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Article

A Hybrid Multi-Criteria Decision-Making Model Combining DANP with VIKOR for Sustainable Supplier Selection in Electronics Industry

Department of Industrial Management, National Taiwan University of Science and Technology, Taipei 106335, Taiwan
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Author to whom correspondence should be addressed.
Sustainability 2023, 15(5), 4588; https://doi.org/10.3390/su15054588
Submission received: 26 January 2023 / Revised: 28 February 2023 / Accepted: 2 March 2023 / Published: 3 March 2023

Abstract

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Sustainability in operations and supply chains is becoming more popular among academics and practitioners through Sustainable Supplier Selection (SSS). In addition to balancing economic, social, and environmental factors, the awareness of the United Nations Sustainable Development Goals 2030 has affected the selection of long-term suppliers, ensuring green operations and sustainable supply chains. The criteria for SSS have multiple dimensions and are interdependent; this mimics the real-world scenario rather than assuming independently from an analytic hierarchy process. We use the multi-criteria decision-making (MCDM) model, combining DEMATEL-based on ANP (called DANP) with VIKOR, to solve the SSS problem. The DANP method is used to model and assess the interdependent relationships between criteria. Then, ranking the available alternatives and selecting the best one can be accomplished using the VIKOR method. We consider the electronic manufacturing industry in Taiwan as an empirical case. This study, in addition to selecting the best sustainable supplier, demonstrates the use of influential network relationship maps to analyze and improve the gaps in each dimension and criterion.

1. Introduction

A manufacturing or service organization’s supplier selection is a critical issue today as it impacts the products and services provided by the organization. A supplier selection process is crucial to the success of a supply chain, in terms of the quality of products and services delivered, and organizational effectiveness [1]. Supplier selection refers to the process of finding, analyzing, and contracting with suppliers [2]. Among the main goals of the supplier selection process are risk mitigation, maximization of total value for the buyer, and establishing warm and long-term relationships between suppliers and buyers [3]. Organizations rely heavily on the selection process to succeed, which consumes a considerable amount of resources. A successful business is able to lower its purchasing costs and increase competitiveness by choosing the right suppliers [4].
A growing concern for economic and environmental sustainability has become a major concern for industries around the world since the United Nations declared the Sustainable Development Goals 2030 [5]. Sustainability includes three dimensions: economic, environmental, and social. These dimensions informally are referred to as profits, planets, and people [6]. Sustainability can be amalgamated with supplier selection, a term called Sustainable Supplier Selection (SSS).
Supplier selection has traditionally been driven by the economic interests of the organization [7]. When selecting suppliers solely on the basis of profit, some crucial considerations may be overlooked, including environmental and social concerns [8]. Therefore, organizations can gain a significant competitive advantage over competitors by considering environmental, social, and economic factors in supplier selection. Furthermore, as a result of the climate change of our planet and its impacts, SSS has become more imperative than ever before.
Looking back on the past year, the environment has been full of many changes and challenges. Given a resurging pandemic, economic and trade fluctuations, port congestion, and materials shortage, a range of uncertainties have tested the adaptability and operational resilience of businesses [9]. Extreme weather effects due to climate change are also ubiquitous [10]. For the survival of humanity, all countries have accelerated their efforts to take more aggressive action while thinking about ways to live in harmony with nature. Many industries continue to focus on improving the efficiency of materials, water, and energy as well as the application of emerging carbon technologies and the development of new business opportunities and encouraging the participation of suppliers to build a resilient value chain from the inside out [11]. Among many types of industry, one which has the highest impact on sustainability is the electronics industry [12]. Air quality and temperature are affected by greenhouse gasses emitted by the electronic manufacturing industry [13]. The materials used in the manufacturing process of electronics industry, such as plastic, steel, and glass, have a great contribution to the environment. When electronic waste is improperly handled, hazardous materials that contain harmful chemicals are released into the environment and damage it as a result [14]. Some developing countries face this serious problem, resulting in environmental pollution and threatening residents’ health. Moreover, in developed countries, workers and nearby communities may face a considerable risk of injury or death when recycling discarded electronic equipment. In order to prevent irreversible pollution of the environment caused by the disposal of hazardous waste and the appropriate recycling of harmful substances, the electronic manufacturing industry needs to invest heavily in resources and management measures [15]. This is the main reason for our focus on SSS; environmentally friendly materials maintaining high quality, reasonable cost, timely fashion, and social responsibility are expected to be evaluated on the issue of sustainability.
As SSS is a kind of Multi-Criteria Decision-Making (MCDM) problem, we propose a hybrid MCDM model combining a Decision-making Trial and Evaluation Laboratory (DEMATEL) method with an Analytic Network Process (ANP) and VIseKriterijumska Optimizacija I Kompromisno Resenje (VIKOR) method in this study. The DEMATEL method has been used in many fields to understand the interrelationship among the dimensions and consider the significance of different weight dimensions or criteria. For example, a hybrid rough-fuzzy DEMATEL-TOPSIS method was proposed in supplier selection process [16]. The integration of DEMATEL and COPRAS methods has been applied to prioritize green suppliers [17]. The ANP approach is designed to make decisions based on many different criteria by assessing its weight. A suitable MCDM model by combining ANP, entropy weight, and TOPSIS was applied in the building materials supplier selection [18]. A hybrid model combining DEMATEL and ANP, which is called DEMATEL-based ANP (DANP), has been successfully implemented in the solution of a wide range of MCDM problems. Dincer et al. [19] proposed a hybrid MCDM method combining DANP and MOORA for evaluation of financial services. The VIKOR methodology can be employed to rank the available alternatives and select the most suitable supplier among them. A new MCDM model based on an extended VIKOR was proposed to select the proper healthcare device suppliers [20]. The combination of DEMATEL and VIKOR approaches was introduced by Qi et al. [21] for analyzing sustainability in the energy industry.
In this paper, we present a hybrid MCDM model to provide the ranking of sustainable suppliers and select the best one. In addition to ranking and selecting suppliers, we also offer how to increase suppliers’ performance by reducing gaps across each dimension or criterion using the VIKOR method. This can be accomplished by calculating the individual gaps and group utility values for each alternative. Moreover, this study will use the DEMATEL method to develop an influential network relationship map as not yet explored by Chang et al. [22]. The selection and evaluation of sustainable suppliers should consider ethics, health and safety, and labor conditions [23]. We will investigate the interrelationships of a set of criteria categorized according to the economic, environmental, and social dimensions in the triple bottom line framework [24]. Therefore, a hybrid MCDM model for sustainable supplier selection and improvement is illustrated using an empirical case study of the display manufacturing industry in Taiwan.
The rest of the paper is organized as follows: the second section presents the relevant literature about SSS dimensions and criteria; in Section 3, we develop a hybrid MCDM model combining DANP with VIKOR; Section 4 presents the empirical case study and highlights the managerial implications. In the Section 5, we draw a conclusion.

