3. Some Results on CmPFS
In this section, we give some basic results of CmPFS that will help in the next section to better understanding of the proposed aggregation operators.
Definition 7. A CmPFS on a discourse Q is said to be an Internal Cubic m-Polar Fuzzy Set (ICmPFS) if , for all and .
Definition 8. A CmPFS is referred to as External Cubic m-Polar Fuzzy Set (ECmPFS) if it is not internal, that is, if , for some or .
Thus, ECmPFS is simply the negation of ICmPFS.
Definition 9. A CmPFS is characterized as a Null Cubic m-Polar Fuzzy Set (NCmPFS) if and for all and .
Definition 10. If for a CmPFS , and for all and , it is called an Absolute Cubic m-Polar Fuzzy Set (ACmPFS).
Theorem 1. The set of all ICmPFSs on a discourse Q is closed under the operation of complement; that is, A is ICmPFS if and only if is ICmPFS.
Proof. Consider an Internal Cubic m-Polar Fuzzy Set
. Then
, for all
and
. This implies that
for all
and
. This shows that
is also an ICmPFS. □
Remark 1. Since ECmPFS is the negation of ICmPFS, and a certain CmPFS falls in exactly one of the two categories (by definition), the above characterization immediately characterizes the closeness of the set of all ECmPFSs on a certain discourse X.
Theorem 2. For a collection of ICmPFNs , , P-maximum and P-minimum are also ICmPFN.
Proof. Since
are ICmPFNs,
. This implies that
and
This shows that and are also ICmPFS. □
Remark 2. R-minimum and R-maximum of ICmPFNs may not be ICmPFN. Similarly, R-minimum, R-maximum, P-minimum and P-maximum of ECmPFNs may not be ECmPFN. The counter examples are easy to compute.
In any decision-making process, ranking is a basic tool. Decision makers are required to rank the uncertainties on the basis of which the most favorite alternative is filtered. To help decision makers rank the vagueness in CmPF environment, we define score and accuracy functions for CmPFNs.
Definition 11. Let be a CmPFN. The score and accuracy functions are, respectively, defined asandwhere is the length of the fuzzy interval . It is clear that and . Proposition 1. The ranking of CmPFNs with the help of the proposed score and accuracy functions is observed as follows.
If and are two CmPFNs. Then
if ,
If , then if ,
If, however, and , then .
Definition 12. Let and be two cubic m-polar fuzzy sets.
The distance between the two CmPFSs is defined by 5. CmPF Dombi Aggregation Operators with P-order
In this section, we develop Dombi P-aggregation operators in cubic m-polar fuzzy environment and give a brief description with the help of examples. These are cubic m-polar fuzzy Dombi P-averaging operator (CmPFDPAO), Cubic m-polar fuzzy Dombi weighted P-averaging operator (CmPFDWPAO), and cubic m-polar fuzzy Dombi ordered weighted P-averaging operator (CmPFDOWPAO). We will examine some properties of the proposed aggregation operators as well.
Definition 13. For the family of CmPFNs , the cubic m-polar fuzzy Dombi P-averaging operator is defined as Theorem 6. Let , , be the family of CmPFNs. Then their aggregated value is again a CmPFN and Proof. We can prove it by induction on n.
For
, we have
which is a CmPFN, by definition.
Suppose , and our proposed averaging formula is true for CmPFNs numbered less than n.
Now we see that
which is a CmPFN by induction hypothesis. □
Remark 5. Theorem 4 implies that the aggregation of ICmPFNs , under CmPFDPAO is again an ICmPFN. However, there is no assurance about external aggregation.
Example 1. Let us consider four C3PFNs
.
For , the aggregation under C3PFDPAO is given by
.
In the following, we see that CmPFDPAO is commutative.
