1. Introduction
Within the domain of human interaction, waste materializes as an unavoidable consequence, consisting of depleted resources. The necessity to appropriately handle this type of refuse stems from the potential risks it poses, which necessitate careful disposal methods [
1]. Sewage, industrial effluents, and agricultural residues are significant contributors to air, water, and soil contamination, which endanger ecosystems and human health. Similarly, medical establishments, including hospitals, produce substantial volumes of refuse that harbor potential health hazards, including HIV, Hepatitis B and C, and Tetanus. Biomedical waste, which is generated during the course of diagnosing and treating illnesses in both humans and animals, requires the cooperation of all parties involved in its production, storage, collection, transportation, and treatment. Biomedical waste comprises an extensive variety of substances, which span from innocuous and readily controllable to exceptionally dangerous and contagious [
2]. The latter classification presents not only imminent hazards but also enduring perils in the form of intergenerational disease transmission. Furthermore, the inadequate disposal of biomedical waste presents a significant ecological hazard by introducing contaminants into soil, water, and the atmosphere. The dearth of awareness among healthcare personnel regarding the proper disposal of biomedical waste is a matter of great concern, as evidenced by research [
3]. This underscores the critical nature of the situation and the need for improved education and training in waste management protocols. As a result, it is critical to increase public consciousness regarding the proper handling and disposal of biomedical waste in order to alleviate the detrimental effects it has on the environment and human health [
4].
The collection of waste materials from healthcare organizations is the initial step in the complex process of handling healthcare waste (HCW). Following collection, the trash is sent to approved disposal locations and treated with the relevant technology. Making the most of the available financial and environmental resources is a major focus of this stage of the treatment procedure [
5]. The importance of choosing the right technology has been highlighted by recent studies. These studies have shown that a project’s financial viability and environmental sustainability are significantly impacted by the technology chosen. In order to choose the best technological solutions for healthcare treatment, decision makers (DMs) now rely heavily on MCDM methodologies. In response to the identified demand, this is being done [
6]. However, DMs typically encounter difficulties when attempting to assess decisions using precise and clear values because of the inherent fuzziness of human cognition. The choice of HCW treatment technique is inherently complicated, which is a substantial problem in and of itself. This is just one more obstacle. Throughout the review process, it is also critical to evaluate the subjective inputs provided by DMs. Frequently, these inputs are expressed in linguistic words. Given the complexity of the problems involved in the choice of HCW treatment methods, the significance of this language characteristic cannot be emphasized enough. Traditional quantitative measures may misinterpret the complex nature of selection criteria [
7].
The use of HCW treatment technology that incorporates MCDM methodologies not only empowers patients to make more educated decisions, but also recognizes the industry’s complexity and unpredictability. By integrating linguistic assessments and accounting for the quirks of human cognitive processes, the MCDM frameworks provide an effective way to manage human knowledge workers involved in (HCW) activities, boost productivity, and reduce environmental impact. The very nature of real-world apps is unpredictable, which presents a big challenge for DMs trying to make the optimal decision. Since its original introduction by Zadeh [
8], the notion of fuzzy sets (FSs) has proven useful in a number of contexts. During this period, Atanassov [
9] created intuitionistic fuzzy sets (IFSs). These sets were thought to have several benefits in terms of managing uncertainty. “Pythagorean fuzzy set” (PFS) was initiated by Yager and Abbasov [
10] as amplification of IFS that emerged to extend the valuation space for MG and N-MG values. Yager also [
11] defined the notion of q-ROFSs to address vague information, in which the sum of the qth powers of the MG and N-MG is less than or equal to 1. In aggregating, the q-ROF weighted averaging (q-ROFWA) and weighted geometric (q-ROFWG) operators were introduced for efficient synthesis of information from diverse sources [
12]. Using edge cloud computing and deep learning for risk assessment in China’s international trade and investment [
13], and a multi-criteria decision-making model for evaluating road section safety [
14], and the use of interval-valued picture fuzzy uncertain linguistic Dombi operators in industrial fund selection [
15] are just a few examples of the varied approaches to risk management and decision making that are presented in this literature review.