2. Sustainable Supplier Selection Dimensions and Criteria

To begin this study, a review of the literature identified three dimensions and fifteen critical evaluation criteria for SSS in the global display manufacturing industry. The first five criteria related to the economic dimension; the next five were associated with the environmental; and the remainder corresponded with the social dimension. In searching the prior literature, key terms were used to identify the criteria, such as “criterion for sustainable supplier selection”, “supplier selection process in the electronics industry”, and “sustainability incorporation in supplier selection”. The Google Scholar, Scopus, and Web of Science databases were used to explore the literature. We only select the latest literature; the search period ranges from 2018 to 2022. We have found and examined more than 50 papers. However, in the end, we only chose 17 journal papers that aligned with our study. Furthermore, we have analyzed the selected criteria based on the case study in the electronics industry with consideration of sustainability factors as our research focus. Green production policy, practice of sustainable future, and eco-friendly materials used are some criteria that emphasize the sustainability concern. The criterion of using smart manufacturing systems has also been raised as we are currently in the fourth industrial revolution. In addition, some aspects related to ethics, health and safety, and labor conditions were incorporated into the selection process [23]. The dimensions and evaluation criteria, together with the definitions identified for SSS in the global display manufacturing industry, are listed in Table 1.
Selecting sustainable suppliers under the economic dimension (D1) is of the utmost importance since these criteria examine how the supplier’s activities affect the local economy [39]. Within the economic dimension, we have identified five criteria: quality of component; delivery time; price of component; technical capability and manufacturing capability. Prior published studies suggest that quality of component (C1) can be measured by conforming to relevant standards, specifications, and requirements [25]. Jain and Singh [26] found that the on-time delivery (C2) of the products by suppliers is crucial for industry. The price of a component (C3) is typically determined by the amount of money that represents the value of the components [27]. Clean and green technology (C4) utilized in production and recycling products can increase product quality and reduce production waste [28]. In mass customization, technology and production capability (C5) are used to solve the problem of supplier selection [29].
The environmental dimension (D2) of this study consists of five criteria, namely, environmental and energy management system; green manufacturing policy; practice of sustainable future; compliance of material used; and recycling product and process. Environmental performance improvements and competitiveness can be achieved by implementing a functional environmental and energy management system (C6) and conducting regular audits [30]. The green production process (C7) encourages suppliers to promote sustainable development by ensuring their products meet environmental protection guidelines [16]. There are many incentives provided to the supplier when they implement the latest environment-friendly technologies (C8) to encourage them to adopt sustainable practices [31]. Rani et al. [32] determined the level of sustainable materials (C9) utilized in the production processes as a benefit type of criteria. Stevic et al. [33] defined recycling criteria as the reuse of materials and products (C10) in line with the effort of reducing waste.
Selecting sustainable suppliers is highly dependent on the social dimension (D3) as it pertains to sustainable supply chains [40]. In this study, we have classified five criteria within the social dimension: supplier social responsibility; employee welfare and growth; organizational culture development; regulation compliance, and occupational health and safety. Supplier social responsibility (C11) refers to the extent of their community engagement for stakeholder and shareholder benefit and the extent to which they contribute to sustainability [34]. In order to improve levels of employee welfare and development (C12), the supplier has to conduct staff training to increase the knowledge and skills of employees [35]. Organizational culture development (C13) entails embracing new methods and technologies for sustainable management while promoting a culture of innovation [36]. In order to achieve sustainability objectives, suppliers must comply with policies and regulations (C14) adopted by the industrial sector and other regulatory agencies [37]. Implementing measures to protect employees at work and minimize accidents (C15) can facilitate SSS [38].
We consider Corporation U as one of the largest Taiwanese companies that has been dedicated to the development of display manufacturing for electronic products since 1996. Corporation U offers display panel products; in particular, it specializes in optoelectronic solutions for smart retail, smart medical, smart transportation, smart education, and entertainment. As the world faces severe climate issues, Corporation U has made comprehensive arrangements in all respects, and set positive goals to drive themselves as they commit to zero carbon emissions in their global offices by 2030 and full use of renewable energy by 2050. At the same time, they also assist in the industry energy transformation with their energy business to contribute to world climate action. Corporation U provides sustainable products that are beneficial to raw materials recycling, re-use, and energy saving. Working together with the supplier, this corporation launched the world’s first environmentally friendly laptop using recycled materials. In terms of waste reduction, Corporation U adopted a box-sharing approach in cooperation with suppliers to cut down on the generation of waste plastic packaging materials. We denote three dimensions and 15 criteria to form a hierarchy for SSS as shown in Figure 1. In this study, we compare suppliers’ performance and apply methods to reduce the remaining gaps to achieve the aspiration levels by improving the performance of the relevant dimensions and criteria.

3. A Hybrid MCDM Model

A hybrid MCDM model includes both DEMATEL and ANP concepts to determine the DANP influence weights and the VIKOR method to assess the performance gaps in each criterion and dimension. Based on the DEMATEL technique, the SSS criteria were derived from their degree of influence with the scale ranging from 0 (no influence) to 4 (very high influence) and applied to the formation of the ANP supermatrix (unweighted and weighted supermatrices). In addition to handling inner dependencies within dimensions, the ANP also handles outer dependencies between dimensions. A hybrid MCDM model using the DANP method has been widely utilized in many fields to determine the influence weights, such as measurement of corporate sustainability indicators [41], green building rating systems [42], and financial service innovation strategies [43]. Ranking and improving the overall performance gap among the criteria and dimensions using the VIKOR method can be found in [44,45].
As depicted in Figure 2, a hybrid MCDM model includes three stages: (1) deriving the total influence matrix and building the Influential Network Relation Map (INRM) between criteria by the DEMATEL technique; (2) computing each criterion’s influential weights by applying the ANP concept; and (3) ranking and improving the dimensions or criteria prioritization using the VIKOR method for reducing the remaining gaps to achieve the level of aspiration, which refers to the best performance score. The gap between criteria or dimensions is assessed by calculating the individual gaps and group utility values for each alternative. The individual gaps value represents the difference between the performance of an alternative and the best performance among all alternatives for a particular criterion. On the other hand, the group utility value represents the difference between the performance of an alternative and the ideal solution that minimizes the overall deviation from the best performance for all criteria.

