with titanium isopropoxide and sugar in argon are provided in Figure 7. They are analyzed by X-ray diffractometry (Philips model PW3710 using Cu Kα radiation). It is observed from the diffraction patterns that the sample shows characteristic peaks of TiC at 2 h=36.1, 41.87, and at 60.65. The lattice parameter of the cubic crystallites in the synthesized powder fired at 1300°C (α=0.4315 nm) is observed to be almost equal to standard value (α=0.4329 nm). The average crystallite size is calculated using Scherer equation and is observed to be 38.1 nm for the sample fires at 1300°C. Microstructural observations are carried out on gold-coated samples by scanning electron microscopy (SEM) (TESCAN, Vega ΙΙ). Figures 8–10 shows the SEM images of TiC synthesized at 1300°C for 1 h. It is realized from the micrographs that the particle sizes of the TiC powders synthesized at 1300°C range from 100 to 500 nm, and clusters can be observed. The units are extremely crystallized, representative of a well-developed cubic TiC stage under the current synthesis conditions. The results of this experiment validate that sugar is an appropriate carbon source to synthesize TiC nanopowders by the sol–gel process.
In addition, we investigated the consequences with the experts within the common meeting, which demonstrated that the results of the proposed model are appealing. For instance, the ranking results in Table 19 indicate that candidate 5 (sugar) and candidate 4 (sucrose) are ranked first and second, respectively. When discussing these ranks with the experts, they have expressed that these two precursors are more appropriate than others as carbon source. In fact, they have established the results of the proposed model in the selection of carbon source as precursor in the synthesis of TiC nanopowders.
The mixture of the precursor is the main method in the synthesis of nanomaterials. The power of choosing accurate precursors can be dangerous, as the situation affects the observation rate and the product features. Distinguishing the best precursor among different choices under multiple conflicting attributes seems challenging. The existing study is expected to advance the features of group decision making for the sensible variety. As a result, a fresh CF-MAGDM assembled on the mixture of the notions of TOPSIS and GRA in the CF environment is established on the selection of precursor in the synthesis of TiC nanopowders through the sol–gel route. An application example of appraising precursors has been explained to determine the applicability of the proposed model. This study demonstrates that the proposed model can instantaneously attain the gap between the ideal candidate and all the other candidates, the ranking order of candidates, and the priority of enlightening objects of feebleness of respectively candidate. In addition, the grades are unoriginal consuming CF-MAGDM show a worthy relationship with those achieved by the opinions of professional experts, which exactly substantiate the worldwide applicability of this model while solving a variety of measureable precursor selection problems. Through evaluation with the previous revisions, this model delivers a useful manner to arrange fuzzy MADM problems in an extra-regulating and extra-general approach outstanding to the detail that it consumptions cubic TOPSIS method represent the candidate rating with details of attributes. Although the proposed model in this article is explained through a problem of precursor selection, it likewise contains realistic complications such as sensible variety, development mixture, and supplementary areas of controlling decision problems.
8 Conclusion
In this paper, the cubic TOPSIS method, CGAS, and proposed CF-MAGDM have been established. The proposed model was assessed through both qualitative and quantitative measures for the greatest strategy and material selection process. The following suppositions might stand.
The TOPSIS background offers a flawless technique to choose from candidate alternatives in a decision matrix; however, the cubic TOPSIS method is effective in solving the initial investigation ambiguity in the decision matrix.
In other words, it is suitable for calculating possible plans with reference to criteria and standing weights by using linguistic variables instead of numerical measurements. Therefore, TOPSIS for cubic statistics has been established and a procedure to define the greatest strategy among all realistic strategies, while the data are cubic, is offered. The weighted normalized cubic decision matrix is constructed. In this approach, the distance values of separate alternatives from ideal and anti-ideal solutions are determined by using the concept of ranking cubic interval values and fuzzy sets. Finally, the closeness amounts are defined to realize the ranking order of all alternative strategies. In fact, this method is very flexible.
The current study introduced the practice of using cubic TOPSIS and CF TOPSIS in explaining a proposed CF-MAGDM problem. The article aimed to study the measurements of online travel facility quality, by adapting the TOPSIS method and the cubic TOPSIS model. Furthermore, the systems and capabilities defined from the study can be valuable to the establishment’s forthcoming deliberate development. After the arrangement ratings are found equivocal and erroneous, the cubic TOPSIS method becomes the chosen method. In calculation, it remains worthy to explore MADM methods for a travel website overhaul quality difficult. This makes any of the future research prospects in this field a current main investigation issue.