In contemporary decision-making contexts, the application of MCDM methods is pivotal for addressing complex and multifaceted challenges. The CRITIC technique is especially remarkable when compared to other approaches for objectively establishing the weights of criteria [
16]. Mishra et al. [
17] introduced a new technique that leverages the CRITIC approach together with the GLDS methodology and Fermatean fuzzy numbers to enhance decision-making processes. When Monte Carlo simulation is used in conjunction with the CRITIC technique—which was first presented by Cui et al. [
18]—decision making becomes more reliable and consistent. The CRITIC approach is found to be helpful in the manufacturing of vehicles [
19], in addition to its application in software reliability modelling [
20] and smartphone addiction assessment [
21]. It is important to include MCDM methodology in blockchain assessments, as Zafar et al. [
22] provide an efficient blockchain evaluation system based on the entropy-CRITIC weight method and MCDM procedures. Bączkiewicz et al. [
23] explore methodical aspects of MCDM in the context of an E-commerce recommender system, focusing on the design and implementation of MCDM-based recommender systems and their impact on E-commerce platforms.
Bošković et al. give an AROMAN approach together with a case study on the choosing of electric vehicles. By offering a systematic technique for assessing and ranking options, this approach improves decision-making processes [
24]. Nikolić et al. [
25] employed an interval type-2 fuzzy AROMAN decision-making technique to improve the postal network’s sustainability in rural regions. This work improves decision-making processes in complicated systems with uncertain inputs by implementing fuzzy logic principles. Čubranić-Dobrodolac et al. [
26] provide a decision-making model that combines fuzzy logic with AROMAN and Fuller for the goal of professional driver selection. This study shows how the AROMAN strategy may be readily combined with other decision-making techniques to address specific problems that are unique to a certain region. Xiang et al. [
27] offer the Fuzzy AROMAN technique, which is based on linear programming. This method is intended to provide a thorough assessment of the expansion of the digital economy in rural areas. Advanced decision-making methods, including Fermatean fuzzy aggregation operators [
28] and Pythagorean fuzzy Hamacher aggregation operators [
29], are highlighted along with their applications and contributions to various fields, including the FMEA-QFD for risk assessment in distribution processes [
30]. Riaz and Farid [
31] gave the idea of soft-max aggregation operators in the context of linear Diophantine fuzzy enviroment.
The aim of this manuscript is to address the critical issue of HWM by presenting a novel MCDM approach. Specifically, it introduces the CRITIC- AROMAN within a q-rung orthopair fuzzy environment to enhance decision-making accuracy. The study evaluates the effectiveness of this methodology in selecting optimal waste treatment options, ultimately highlighting recycling as the preferred solution. The findings aim to aid decision makers in implementing more sustainable and efficient waste management practices in the healthcare sector.
Here are some main contributions of the paper:
The study introduces a novel approach by combining the CRITIC method with the AROMAN method. This integration gives decision makers a strong foundation for choosing the best treatment technology for HWM by enabling a thorough examination of criteria and alternative rankings.
By leveraging vector and linear normalization techniques within the AROMAN method, the proposed approach improves the accuracy and reliability of data used in decision-making processes.
The research findings advocate for recycling as the optimal treatment technology for HWM. This recommendation is supported by its ability to reduce waste, recover valuable resources, and mitigate environmental impact, aligning with sustainability goals and regulations.
The subsequent sections of this manuscript are organized as follows: The initial definitions are provided in
Section 2, and the q-rung orthopair fuzzy CRITIC-AROMAN approach is elaborated upon in
Section 3. The fourth section provides specifics regarding the case study, potential alternatives, and criteria. In
Section 5, the outcomes of a case study are discussed. Furthermore, relevant recommendations are presented in the concluding section of this paper, which also includes a concise summary of the research findings.
2. Some Basic Concepts
In this part, we introduce the score and accuracy functions, as well as a few key components of the q-ROFS and its operating rules.
Definition 1 ([
11]).
Let . A q-rung orthopair fuzzy set in is defined aswhere defines the membership and non-membership of the alternative , and for every ϰ, we have is called the indeterminacy degree of ϰ to . Following are the operating rules that Liu and Wang proposed to combine with the q-ROFN data.
Definition 2 ([
12]).
Let and be q-ROFN. Then,(1) ;
(2) ;
(3) ;
(4) ;
(5) ;
(6) ;
(7) .
Definition 3 ([
12]).