Theorem 7 (Commutative)
. Let , , be the assembly of CmPFNs. Thenwhere is a permutation of . Definition 14. For a collection of CmPFNs , the cubic m-polar fuzzy Dombi weighted P-averaging operator is defined aswhere is a weight vector with and . Theorem 8. Let , , be the collection of CmPFNs. Then their aggregated value under CmPFDWPAO is again a CmPFN and
Proof. We can prove it by induction on n.
For , we have
which is a CmPFN, by definition.
Suppose , and our proposed averaging formula is true for CmPFNs numbered less than n.
Now we see that
which is surely a CmPFN by induction hypothesis. □
Theorem 9. Let , be the collection of ICmPFNs with a weight vector . Then is also an ICmPFN.
Proof. Since are ICmPFNs, so
,
for all . This proves our claim. □
Example 2. Consider the data of Example 1 and let the weights assigned to be . The dictation under CmPFDWPAO is given by
The following properties can be easily proved for CmPFDWPAO.
Theorem 10 (Idempotency). Let , , be the collection of equal CmPFNs, say . Then the aggregated value under CmPFDWPAO is again a CmPFN A. Mathematically,
Proof. □
Theorem 11 (Monotonicity)
. Let and , , be the two collections of CmPFNs such that for all i. Then Proof. By our assumption we have
Using similar observations for and , the result follows. □
Theorem 12 (Boundedness)
. Let , , be the collection of CmPFNs. We define and . Then Proof. The proof is straightforward. □
Definition 15. Let be the family of CmPFNs; the cubic m-polar fuzzy Dombi ordered weighted P-averaging operator is defined aswhere is a weight vector with and , and is a permutation of dictating Theorem 13. Let , , be the knot of CmPFNs. Then the accumulated/aggregated value under CmPFDOWPAO is a CmPFN and
The and have usual meanings.
Proof. We can prove it by induction.
For , we have
which is a CmPFN, by definition.
We can grip induction hypothesis. Now we see that
which is surely a CmPFN by induction basis/hypothesis.
We can prove the following properties for CmPFDOWPAO. □
Theorem 14. CmPFDOWPAO ensures its compatibility for ICmPFNs. That is, if are ICmPFNs, then is an ICmPFN.
Proof. The proof is similar to Theorem 9. □
Theorem 15 (Idempotency). Let , , be the assemblage of CmPFNs such that for all i. Then
Proof. Consider
,
being the weight vector. □
Theorem 16 (Monotonicity). For the two collections of CmPFNs and , , with for all i, .
Proof. Theorem is the same as Theorem 3. □
Theorem 17 (Boundedness)
. Let , , be the collection of CmPFNs. We define and . Then Proof. Straightforward. To date, we have discussed CmPFDPAO, CmPFDWPAO, and CmPFDOWPAO and related properties for CmPFEs. These operators have their own advantages. However, they have some limitations as well. CmPFDPAO does not work in a weighted environment, CmPFDWPAO weights only CmPF values, and only ordered positions are weighted under CmPFDOWPAO. To overcome this limitation, we define a new aggregation operator that is a hybrid of CmPFDWPAO and CmPFDOWPAO and will weight CmPF values as well as their ordered positions. □
Definition 16. A cubic m-polar fuzzy Dombi hybrid P-averaging operator (CmPFDHPAO) is a function from n-dimensional CmPF space to CmPF space. If we have a collection of CmPFNs , , then the CmPFDHPAO weighted by , , is defined aswhere ; n is balancing factor, is weight vector for with the condition and . Here, σ has usual meanings as in Definition 3. Interestingly, CmPFDHPAO becomes CmPFDWPAO if we take , , and it becomes CmPFDOWPAO if we take . Therefore, CmPFDHPAO is the generalized one with CmPFDWPAO and CmPFDOWPAO as its special cases.
6. CmPF Dombi Averaging Aggregation Operators with R-order
In this section, we introduce some Dombi R-aggregation operators for CmPF information. We will discuss some properties of these AOs.