3.1. Stage I

There are three steps involved in DEMATEL and INRM:
Step 1: Calculate the scores of the direct-influence matrix A. A mutual influence relationship between each criterion is assessed based on expert opinions in the Taiwanese electronics industry who are familiar with SSS. A criteria questionnaire is made with the scale range from 0 to 4, which represents 0: absolutely no influence, 1: low influence, 2: medium influence, 3: high influence, and 4: very high influence. Expertise opinions are required as the input of the direct-influence matrix by a pairwise comparison. A notation of aij means that criterion i has an influence on criterion j. Then, average matrix A = [aij]n×n of mutual influence relationships can be generated as Equation (1). The numbers in matrix A can be obtained by taking the average value from all of the expertise inputs:
A = a 11 a 1 j a 1 n a i 1 a i j a i n a n 1 a n j a n n .
Step 2: Calculate the normalized direct-influence matrix X. The derivation of normalized direct-influence matrix X is shown as Equation (2).
X = z × A,
where z = min i , j 1 max i j = 1 n a i j ,   1 max j i = 1 n a i j , i, j ∈ {1, 2, …, n}.
The diagonal value of this matrix is zero. The maximum adds values of each row or column is one.
Step 3: Obtain the total-influence matrix T. There are two types of total-influence matrix, TC and TD, which refer to criteria and dimensions, respectively. It is possible to determine the continuous decrease in indirect effects of problems through the use of powers of X, e.g., X2, X3, …, Xh, where X = [xij]n×n, 0 ≤ xij ≤ 1, 0 i x i j 1 , 0 j x i j 1 , and at least one row or column of summation equals one, but not every row or column; then, we can guarantee that lim h 0 X h = [ 0 ] n × n . Thus, the total-influence matrix T is obtained by Equation (3).
T = X + X 2 + + X h = X ( I X ) 1 ,   when   lim h 0 X h = [ 0 ] n × n ,
where I indicates the unit matrix.
The sum of the rows and columns of the total-influence matrix T are in separate expression as vector r in Equation (4) and s in Equation (5), respectively.
r = r i n x 1 = j = 1 n t D i j n x 1 ,     i ,   j     { 1 ,   2 ,   ,   n } ,
and
s = s j n x 1 = i = 1 n t D i j 1 x n ,     i ,   j     { 1 ,   2 ,   ,   n } ,
where the prime (′) indicates the transpose. Additionally, ri represents the sum of influences given on criteria i and sj represents the sum of influences received from criteria j. Moreover, the summation (ri + si) represents the level of criteria i which has role in the problem, and the difference (risi) represents the net contribution of criteria i to the problem. In cases where the difference is positive, it means criteria i affects other criteria. Otherwise, criteria i is affected by other criteria. These results are then utilized to build the INRM, which can give insights for improvement.

3.2. Stage II

There are five steps to describe DANP influential weights:
Step 1: Calculate the normalized matrix T c α by dimensions. First, we have to normalize the total-influence matrix TC by dimensions. This means normalizing each element of the criteria within its dimension. Then, we can obtain a new normalized matrix T c α as shown in Equation (6).
Sustainability 15 04588 i001
The explanation for normalization T c α 11 is as follows.
T c α 11 = t c 11 11 / d c 1 11 t c 1 j 11 / d c 1 11 t c 1 m 1 11 / d c 1 11 t c i 1 11 / d c i 11 t c i j 11 / d c i 11 t c i m 1 11 / d c i 11 t c m 1 1 11 / d c m 1 11 t c m 1 j 11 / d c m 1 11 t c m 1 m 1 11 / d c m 1 11 = t c 11 α 11 t c 1 j α 11 t c 1 m 1 α 11 t c i 1 α 11 t c i j α 11 t c i m 1 α 11 t c m 1 1 α 11 t c m 1 j α 11 t c m 1 m 1 α 11 ,
where d c i 11 = j = 1 m 1 t c i j 11 , i = 1, 2,…, m1.
Step 2: Calculate the unweighted supermatrix W. Conduct the transpose operator of the normalized matrix T c α , that is W = ( T c α ) , and is given by
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As a result, W11, Wn1, W1n, and Wnn in the above formula are the same value as T c α 11 , T c α n 1 , T c α 1 n , and T c α n n in Equation (6), respectively.
Step 3: Calculate the normalized supermatrix T D α by dimensions. The total-influence matrix TD is shown as follows.
T D = t D 11 t D 1 j t D 1 n t D i 1 t D i j t D i n t D n 1 t D n j t D n n
where t D i j is the element of normalized dimension in row i and column j.
For normalization purposes, conduct summations for each column of the total-influence matrix TD. Thus, we can derive a new normalized matrix T D α , as shown in Equation (7).
T D α = t D 11 / d 1 t D 1 j / d 1 t D 1 n / d 1 t D i 1 / d i t D i j / d i t D i n / d i t D n 1 / d n t D n j / d n t D n n / d n = t D α 11 t D α 1 j t D α 1 n t D α i 1 t D α i j t D α i n t D α n 1 t D α n j t D α n n
where t D α i j = t D i j / d i and d i = j = 1 n t D i j .
Step 4: Obtain the weighted supermatrix Wα, as derived by Equation (8).
W α = T D α W = t D α 11 × W 11 t D α i 1 × W i 1 t D α n 1 × W n 1 t D α 1 j × W 1 j t D α i j × W i j t D α n j × W n j t D α 1 n × W 1 n t D α i n × W i n t D α n n × W n n .
Step 5: Take a limit to the weighted supermatrix Wα. To obtain the DANP influential weights as global vector weights, raise the weighted supermatrix to a sufficiently large power k until the supermatrix has converged on a long-term stable supermatrix. In other words, we let lim g ( W α ) g , where g indicates a large amount of power.