Flowchart of the whole paper
Bibliography
[1] L. J. Cerovic, S. K. Milonjic and S. P. Zec, A comparison of sol-gel derived silicon carbide powders from saccharose and activated carbon, Ceram. Int.21 (1995), 271–276.10.1016/0272-8842(95)99793-BSearch in Google Scholar
[2] S. Cetinkaya and S. Eroglu, Chemical vapor deposition of carbon on particulate TiO2 from CH4 and subsequent carbothermal reduction for the synthesis of nanocrystalline TiC powders, J. Eur. Ceram. Soc.31 (2011), 869–876.10.1016/j.jeurceramsoc.2010.11.027Search in Google Scholar
[3] P. Chatterjee, V. M. Athawale and S. Chakraborty, Selection of materials using compromise ranking and outranking methods, Mater. Des.30 (2009), 4043–4053.10.1016/j.matdes.2009.05.016Search in Google Scholar
[4] A. Chauhan and R. Vaish, Magnetic material selection using multiple attribute decision making approach, Mater. Des.36 (2012), 1–5.10.1016/j.matdes.2011.11.021Search in Google Scholar
[5] M. Guglielmi and G. Carturan, Precursors for sol-gel preparations, J. Non-Cryst. Solids100 (1988), 16–30.10.1016/0022-3093(88)90004-XSearch in Google Scholar
[6] A. Jahan and K. L. Edwards, VIKOR method for material selection problems with interval numbers and target-based criteria, Mater. Des.47 (2013), 759–765.10.1016/j.matdes.2012.12.072Search in Google Scholar
[7] Y. B. Jun, C. S. Kim and K. O. Yang, Cubic sets, Ann. Fuzzy Math. Inform.4 (2012), 83–98.Search in Google Scholar
[8] X. Liu, Z. Wang and S. Zhang, Molten salt synthesis and characterization of titanium carbide-coated graphite flakes for refractory castable applications, Int. J. Appl. Ceram. Technol.8 (2011), 911–919.10.1111/j.1744-7402.2010.02529.xSearch in Google Scholar
[9] B. H. Lohse, A. Calka and D. Wexler, Effect of starting composition on the synthesis of nanocrystalline TiC during milling of titanium and carbon, J. Alloy. Compd.394 (2005), 148–151.10.1016/j.jallcom.2004.09.074Search in Google Scholar
[10] A. S. Milani, A. Shanian, R. Madoliat and J. A. Nemes, The effect of normalization norms in multiple attribute decision making models: a case study in gear material selection, Struct. Multidiscip. Optim.29 (2005), 312–318.10.1007/s00158-004-0473-1Search in Google Scholar
[11] H. Preiss, L. M. Berger and D. Schultze, Studies on the carbothermal preparation of titanium carbide from different gel precursors, J. Eur. Ceram. Soc.19 (1999), 195–206.10.1016/S0955-2219(98)00190-3Search in Google Scholar
[12] R. V. Rao, A material selection model using graph theory and matrix approach, Mater. Sci. Eng. A Struct. Mater. Prop. Microstruct. Process.431 (2006), 248–255.10.1016/j.msea.2006.06.006Search in Google Scholar
[13] A. Shanian and O. Savadogo, TOPSIS multiple-criteria decision support analysis for material selection of metallic bipolar plates for polymer electrolyte fuel cell, J. Power Sources159 (2006), 1095–1104.10.1016/j.jpowsour.2005.12.092Search in Google Scholar
[14] A. Shanian, A. S. Milani, C. Carson and R. C. Abeyaratne, A new application of ELECTRE III and revised Simos’ procedure for group material selection under weighting uncertainty, Knowledge-Based Syst.21 (2008), 709–720.10.1016/j.knosys.2008.03.028Search in Google Scholar
[15] A. Tatsuya, T. Ryuichi, O. Masafumi, U. Tomoko and S. Kokki, Synthesis of titanium carbide from woody materials by self-propagating high temperature synthesis, J. Ceram. Soc. Jpn.110 (2002), 632–638.10.2109/jcersj.110.632Search in Google Scholar
[16] L. Tong and R. G. Reddy, Synthesis of titanium carbide nano-powders by thermal plasma, Scr. Mater.52 (2005), 1253–1258.10.1016/j.scriptamat.2005.02.033Search in Google Scholar
[17] L. A. Zadeh, Fuzzy sets, Inf. Control8 (1965), 338–353.10.1016/S0019-9958(65)90241-XSearch in Google Scholar
[18] H. Zhang, F. Li, Q. Jia and G. Ye, Preparation of titanium carbide powders by sol-gel and microwave carbothermal reduction methods at low temperature, J. Sol-Gel Sci. Technol.46 (2008), 217–222.10.1007/s10971-008-1697-0Search in Google Scholar
©2019 Walter de Gruyter GmbH, Berlin/Boston
This article is distributed under the terms of the Creative Commons Attribution Non-Commercial License, which permits unrestricted non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.