Definition 17. For a collection of CmPFNs , the cubic m-polar fuzzy Dombi R-averaging operator is defined as Theorem 18. Let , , be the collection of CmPFNs. Then the aggregated value under CmPFDRAO is again a CmPFN and
Proof. Proof is the same as Theorem 6. □
Theorem 19 (Commutative). For any collection of CmPFNs , ,
where is a permutation of .
Proof. Follows from definition. □
Definition 18. For a collection of CmPFNs , the Cubic m-Polar Fuzzy Dombi Weighted R-Averaging Operator is defined as
where is a weight vector with and .
Theorem 20. Let , , be the collection of CmPFNs. Then the aggregated value under CmPFDWRAO is again a CmPFN and
Proof. The following properties can be easily proved for CmPFDWRAO. □
Theorem 21 (Idempotency). Let , , be the assembly of CmPFNs such that . Then,
Theorem 22 (Monotonicity). Let and , , be the two collections of CmPFNs such that for all i. Then
.
Theorem 23 (Boundedness)
. Let , , be the collection of CmPFNs. We define and . Then Definition 19. Let be the fabrication of CmPFNs, the Cubic m-Polar Fuzzy Dombi Ordered Weighted R-Averaging Operator is defined as
where is a weight vector with and , and is a permutation of dictating
Theorem 24. Let , , be the knot of CmPFNs. Then, the accumulated value under CmPFDOWRAO is a CmPFN and
The and have usual meanings.
We can prove the following properties for CmPFDOWRAO.
Theorem 25 (Idempotency). Let , , be the assemblage of CmPFNs such that , say, for all i. Then,
Theorem 26 (Monotonicity). For any two collections of CmPFNs and , , with for all i, .
Theorem 27 (Boundedness)
. Let , , be the collection of CmPFNs. We define and . Then, We have discussed
CmPFDRAO,
CmPFDWRAO, and
CmPFDOWRAO and related properties for CmPFEs. These operators have some limitations already mentioned in
Section 3. Therefore, hybridization of
CmPFDWRAO and
CmPFDOWRAO is mandatory.
Definition 20. A cubic m-polar fuzzy Dombi hybrid R-averaging operator (CmPFDHRAO) is a function . For CmPFNs , , the CmPFDHRAO weighted by , , is defined aswhere , n is balancing factor, is weight vector for with the condition and . Here, σ is a permutation on which dictates in descending order. CmPFDWRAO and CmPFDOWRAO can be observed as special cases of CmPFDHRAO by taking and , respectively. 7. MCDM towards the Circular Economy
In this section, we develop a multi-criteria decision-making (MCDM) technique under cubic m-polar fuzzy information and its application to circular economy (CE). The circular economy (CE) is currently a common concept advocated by many white collar countries and many businesses around the world. However, the science and research fabric of the CE theory is simplistic and unfocused. CE, no doubt, is the best alternative of the linear economy, but its applicability is reduced until its complexities are alleviated.
The word “circular economy” has both a descriptive and linguistic sense. In latter sense, it is opposite to CLE, which is characterized as the conversion of natural resources into waste through processing. Such waste generation leads to environmental destruction by depleting natural resources and increasing pollution. The word “linear economy” has been extensively used since the birth of “circular economy”, which is an economy with a minor or no net impact on the climate. It is intended to restore any harm to the resources while guaranteeing little waste during the entire manufacturing period. There are many biochemical and geochemical cycles on the earth that inspired the idea of CE. For instance, water evaporates from the earth water bodies, forms rain drops, comes back to the earth and again becomes a part of the rivers, seas, oceans etc. Similar biogeochemical cycles can be observed on the earth. Each cycle has its own time perio, e.g., water cycle takes about 9 to 10 days, carbon dioxide takes
years, oxygen in the atmosphere takes
years to complete. Such biogeochemical cycles in nature are the reason of the existence of humankind on the earth. The water cycle is shown in the
Figure 1.