3.3. Stage III

The VIKOR method procedure starts with the form of the L k P metric as shown in Equation (9).
L k p = j = 1 n [ w j ( f j * f k j ) / ( f j * f j ) ] p 1 / p ,
where wj is the DANP influential weight of the jth criterion, f j * is the best level of aspiration, fkj is the performance scores of the kth alternative and jth criterion, f j is the worst level of tolerable, n is the number of criteria, and the range value of p is 1 ≤ p ≤ ∞. There are two measures to formulate the ranking and gap used by VIKOR: L k p = 1 (as Sk) and L k p = (as Qk). Equation (10) shows the derivation of Sk, which is used for minimal average gap, and Equation (11) shows the derivation of Qk, which is used for priority improvement.
S k = L k p = 1 = j = 1 n [ w j ( | f j * f k j | ) / ( | f j * f j | ) ] ,
and
Q k = L k p = = m a x j ( | f j * f k j | ) / ( | f j * f j | ) j = 1 , 2 , , n .
It is shown in the compromise solution min k L k p that the objective function is to minimize the synthesized gap, which will then improve its gap values for every criterion and dimension to get closest to the aspiration level. In addition, with regards to INRM, when the value of p is small (say p = 1), then the group utility is emphasized. Contrarily, if the value of p increases and goes to infinity, then every dimension or criterion’s maximal gaps are given a greater priority for improvement. Therefore, mink Sk emphasizes the maximum group utility; nevertheless, mink Qk emphasizes choosing the minimum value from the maximum number of individual gaps for prioritizing improvement.
There are four steps involved in VIKOR method:
Step 1: Find the level of aspiration and tolerability. We do a calculation to obtain the level of aspiration (indicated as the best f j * values) and the level of tolerability (indicated as the worst f j values) for every criterion function, j = 1, 2, …, n. In the traditional way, it assumes that the jth function represents benefits: f j * = max k f k j and f j = min k f k j . In this study, we use performance scores with a scale range from 1 to 9 (where 1 indicates the worst to 9 indicates the best) in the performance questionnaire, in conjunction with the aspiration level. Thus, we plug the aspiration level with f j * = 9 and f j = 1 as the best and worst value, respectively. Furthermore, a normalized weight rating matrix can transform the original rating matrix by using Equation (12):
r k j = ( f j * f k j ) / ( f j * f j ) .
Step 2: Compute the mean group utility and maximal gap. Calculate the values by S k = j = 1 n w j r k j , which refers to the synthesized gap for all criteria, and Q k = max j r k j j = 1 , 2 , , n , which refers to the maximal gap in criterion k for priority improvement.
Step 3: Compute the index value. We calculate the index value by using Equation (13).
R k = v ( S k S * ) / ( S S * ) + ( 1 v ) ( Q k Q * ) / ( Q Q * ) , k = 1 , 2 , , m ,
where S* = mini Si (in case of S* = 0 means all criteria have achieved the level of aspiration); S = maxi Si (in case of S = 1 means the worst case); Q* = mini Qi (can be set as Q* = 0); Q = maxi Qi (can be set as Q = 1); and v refers to the strategy weight of the maximum group utility. Contrarily, 1 − v refers to the average gap weight. In case of S* = 0, S = 1, Q* = 0, and Q = 1, then Equation (13) can be rewritten in the simple form shown in Equation (14).
Rk = vSk + (1 − v)Qk.
Step 4: Compose a compromise solution by ranking or improving the alternatives. Sort the values of Sk, Qk, and Rk in decreasing order. Thus, we can propose a compromise solution for all alternatives by using the order of Rk. By using the VIKOR ranking method, we can determine the compromise solution, and it can be tailored to fit decision-makers’ needs since it offers maximum group utility for the majority (shown by minimum S) and maximum regret for the opponents (shown by minimum Q).

4. Results and Discussions

In the process of promoting sustainability, Corporation U has tried to connect many partners together, sharing the same concepts to strengthen their operational profiles by coaching suppliers. Corporation U divides seven categories of suppliers into two tiers according to the procurement categories. The first tier includes process outsourcers, waste subcontractors, equipment and parts suppliers, manpower outsourcers, service outsourcers, and transportation categories. The second tier includes raw material suppliers. In this study, we focus on the equipment and parts suppliers that have three alternatives, namely, S1, S2, and S3, who supply the equipment and parts to Corporation U. Utilizing the hybrid MCDM model, which incorporates DANP with VIKOR, we evaluated these suppliers and selected the best one. There are only five specific experts with broad experience in the SSS for equipment and parts at Corporation U. Four out of five experts are senior engineers with 5 to 10 years of working experience, and the last expert is the assistant manager with more than 10 years of working experience. They were asked to provide their feedback in a questionnaire form for the supplier evaluation purpose. There are six parts in the questionnaire to be filled in by the experts: (1) introduction; (2) description of dimension and criteria; (3) method for filling out; (4) criteria questionnaire; (5) performance questionnaire; and (6) basic personal data.
As part of the DEMATEL decision-making process, we assessed fifteen criteria across three dimensions and considered mutual relationship impacts as well. These fifteen criteria have been examined and analyzed through the rigorous literature review process. The selected criteria to pick the best sustainable supplier at Corporation U are shown in Table 1. The experts were asked through a criteria questionnaire to identify whether the relationships across dimensions and criteria had an influential effect. We evaluated the performance of each supplier based on the opinions of five experienced experts in a performance questionnaire with a scale of 1 (very poor performance) to 9 (the best performance). Then, we calculated the average performance scores of each supplier and applied the VIKOR method to achieve the performance and aspired level gaps of alternative suppliers. Table 2 shows the averaged initial direct-relationship matrix. This result was derived by comparing the influences and directions between criteria in pairwise comparisons. We use Equations (1) and (2) to calculate the normalized direct-influence matrix as shown in Table 3. The total influence matrix for criteria (Table 4) and dimensions (Table 5) were derived using Equation (3). The result in Table 5 was obtained from the total influence matrix for criteria as shown in Table 4, that classified five criteria within a dimension. The total direct-influence matrix, as shown in Table 6, results in vectors r and s, which can be calculated using Equations (4) and (5). The highest positive difference (risi) means that dimension i or criterion i affects other dimension or criteria. For instance, Table 5 shows that the highest positive difference (risi) lies on the economic (D1) dimension with the value of 0.122, indicating that this dimension affects other dimensions. The same analysis for Table 6, which shows the highest positive difference (risi) lies on the manufacturing capability (C5) with the value of 1.041, indicates that this criterion affects other criteria in the scope of economic (D1) dimension. Then, the INRM within dimensions and fifteen criteria of three dimensions were constructed as depicted in Figure 3 and Figure 4, respectively.
In order to solve the SSS problem, we combined the DEMATEL method with the ANP method. This combination was used to obtain the normalized matrix as shown in Table 7. Based on the construction of influence-unweighted supermatrix (see Table 8), we found dynamic relationships by evaluating the SSS criteria of Corporation U according to the DEMATEL process. The process of weighting the unweighted supermatrix is based on the total-influence normalized matrix. The result of a weighted supermatrix based on the extent of the impact of various criteria is shown in Table 9. By calculating the limiting power of the weighted supermatrix, it confirms that the supermatrix has been converged and becomes a long-term stable supermatrix (see Table 10), which reached a steady-state condition. Table 11 shows the global and local weights of all criteria and their ranks. In addition, the performance and gap of aspired level have also been presented in Table 11 as the result of the performance questionnaire and DANP local weight. We found that the priority in global weight of the first dimension is environmental (D2), followed by social (D3) and economic (D1). This attractive result aligns with major concerns for industries around the world. As sustainability issues have grown, the economic factor has no longer to be the top priority of daily operations and supply chains; environmental and social factors come first instead. Furthermore, we extended the analysis of local weights to provide a priority of criteria in each dimension. The green manufacturing policy (C7) is the first priority criteria in the environmental (D2) dimension. Supplier’s efforts to reduce pollution and undergo green transformation are important to achieve sustainability goals. By evaluating all these local and global weights, we are able to select the best alternatives using the VIKOR method.
In this study, more relevant results are provided by using our proposed hybrid MCDM model. Performance of equipment and part suppliers can be assessed by analyzing the interdependence and feedback relationship between SSS dimensions and criteria. Additionally, the results can be used to determine where improvement gaps exist based on the aspired level criteria. The following are some of our findings:
  • Based on the INRM, as depicted in Figure 3 from the DEMATEL model, we can easily understand that three dimensions are influenced by each other: economic (D1) influences environmental (D2) and social (D3); environmental (D2) influences social (D3). The influence of these relationships will assist managers in making better decisions. In order to enhance the environmental and social dimension, managers may suggest their suppliers focus on the economic dimension prior. Moreover, managers can use the INRM of D1 as shown in Figure 4a to recommend their suppliers utilize smart manufacturing systems (C5) to produce equipment and parts and improve operations, which leads to economic growth;
  • According to the results of DANP with VIKOR, as shown in Table 11, we found that the total performance of suppliers S1, S2, and S3 were 9328, 8883, and 9802, respectively; that is, we can treat supplier S3 as the best sustainable supplier to provide the electronic equipment and parts. Specifically, we found that supplier S3 has an outstanding performance on the environmental (D2) with 8.260 score. The difference score of supplier S3 on that dimension is bigger compared to other two suppliers. In addition, suppliers S1 and S2 can perform benchmarking for supplier S3 such that it would have better green operation and supply chain performance related with the environmental issues that Corporation U focuses on. Supplier S3 has a great environmental responsibility to ensure a sustainable use of resources; that is, the use of renewable energy sources through intelligent energy management systems;
  • The only goal of traditional SSS approaches is selection of the best supplier. By using our hybrid MCDM model, we can rank and select the best sustainable supplier in addition to analyzing the gaps between their actual performance and the aspired performance level. For instance, currently, supplier S3 is the best supplier of electronic equipment and parts. However, the gap of its aspired level is 107. In an attempt to minimize the gap of its aspired level, we propose an improvement suggestion for supplier S3, namely, reducing the price of equipment and parts to address the largest gap of its aspired level (C3); supplier S3 should focus on improving their manufacturing capability (C5) as it influences the production cost and reduces the gaps of aspired level. Supplier S3 can apply smart manufacturing systems and use network technology to link their production with customers. Thus, it can cut down costs and any other production waste, which leads to the lower price of equipment and parts.