Consider as a q-ROFN; then, the score function M of will be given as. A q-ROFN’s rating determines its ranking; that is, a high score indicates a solid q-ROFN selection. Nevertheless, there are a few situations in which the score characteristic is useless. As such, it is crucial to not always depend on the score function while examining q-ROFNs. To tackle this difficulty, we provide an additional technique: the accuracy characteristic. Definition 4 ([
12]).
The accuracy function of is defined as follows:where . This assumes that is a q-ROFN. The strong preference of is defined by the high value of the accuracy degree . Theorem 1 ([
12]).
Let and be any two q-ROFN, be the score function of and , and be the accuracy function of and , respectively; then,(1) If , then ;
(2) If then .
The score feature has a value in the range of −1 to 1. We include all additional score features, , in order to facilitate further research. Obviously, . This new score function satisfies all the properties of a score function.
3. The q-Rung Orthopair Fuzzy CRITIC-AROMAN Method
Suppose we have a collection of n alternatives, , where n is larger than or equal to 2. A finite set of criteria is represented by R, which is written as follows: . Assume that the collection of invited DMs is represented by the following . Through the following steps, the q-rung orthopair fuzzy CRITIC-AROMAN technique may be explained.
Step 1:
Utilizing linguistic values (LVs), determine the weights of DMs expressed as q-ROFNs.
Table 1 contains the LVs. Take
as the q-ROFN for the
kth DM, represented by
. Thus, the following formula may be used to determine the potential value of the
kth DM,
:
Step 2:
With the linguistic variables (LVs) obtained from the DMs and given in
Table 2, create the linguistic decision matrix (LDM).
Step 3:
Create the evaluation matrix
by organizing the LVs’ q-ROFNs in a similar way. The matrix
should be represented with dimensions of
.
Step 4:
Take a close look at the q-ROF assessment matrix. All individual perspectives must be combined and added to create a group view when building the cumulative q-ROF decision matrix. This is necessary to support group decision making. For this purpose, we applied the weighted average operator q-ROF. Consider the aggregated q-ROF decision matrix .
Step 5:
Determine which criteria are more important than others using the CRITIC approach.
Step 5.1:
Using the SF of q-ROFNs, the score matrix should be evaluated as .
Step 5.2:
Using the provided Equation (
2), the correlation coefficient between characteristics may be calculated.
The means of the
jth and
kth qualities are shown by
and
. Using Equation (
3),
is calculated. Likewise,
yields the same result. Furthermore,
represents the correlation coefficient between the
j and
kth qualities.
Step 5.3:
The following Equation (
4) is used to estimate the standard deviation for each attribute first.
Then, the index (C) is calculated using Equation (
5).
Step 5.4:
Equation (
6) is utilized in the process of determining attribute weights.
Step 6:
Standardizing the input data is the next step after determining the criterion weights. Equations (
7) and (
8) are the two normalization methods that are used to standardize the decision matrix. The linear form of normalization is given by Equation (
7), whereas the vector form is given by Equation (
8). Step 6’s normalization techniques are used to the benefit and cost categories of criterion.
Step 7:
Equation (
9) is used to carry out the aggregated averaged normalization process.
We assigned a value of of 0.50 in this specific case. As a weighting factor, the variable has a range from 0 to 1. There are several methods for managing the information aggregation process within the discipline of MCDM. Using the centroid mean or the geometric mean is one of these choices. Because the arithmetic mean is widely accepted as the most often used measure of central tendency, that is why we choose to employ it.
Step 8:
Utilizing Equation (
10) and the weights assigned to the criterion, compute the weighted decision matrix by multiplying the aggregated, averaged, and normalized decision-making matrix.
Step 9:
Analyze the benefit type criterion
and the cost type criterion
using their normalized weighted values. Equations (
11) and
12 may be used to determine these, respectively.
Step 10:
Using the following Equation (
13), get the final ranking values
.
The coefficient degree of the criteria type is indicated by
. Including both types of criteria allowed us to conclude that the value of parameter
was 0.5.
However, by taking the particular requirement into consideration, several variations of the parameter may be produced. In the event where the decision-making issue comprises one benefit-type criterion and two cost-type criteria, should be assigned to the coefficient . This logic may be applied to determine which of the investigated solutions is preferred.
5. Decision Making and Experimental Results
There are four alternatives, given as , that are explained above, and are the criteria, which are also explained above. Three DMs are invited.