The practice of CLE has altered almost every cycle. In order to safeguard the existing cycles in nature, it is advisable to promote CE. What makes CE implementable are recycling, repairing, recovering, regenerating etc. The most important and achievable of these is recycling. Recycling refers to the process of transferring sludge into new materials and products. This definition also includes energy recovery from waste materials. The ability of a material to reclaim the properties it had in its pure state determines its renewability. Recycling can help to reduce waste from genuinely useful products while also lowering the cost of new raw materials. Recycling is a central facet of current waste diversion and is the third level of the “Reduce, Reuse, and Recycle” hierarchy. The materials that can be recycled include glass, cardboard, plastic, paper, tires, textiles, metals, and electronics. Each of these are recycled in a unique way. For example, if we focus on recycling plastic materials, three major processes are frankly useful depending on the type of the plastic under consideration.
Chemical recycling
Heat compression
Mechanical recycling
Chemical recycling.
Polymers are a special type of plastic manufactured chemically. These are basically complex chemical combinations of monomers. A wide range of polymers may be converted back into monomers. PET, for example, is a well-known polymer. It is converted to dialkyl terephthalate if treated with alcohol and an appropriate catalyst. The terephthalate diester is then treated with ethylene glycol, yielding a pure form of a new polymer known as polyester polymer. As a result, various types of plastics can be effectively recycled using chemical methods.
Heat compression.
In heat compression, plastics of all sorts are mixed together, compressed, and rolled in a large heated and rolling tumbler. This is a beneficial way to recycle the plastic. However, the tumblers involved render this process uneconomical because it again involves the usage of natural resources like coal, oil, gas etc. to rotate the tumbler and for compression purpose. Therefore, this process bears some criticism.
Mechanical recycling.
Some plastics are melted down to shape new objects. For example, PET plastic can be processed into polyester, which is intended for clothes. A downside of this recycling method is that the polymer’s molecular mass can alter with each remelt, and the amounts of fish waste in the plastic can increase.
Plastic recycling process can be categorized into three steps: Collection, Reprocessing, and Production. The main contribution to these three steps mainly comes from collectors, suppliers, sorters, and recyclers.
Collection.
Recycling operation starts with the contribution of garbage pickers and dealers. A recycling organization involves a network of formal collectors participating in collecting and sorting of recyclable plastic materials. Garbage pickers include two categories: those who work legally with a company and those who are not bound to any specific organization. The second type of picker is critical to the industry. They work independently, inconsistently, and they do not bother the liability of the industry. However, the plastic recycling industry relies on them, to some extent, indirectly. Due to their informal and erratic work hours, recyclables are not routinely supplied to recyclers, and hence it is not beneficial to the industry. Therefore, to secure a reliable position in the market, a recycler must minimize its dependance on critical pickers.
Reprocessing.
After the waste plastic is collected, it is supplied to the recycling plants by the dealers, where it undergoes one of the above mentioned recycling process followed by resorting. Resorting is indispensable for the circular economy. Some plastic materials are economically recycled under heat compression, some using chemical and some mechanical methods according to their resin type. This categorization is accomplished in reprocessing.
Production.
When sorted, plastic recyclables are eviscerated for mechanical, chemical, or heated recycling. The pieces are shredded and treated in order to extract impurities such as paper annotations. The material is melted or chemically treated to produce other items.
In order to make unanimous, clever and well-suited decisions in cubic m-polar premises, we propose an extended SIR method that is based on coding superiority index/flow and inferiority index/flow and that dictates the affirmation of the most desired/ideal option in contrast. We first give an algorithm/technique and then apply it to deal with the problem of selecting the most effective recycling plant that can help transform a CLE into a CE in an ideal way. An extended superiority and inferiority ranking (SIR) technique under CmPFSs is developed in the following Algorithm 1.