5. Conclusions

Sustainable supplier selection to promote sustainability in operations and supply chains has been a popular topic in recent years. The decision of SSS is a complicated process since it involves multiple dimensions and various interdependent criteria. In this study, we investigated the dimensions under triple bottom line framework and criteria that align for the electronics industry. In particular, sustainability issues have been raised to select the specific criteria, such as green manufacturing policy, the practice of sustainable future, and compliance of material used. A hybrid MCDM model using DANP and VIKOR was evaluated in an empirical case study. DANP can be used in the real world to overcome the problems of interdependency and feedback among dimensions and criteria. In combination with VIKOR’s calculations based on DANP’s global and local influential weights, managers can take decisions aimed at integrating performance and reducing gaps to aspiration levels. We do not only rank and select the best sustainable supplier, but also explain how to increase the suppliers’ performance by reducing gaps across each dimension or criterion. By evaluating the largest gap to its aspired level, we can propose some improvements to minimize that gap. The presence of INRM also adds to the contribution of this study by showing the influence of relationships, which leads to valid decision-making. The INRM can help to analyze the relationship of criteria among each dimension; that is, which criteria influence other criteria that need to be improved. This study can thus contribute to enhancing and increasing resource utilization efficiency as well as achieving triple bottom line objectives for any industry.
A limitation of this study is the fact that the survey was conducted solely based on one category rather than being a comprehensive industrial survey. However, the hybrid MCDM model used on that category can also be applied to other categories and even for the second tier as the company continues to expand the risk assessment and management of tier 2 suppliers. After conducting a literature review, 15 criteria were identified in this study, though not all were included. An in-depth investigation could be carried out in the future to add more relevant criteria to similar studies. The object of the empirical case is only the electronics industry. By utilizing the proposed SSS framework, other relevant industries can also be examined. Future research may investigate using a dominance-based rough set approach or another new approach with the aim of reducing the gaps to the aspired level for optimal or suitable areas.