Step 1:
Determine the weights of DMs by using the LVs given in
Table 1. In
Table 3, importance of each DMs is given, which is determined using Equation (
1).
Step 2:
Construct the LDM using the LVs given in
Table 2 from the DMs. LDM is given in
Table 4.
Step 3:
Construct the assessment matrix
using corresponding q-ROFNs of LVs, given in
Table 5.
Step 4:
Evaluate the collective decision matrix using q-ROFEIWG operator, given in
Table 6.
Step 5:
Use the CRITIC method for the estimation of criteria weights.
Step 5.1:
Evaluate the score matrix using the SF of q-ROFNs as
, given in
Table 7.
Step 5.2:
The correlation coefficient between the attributes is given in
Table 8.
Step 5.3:
The standard deviation of each attribute is calculated as given in
Table 9. The index C is given in
Table 10.
Step 5.4:
The determination of attribute weights is accomplished through the use of Equation (
6), given in
Table 11.
Step 6:
Equations (
7) and (8) are employed to normalize the fuzzy decision matrix. Equation (
7) gave the linear form normalization and Equation (8) gave the vector form normalization, given in
Table 12 and
Table 13, respectively.
Step 7:
Find aggregated averaged normalization values using Equation (
9), taking the value of
as 0.50, given in
Table 14.
Step 8:
Compute the weighted decision matrix using Equation (
10), given in
Table 15.
Step 9:
Evaluate the normalized weighted values of the cost type criteria
and the benefit type criteria
. This can be calculated by applying Equations (
11) and (
12), given in
Table 16.
Step 10:
Find the final ranking values
using Equation (
13), given in
Table 17.
As per these values, ranking is .
5.1. Managerial Implications
The CRITIC-AROMAN strategy has several managerial ramifications for managers of healthcare companies that handle waste in relation to waste management. First of all, it provides a systematic way to assess various treatment technology options according to how well they meet the goals of the company, the requirements of regulatory agencies, and sustainability standards. Additionally, by highlighting the most successful treatment alternatives, it helps managers make more effective use of their financial and human resources. The third advantage is that by using the suggested technology, healthcare institutions can lower the likelihood of regulatory violations and the associated penalties. The procedure also helps to lessen the risks associated with improper waste management, which is advantageous for the environment’s and the public’s health. As a result, it promotes accountability, self-assurance, and teamwork among all stakeholders, ultimately resulting in heightened engagement and cooperation. This is achieved by instituting a clear and equitable decision-making process.
5.2. Theoretical Limitations
One of the main drawbacks of the CRITIC-AROMAN system is its reliance on predefined weights and criteria. The complex and dynamic nature of hospital waste management systems may not be sufficiently reflected by these weights and criteria. Although the technique offers a methodical approach to decision making, it could overlook some contextual factors or changing norms that could influence the technology selection. It is likely that non-linear interactions or feedback loops within the decision-making process are not adequately taken into account by the approach. Its assumption of linear relationships between the criteria is the cause of this. The simplifying of the data representation caused by the AROMAN approach’s reliance on vector and linear normalization techniques may lead to information loss or data distortion. Finally, the quality and accessibility of the data inputs may have an effect on the technique’s effectiveness; these factors may vary according on the healthcare setting and the legal country. Upon evaluation of these theoretical limitations, it is clear that ongoing validation and enhancement are necessary for the CRITIC-AROMAN approach to make it more appropriate for handling complex healthcare waste scenarios.
5.3. Comparative Analysis
A comprehensive comparative analysis was conducted to assess the efficacy of the suggested methodology in comparison to several alternative approaches. Although there were some small inconsistencies in the arrangement of possibilities, as outlined in
Table 18, a clear and consistent pattern formed with the alternatives that received the highest scores. It is crucial to recognize that the suggested approach is remarkable for its notable computing capacity, especially in assessing the level of usefulness for each option.
5.4. Sensitivity Analysis
The sensitivity analysis of choice outcomes in
Table 19 demonstrates a consistent ordering of options, denoted as
to
, as the parameter
ranges from 0.1 to 0.8. This highlights the durability and reliability of the decision-making model. The recommended order, notably, is
. An analysis of various
values on the joint generalized criterion reveals a noticeable pattern. As the value of
approaches 1, the relative relevance of the values becomes more additive. Conversely, as
approaches zero, the relative importance shifts towards being more multiplicative.