Algorithm 1: (SIR method) |
Consider a set of alternatives , a group of decision makers , fuzzy weights , and a set of criterion . Let be the cubic m-polar fuzzy number assigned to alternative, with respect to the criteria, by the expert. Construct the cubic m-polar fuzzy decision matrices Assume that is the cubic m-polar fuzzy wight value of the criteria given by the expert , and construct the criteria decision matrix . The most suited alternative is filtered by the technique proposed below. |
Step 1: Determine the relative proximity coefficient by the formula
where
and
denote, respectively, the P-minimum and P-maximum. It immediately follows from the formula that if
, then
. Similarly, if
, then
. Furthermore,
Step 2: If the
are in normal form, that is, if they sum up to unity, name them as
Otherwise, normalize them by the formula
In this way, we obtain normalized estimation degrees .
Step 3: Obtain the combined cubic m-polar decision matrix
and the weight vector
using one of the proposed operators, where
(In the end, we give a comparison analysis of CmPFDWPAO with the other proposed operators.)
Step 4: Construct the relative performance relation
where
and
. Clearly, if
, then
and if
, then
. Furthermore,
.
After this, construct superiority matrix
and inferiority matrix
, where
and
being the threshold function given by
Step 5: The superiority index and inferiority index can be calculated, respectively, as follows.
and
Step 6: Calculate the score functions of
and
, for all
, using the Formula (
1).
Step 7: Find the superiority flow and inferiority flow according to the following rules.
Superiority Flow Rules (SFRs)
if and
if and
if and
Inferiority Flow Rules (SFRs)
if and
if and
if and
Step 8: SF rules coupled with IF rules can filter the optimal alternative.
7.1. Numerical Example
The evidence gained in tandem with the circular recycling curriculum is used for the purpose of elucidating model implementation in response to mutually beneficial channels of the program and the towns where it functions and identifies compassionate economic policies for foragers for recyclable materials. A city mayor plans to initiate the practice of CE in their city. The first step for this purpose is to install a recycling plant. The mayor hires three economists
and assigns them the credibility weights
(shown in
Table 1). They chose three companies/recycling plants
, which are currently contributing to CE in certain areas. (Note: We are restricting ourselves to three alternatives and three criteria because our intention is to propose a mathematical model for selecting an optimal recycling plant. The same model is efficient for a big data). Each of the three companies claims that it is the best option for recycling plastic materials, rubber wastes, glass wastes, etc. These companies recycle the things in three steps “collection, reprocessing and production”. The main problem is to filter the best plant to be installed in the city. The efficiency of each plant is observed on the basis of three criteria shown in
Table 2. Their individual assessment turn out to be cubic m-polar fuzzy matrices (shown in
Table 3,
Table 4 and
Table 5).
Step 1: Find
and
. Utilize the Formula (
3) to calculate
.
Calculate the relative proximity coefficients (using Formula (
4))
Step 2: Normalize the estimated proximity degree (using the Formula (
5))
Step 3: Aggregate the cubic m-polar fuzzy decision information (for k = 4), provided by the three economists, to figure out the joint information (given in
Table 6). The identified criterions are given in
Table 7.
Furthermore, obtain the unanimous criteria weights using Equation (
7),
Step 4: The relative performance matrix (using the Formula (
8)) is given by
Construct the superiority and inferiority decision matrices using the Equations (
9) and (
10), respectively.
and
Steps 5, 6: The superiority and inferiority indices of the alternatives and their respective score functions are given in
Table 8 and
Table 9.
Step 7: The superiority flow is given by
and the inferiority flow is given by
Step 8: Both the superiority and inferiority flow agree at the optimal alternative .
7.2. Comparison Analysis
In
Table 10, we compare suggested aggregation operators with some existing operators to examine the harmony of the proposed model with previous existing operators. The analysis provided therein demonstrates that our proposed model is compatible with those already in the literature. The proposed operators make a credible and legitimate contribution to dealing with uncertainties by utilizing cubic m-polar fuzzy information.