Author Contributions

Conceptualization, B.R. and F.-K.W.; methodology, B.R. and F.-K.W.; software, B.R.; validation, B.R., F.-K.W. and S.-C.L.; formal analysis, B.R., F.-K.W. and S.-C.L.; investigation, B.R., F.-K.W., S.-C.L. and J.-H.C.; resources, F.-K.W. and J.-H.C.; data curation, J.-H.C.; writing—original draft preparation, B.R., F.-K.W. and S.-C.L.; writing—review and editing, B.R., F.-K.W. and S.-C.L.; visualization, B.R., F.-K.W. and S.-C.L.; supervision, F.-K.W.; project administration, F.-K.W. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. The hierarchy of sustainable supplier selection in electronics industry.
Figure 1. The hierarchy of sustainable supplier selection in electronics industry.
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Figure 2. Proposed hybrid MCDM model combining DANP and VIKOR.
Figure 2. Proposed hybrid MCDM model combining DANP and VIKOR.
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Figure 3. The INRM within dimensions.
Figure 3. The INRM within dimensions.
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Figure 4. The INRM of 15 criteria within (a) economic; (b) environmental; and (c) social dimension.
Figure 4. The INRM of 15 criteria within (a) economic; (b) environmental; and (c) social dimension.
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Table 1. The influence dimensions and criteria of comprehensive sustainable supplier selection in the electronics industry.
Table 1. The influence dimensions and criteria of comprehensive sustainable supplier selection in the electronics industry.
DimensionCriteriaDefinitionReference
Economic (D1)Quality of component (C1)Performance of components to meet the production requirements.Orji and Ojadi [25]
Delivery time (C2)Timeframe by which the supplier must deliver its components.Jain and Singh [26]
Price of component (C3)Value of components as expressed in money.Fallahpour et al. [27]
Technical capability (C4)Have proper technology to stabilize component quality and decrease waste in manufacturing.Alavi et al. [28]
Manufacturing capability (C5)Use smart manufacturing systems to produce components and improve operations.Suraraksa and Shin [29]
Environmental
(D2)
Environmental and energy management system (C6)Implementation of ISO 14001 and 50001 standards in all business segments within the company.Durmic [30]
Green manufacturing policy (C7)Efforts made by the supplier to reduce pollution (carbon emissions) and improve green production.Chen et al. [16]
Practice of sustainable future (C8)The potential of suppliers to apply clean technologies and innovate newer clean technologies, processes, techniques, and methodologies.Khan and Ali [31]
Compliance of material used (C9)The amount of eco-friendly (non-harmful) materials used in production and packaging.Rani et al. [32]
Recycling product and process (C10)Reduce waste by reusing materials and products.Stevic et al. [33]
Social (D3)Supplier social responsibility (C11)Community engagement and volunteer works.Khan et al. [34]
Employee welfare and growth (C12)The process of making employees more knowledgeable and skilled in a particular area of employment.Ecer and Pamucar [35]
Organizational culture development (C13)Create a conducive organizational culture for their employees to apply sustainability concepts.Kusi-Sarpong et al. [36]
Regulation compliance (C14)The suppliers adhere to local laws and regulations, observe their legal obligations, and work towards improving morals in the public sphere.Hoseini et al. [37]
Occupational health and safety (C15)Implementation of measures concerning the protection of health and life of employees.Kannan et al. [38]
Table 2. The initial influence matrix for criteria.
Table 2. The initial influence matrix for criteria.
CriteriaC1C2C3C4C5C6C7C8C9C10C11C12C13C14C15Sum
C10.01.43.02.43.22.21.21.42.21.61.22.41.21.61.026.0
C22.40.01.02.02.81.00.60.80.81.20.81.41.20.40.416.8
C33.00.40.02.63.01.81.81.42.63.00.41.01.41.00.624.0
C42.21.42.40.03.02.42.63.02.03.21.22.21.82.00.830.2
C53.02.02.43.60.02.02.22.82.02.41.22.62.22.41.632.4
C62.01.21.22.42.40.01.82.22.22.61.02.42.83.01.628.8
C71.60.81.83.02.21.80.03.63.63.61.82.02.82.41.432.4
C82.20.42.22.82.42.23.60.03.43.41.61.42.62.42.032.6
C92.00.21.42.21.42.43.22.80.02.61.62.02.83.01.028.6
C101.61.22.23.22.22.43.23.02.60.01.81.02.62.21.030.2
C111.40.20.20.40.00.21.41.40.60.80.01.42.43.03.016.4
C122.01.80.60.81.01.01.81.61.20.82.20.02.82.83.423.8
C130.61.60.40.41.21.82.62.41.61.82.62.80.02.83.225.8
C142.01.20.40.81.22.02.42.61.61.83.02.43.20.03.227.8
C151.20.80.60.81.21.21.40.81.61.22.62.63.02.80.021.8
Sum27.214.619.827.427.224.429.829.828.030.023.027.632.831.824.232.8
Table 3. The normalized direct-influence matrix for criteria.
Table 3. The normalized direct-influence matrix for criteria.
CriteriaC1C2C3C4C5C6C7C8C9C10C11C12C13C14C15
C10.0000.0430.0910.0730.0980.0670.0370.0430.0670.0490.0370.0730.0370.0490.030
C20.0730.0000.0300.0610.0850.0300.0180.0240.0240.0370.0240.0430.0370.0120.012
C30.0910.0120.0000.0790.0910.0550.0550.0430.0790.0910.0120.0300.0430.0300.018
C40.0670.0430.0730.0000.0910.0730.0790.0910.0610.0980.0370.0670.0550.0610.024
C50.0910.0610.0730.1100.0000.0610.0670.0850.0610.0730.0370.0790.0670.0730.049
C60.0610.0370.0370.0730.0730.0000.0550.0670.0670.0790.0300.0730.0850.0910.049
C70.0490.0240.0550.0910.0670.0550.0000.1100.1100.1100.0550.0610.0850.0730.043
C80.0670.0120.0670.0850.0730.0670.1100.0000.1040.1040.0490.0430.0790.0730.061
C90.0610.0060.0430.0670.0430.0730.0980.0850.0000.0790.0490.0610.0850.0910.030
C100.0490.0370.0670.0980.0670.0730.0980.0910.0790.0000.0550.0300.0790.0670.030
C110.0430.0060.0060.0120.0000.0060.0430.0430.0180.0240.0000.0430.0730.0910.091
C120.0610.0550.0180.0240.0300.0300.0550.0490.0370.0240.0670.0000.0850.0850.104
C130.0180.0490.0120.0120.0370.0550.0790.0730.0490.0550.0790.0850.0000.0850.098
C140.0610.0370.0120.0240.0370.0610.0730.0790.0490.0550.0910.0730.0980.0000.098
C150.0370.0240.0180.0240.0370.0370.0430.0240.0490.0370.0790.0790.0910.0850.000
Table 4. The total influence matrix for criteria.
Table 4. The total influence matrix for criteria.
CriteriaC1C2C3C4C5C6C7C8C9C10C11C12C13C14C15ri
C10.2530.1840.2770.3270.3420.2990.3240.3300.3310.3320.2580.3300.3440.3480.2644.544
C20.2350.0970.1590.2290.2480.1860.2080.2140.2000.2220.1700.2140.2370.2110.1672.998
C30.3280.1520.1920.3290.3320.2850.3350.3250.3380.3640.2280.2840.3400.3230.2424.396
C40.3580.2090.2960.3060.3810.3480.4160.4270.3770.4280.2990.3700.4170.4130.3015.346
C50.3930.2340.3050.4170.3110.3500.4190.4350.3890.4200.3130.3960.4440.4400.3375.604
C60.3330.1950.2460.3500.3440.2630.3740.3850.3600.3880.2830.3600.4250.4220.3125.041
C70.3580.2010.2920.4070.3750.3510.3690.4670.4400.4610.3370.3850.4710.4510.3395.704
C80.3770.1920.3050.4050.3850.3640.4700.3710.4390.4590.3340.3730.4690.4550.3565.756
C90.3330.1660.2530.3480.3190.3340.4170.4060.3030.3940.3020.3510.4290.4270.2995.080
C100.3400.2010.2880.3930.3580.3480.4330.4280.3930.3400.3170.3380.4390.4200.3075.342
C110.1880.0940.1170.1600.1490.1500.2180.2160.1810.1940.1470.2050.2640.2750.2402.796
C120.2690.1750.1770.2370.2410.2310.2990.2920.2640.2650.2650.2300.3510.3450.3093.950
C130.2530.1810.1870.2500.2660.2730.3480.3420.3000.3180.2960.3300.3020.3730.3254.346
C140.3080.1810.2020.2790.2850.2950.3640.3670.3190.3380.3230.3390.4130.3170.3424.671
C150.2320.1390.1640.2200.2280.2210.2720.2550.2570.2580.2620.2870.3380.3280.2013.662
si4.5582.6033.4594.6594.5634.2975.2655.2594.8925.1814.1344.7945.6835.5484.341
Table 5. The total influence matrix and influences given or received for dimensions.
Table 5. The total influence matrix and influences given or received for dimensions.
DimensionD1D2D3risiri + sirisi
Economic (D1)0.2760.3320.3080.9160.7941.7090.122
Environmental (D2)0.3110.3900.3761.0770.9962.0730.081
Social (D3)0.2070.2730.2960.7770.9801.757−0.203
Table 6. The total direct-influence matrix on criteria.
Table 6. The total direct-influence matrix on criteria.
Criteriarisiri + sirisi
Quality of component (C1)4.5444.5589.103−0.014
Delivery time (C2)2.9982.6035.6010.396
Price of component (C3)4.3963.4597.8560.937
Technical capability (C4)5.3464.65910.0050.687
Manufacturing capability (C5)5.6044.56310.1671.041
Environmental and energy management system (C6)5.0414.2979.3390.744
Green manufacturing policy (C7)5.7045.26510.9700.439
Practice of sustainable future (C8)5.7565.25911.0150.496
Compliance of material used (C9)5.0804.8929.9720.188
Recycling product and process (C10)5.3425.18110.5240.161
Supplier social responsibility (C11)2.7964.1346.930−1.338
Employee welfare and growth (C12)3.9504.7948.743−0.844
Organizational culture development (C13)4.3465.68310.029−1.337
Regulation compliance (C14)4.6715.54810.220−0.877
Occupational health and safety (C15)3.6624.3418.003−0.679
Table 7. The new matrix obtained by normalizing matrix in criteria.
Table 7. The new matrix obtained by normalizing matrix in criteria.
CriteriaC1C2C3C4C5C6C7C8C9C10C11C12C13C14C15
C10.1830.1330.2000.2360.2470.1850.2000.2040.2050.2050.1670.2140.2230.2250.171
C20.2430.1000.1650.2370.2560.1810.2010.2080.1940.2160.1700.2150.2370.2110.167
C30.2460.1140.1440.2470.2490.1730.2030.1970.2050.2210.1610.2000.2400.2280.171
C40.2310.1350.1910.1980.2460.1740.2080.2140.1890.2140.1660.2050.2320.2300.167
C50.2370.1410.1840.2510.1880.1740.2080.2160.1930.2090.1620.2050.2300.2280.174
C60.2270.1330.1670.2390.2340.1480.2110.2170.2030.2190.1570.2000.2360.2340.173
C70.2190.1230.1790.2490.2300.1680.1770.2240.2110.2210.1700.1940.2370.2280.171
C80.2260.1160.1830.2440.2310.1730.2240.1760.2090.2180.1680.1880.2360.2290.179
C90.2350.1170.1780.2450.2250.1800.2250.2190.1640.2130.1670.1940.2370.2360.165
C100.2150.1270.1820.2490.2270.1790.2230.2200.2020.1750.1740.1860.2410.2310.169
C110.2660.1330.1650.2260.2100.1560.2270.2250.1890.2020.1300.1810.2330.2430.212
C120.2450.1600.1610.2160.2190.1710.2210.2170.1950.1960.1770.1540.2340.2300.206
C130.2230.1590.1640.2200.2340.1720.2200.2160.1900.2010.1820.2030.1860.2290.200
C140.2450.1440.1610.2230.2270.1750.2160.2180.1900.2010.1860.1960.2380.1830.197
C150.2360.1420.1660.2240.2320.1750.2150.2020.2040.2040.1850.2030.2390.2310.142
Table 8. The unweighted supermatrix.
Table 8. The unweighted supermatrix.
CriteriaC1C2C3C4C5C6C7C8C9C10C11C12C13C14C15
C10.1830.2430.2460.2310.2370.2270.2190.2260.2350.2150.2660.2450.2230.2450.236
C20.1330.1000.1140.1350.1410.1330.1230.1160.1170.1270.1330.1600.1590.1440.142
C30.2000.1650.1440.1910.1840.1670.1790.1830.1780.1820.1650.1610.1640.1610.166
C40.2360.2370.2470.1980.2510.2390.2490.2440.2450.2490.2260.2160.2200.2230.224
C50.2470.2560.2490.2460.1880.2340.2300.2310.2250.2270.2100.2190.2340.2270.232
C60.1850.1810.1730.1740.1740.1480.1680.1730.1800.1790.1560.1710.1720.1750.175
C70.2000.2010.2030.2080.2080.2110.1770.2240.2250.2230.2270.2210.2200.2160.215
C80.2040.2080.1970.2140.2160.2170.2240.1760.2190.2200.2250.2170.2160.2180.202
C90.2050.1940.2050.1890.1930.2030.2110.2090.1640.2020.1890.1950.1900.1900.204
C100.2050.2160.2210.2140.2090.2190.2210.2180.2130.1750.2020.1960.2010.2010.204
C110.1670.1700.1610.1660.1620.1570.1700.1680.1670.1740.1300.1770.1820.1860.185
C120.2140.2150.2000.2050.2050.2000.1940.1880.1940.1860.1810.1540.2030.1960.203
C130.2230.2370.2400.2320.2300.2360.2370.2360.2370.2410.2330.2340.1860.2380.239
C140.2250.2110.2280.2300.2280.2340.2280.2290.2360.2310.2430.2300.2290.1830.231
C150.1710.1670.1710.1670.1740.1730.1710.1790.1650.1690.2120.2060.2000.1970.142
Table 9. The weighted supermatrix.
Table 9. The weighted supermatrix.
CriteriaC1C2C3C4C5C6C7C8C9C10C11C12C13C14C15
C10.0550.0730.0740.0700.0710.0650.0630.0650.0680.0620.0710.0650.0590.0650.063
C20.0400.0300.0340.0410.0420.0380.0360.0330.0340.0370.0350.0430.0420.0380.038
C30.0600.0500.0430.0570.0550.0480.0510.0530.0510.0530.0440.0430.0440.0430.044
C40.0710.0710.0740.0600.0760.0690.0720.0700.0710.0720.0600.0580.0590.0590.060
C50.0750.0770.0750.0740.0570.0680.0660.0670.0650.0650.0560.0580.0620.0610.062
C60.5110.4980.4770.4810.4790.4090.4640.4780.4970.4940.4440.4850.4900.4990.498
C70.5530.5550.5600.5750.5740.5840.4880.6170.6200.6150.6460.6290.6260.6130.612
C80.5620.5730.5440.5900.5960.6000.6170.4860.6040.6080.6400.6150.6140.6190.574
C90.5650.5360.5650.5210.5330.5610.5820.5760.4510.5580.5370.5550.5390.5390.578
C100.5660.5950.6100.5910.5750.6050.6090.6020.5870.4830.5740.5570.5720.5710.579
C110.4970.5060.4800.4950.4820.4500.4860.4810.4780.4980.3410.4640.4770.4880.486
C120.6360.6390.5960.6110.6110.5720.5560.5380.5560.5310.4750.4030.5320.5140.532
C130.6640.7050.7130.6890.6850.6750.6800.6760.6800.6900.6110.6140.4870.6240.626
C140.6710.6290.6780.6830.6790.6710.6520.6550.6760.6610.6380.6020.6020.4790.607
C150.5090.4960.5090.4980.5190.4960.4900.5130.4740.4830.5570.5400.5240.5170.372
Table 10. The stable matrix of ANP.
Table 10. The stable matrix of ANP.
CriteriaC1C2C3C4C5C6C7C8C9C10C11C12C13C14C15
C113.28013.28013.28013.28013.28013.01113.01113.01113.01113.01112.62312.62312.62312.62312.623
C27.6957.6957.6957.6957.6957.5397.5397.5397.5397.5397.3147.3147.3147.3147.314
C39.8199.8199.8199.8199.8199.6219.6219.6219.6219.6219.3349.3349.3349.3349.334
C413.37513.37513.37513.37513.37513.10413.10413.10413.10413.10412.71312.71312.71312.71312.713
C513.01413.01413.01413.01413.01412.75112.75112.75112.75112.75112.37012.37012.37012.37012.370
C698.01998.01998.02098.01998.02096.03796.03796.03796.03796.03793.17093.17093.17093.17093.170
C7123.510123.510123.510123.510123.510121.012121.012121.012121.012121.012117.399117.399117.400117.400117.400
C8122.284122.284122.284122.284122.283119.810119.810119.810119.810119.810116.233116.233116.234116.234116.234
C9112.327112.327112.327112.327112.327110.055110.055110.055110.055110.055106.771106.770106.770106.770106.770
C10117.790117.789117.789117.790117.790115.407115.407115.407115.407115.407111.963111.963111.963111.963111.963
C1196.18596.18596.18596.18596.18594.24094.24094.24094.23994.23991.42791.42791.42791.42691.426
C12107.998107.998107.998107.998107.998105.813105.813105.813105.813105.813102.656102.655102.655102.655102.655
C13130.771130.771130.771130.771130.771128.126128.126128.126128.126128.126124.302124.302124.302124.302124.302
C14128.069128.069128.069128.069128.069125.478125.479125.479125.478125.479121.733121.734121.734121.734121.734
C15102.109102.109102.108102.109102.109100.043100.043100.043100.043100.04397.05697.05697.05797.05797.057
Table 11. The performance and aspired level gaps of alternative suppliers.
Table 11. The performance and aspired level gaps of alternative suppliers.
Dimensions and CriteriaLocal Weight (Based on DANP)Global Weight (Based on DANP)PerformanceGap of Aspired Level
Supplier 1 (S1)Supplier 2 (S2)Supplier 3 (S3)Supplier 1 (S1)Supplier 2 (S2)Supplier 3 (S3)
Economic (D1)57.183 (3) 7.8888.1057.8450.1240.0990.128
Quality of component (C1)0.232(2)13.2808.8008.2008.8000.0220.0890.022
Delivery time (C2)0.135(5)7.6958.6008.8008.8000.0440.0220.022
Price of component (C3)0.172(4)9.8197.4007.2007.0000.1780.2000.222
Technical capability (C4)0.234(1)13.3757.6007.6007.4000.1560.1560.178
Manufacturing capability (C5)0.228(3)13.0147.2008.8007.4000.2000.0220.178
Environmental (D2)573.930 (1) 7.3937.3918.2600.1790.1790.082
Environmental and energy management system (C6)0.171(5)98.0198.6008.4008.8000.0440.0670.022
Green manufacturing policy (C7)0.215(1)123.5105.8006.4008.2000.3560.2890.089
Practice of sustainable future (C8)0.213(2)122.2848.6007.2008.2000.0440.2000.089
Compliance of material used (C9)0.196(4)112.3277.4007.8008.4000.1780.1330.067
Recycling product and process (C10)0.205(3)117.7906.8007.4007.8000.2440.1780.133
Social (D3)565.131 (2) 8.2007.3938.1640.0890.1790.093
Supplier social responsibility (C11)0.170(5)96.1858.2005.8008.2000.0890.3560.089
Employee welfare and growth (C12)0.191(3)107.9988.2007.6008.2000.0890.1560.089
Organizational culture development (C13)0.231(1)130.7718.2007.6008.2000.0890.1560.089
Regulation compliance (C14)0.227(2)128.0698.2008.2008.2000.0890.0890.089
Occupational health and safety (C15)0.181(4)102.1098.2007.4008.0000.0890.1780.111
Total performance 9328.279 (2)8883.827
(3)
9802.628
(1)
Total gap 159.768
(2)
209.152
(3)
107.063
(1)
Note: The numbers in parenthesis represent the ranks of local weights in dimensions and criteria.
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Rahardjo, B.; Wang, F.-K.; Lo, S.-C.; Chou, J.-H. A Hybrid Multi-Criteria Decision-Making Model Combining DANP with VIKOR for Sustainable Supplier Selection in Electronics Industry. Sustainability 2023, 15, 4588. https://doi.org/10.3390/su15054588

AMA Style

Rahardjo B, Wang F-K, Lo S-C, Chou J-H. A Hybrid Multi-Criteria Decision-Making Model Combining DANP with VIKOR for Sustainable Supplier Selection in Electronics Industry. Sustainability. 2023; 15(5):4588. https://doi.org/10.3390/su15054588

Chicago/Turabian Style

Rahardjo, Benedictus, Fu-Kwun Wang, Shih-Che Lo, and Jia-Hong Chou. 2023. "A Hybrid Multi-Criteria Decision-Making Model Combining DANP with VIKOR for Sustainable Supplier Selection in Electronics Industry" Sustainability 15, no. 5: 4588. https://doi.org/10.3390/su15054588

APA Style

Rahardjo, B., Wang, F. -K., Lo, S. -C., & Chou, J. -H. (2023). A Hybrid Multi-Criteria Decision-Making Model Combining DANP with VIKOR for Sustainable Supplier Selection in Electronics Industry. Sustainability, 15(5), 4588. https://doi.org/10.3390/su15054588

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