Identifying and Prioritizing the Challenges and Obstacles of the Green Supply Chain Management in the Construction Industry Using the Fuzzy BWM Method

: The construction supply chain network has been facing challenges in relation to reducing cost and delivery time, increasing the quality of the built assets, and reducing environmental pollution. These issues have caused contractors and project managers in this industry to note the concept of green construction supply chain management (GCSCM). This study examined the most important challenges and barriers to the implementation of GSCM in the construction industry. In this paper, the components and sub-components of GCSCM were identiﬁed using the literature review and opinions of the experts according to the supply chain management. The opinions of construction experts and project managers were collected through focus group meetings. The components were categorized into ﬁve main and supporting groups, with “Green Design”, “Green Procurement”, and “Green Production” as the main components and “Green Management” and “Green Information” as the supporting components. Subsequently, the sub-components, in regard to each component, were distinguished. Finally, the fuzzy best–worst method (BWM) was utilized to determine the importance weights of the identiﬁed components and sub-components through the opinions of ﬁve experts with practical relevant experience. The ﬁndings of the fuzzy BWM method show that “Green Design” is the most important component, followed by “Green Management” and “Green Implementation”. Additionally, “Lack of designers, contractors and planners” was ranked the ﬁrst among the identiﬁed sub-components. This paper can assist construction managers, contractors, and policymakers with ﬁnding and overcoming the barriers and obstacles of implementing GCSCM.


Introduction
The construction sector is a main consumer of natural resources in the globe [1]. Additionally, it is accountable for a considerable amount of the entire pollution of the world [2]. The world-wide detrimental effects of the construction sector have been distinguished, and consequently, several countries have introduced guidelines and legalized environmental laws and regulations to diminish and prevent pollution, which enforce the construction industry to take environmental concerns into account [3,4]. On the other hand, the construction sector is facing challenges related to cost reduction, timely delivery, and the quality of the construction project [5]. As a result, increasing these challenges, as well as the growing pressure of the governing bodies and the stakeholders of the construction industry for taking the environmental standards and regulations into consideration, has scrutinizes the relevant research on GCSCM. The last subsection presents the application of fuzzy BWM to GCSCM.

Construction Supply Chain Management (CSCM)
Segerstedt and Olofsson [11] reviewed numerous extant opportunities and threats in the supply chain of the construction sector. Subsequently, Behera et al. [12] described the concept of CSCM for better understanding and implementation. Hao et al. [13] applied game theory approach to examine the progressive knowledge sharing pattern of participants and the influencing factors in the construction supply chain. Battula et al. [14] investigated the factors that affect the implementation of CSCM. Koc and Gurgun [15] examined the risks of stakeholders in the construction supply chain. Liu et al. [16] reviewed the relevant studies and proposed a conceptual framework for the development of supply chain management in the prefabricated construction industry. In addition, Studer and De Berito Mello [17] studied the literature on CSCM and categorized the important components into five groups. Also, Hussein et al. [18] examined the existing problems in off-site CSCM and the solutions presented in the literature. Moreover, Masood et al. [19] conducted a systematic review on the prefabricated house-building supply chain management. Cigolini et al. [20] briefly mentioned the challenges associated with supply chain management in the construction sector. Salari et al. [21] addressed the problems and challenges relevant to supply chain management in off-site construction and developed a stochastic three-echelon model for supply chain management. Furthermore, Gurgun et al. [22] found out the obstacles associated with using cryptocurrencies in construction supply chain.

Green Construction Supply Chain Management (GCSCM)
Balasubramanian and Shukla [3] proposed an assessment framework containing nine constructs for GSCM in the construction industry. Dallasega and Rauch [23] developed a conceptual model for synchronizing demand and supply according to the concept of sustainable CSCM. Zeng et al. [24] examined the relationship between sustainable consumption of construction materials and supply chain. Mee-ngoen et al. [25] investigated the effect of green construction, green project, and green staff training on the customer satisfaction. Ali et al. [26] specified and prioritized the GCSCM practices related to the Chinese and Pakistani joint projects for implementation. Hussain and Malik [27] distinguished the interrelationship between the environmental performance of construction supply chain and the organizational enablers of circular economy using a structural equation modelling. Liao et al. [28] introduced a MCDM method considering hesitant verbal information for sustainable supplier selection problem in the construction sector, and Farnam and Darehmiraki [29] solved supply chain management problems in hesitant fuzzy environment. Lin et al. [30] developed a non-deterministic bi-level nonlinear robust optimization model considering coordination and incentives among the participants of construction supply chain. Marandi Ahmed et al. [31] identified the obstacles and opportunities in implementing GCSCM. According to the findings, the four highest ranked barriers are placed in the "involvement and support" classification, on the other hand, the four highest ranked opportunities are placed in the "environmental" categorization. Mojumder and Singh [32] conducted an exploratory study for the implementation of GCSCM in Indian companies. Kosanoglu and Kus [33] developed a sustainable CSCM model for Turkish construction industry. RezaHoseini et al. [34] suggested a bi-objective linear programming model for the sustainable construction supply chain problem taking project scheduling and supplier selection into account. They also considered the environmental consequences of transportation. Moreover, the issues of selecting suppliers, choosing fleet types, and scheduling project were examined such that the logistics costs, project delays, and the propagation of greenhouse gases are simultaneously minimized. Cataldo et al. [35] reviewed the literature of sustainable CSCM and suggested some directions for further studies. Mohammadnazari and Ghannadpour [36] developed a sustainable mathematical programming model for the ordering problem of construction materials. Alavi et al. [37] identified and prioritized GC project management activities. Xie et al. [38] investigated the governmental intervention in the GCSCM for supporting public-private partnerships. Sun et al. [39] developed a grey possibility DEMATEL-NK-based path analysis framework to identify the obstacles and barriers in performing GCSCM.

The Application of Fuzzy BWM to GCSCM
Amoozad Mahdiraji et al. [40] identified and prioritized the main sustainability factors in Iranian contemporary architecture through an integrated fuzzy BWM-COPRAS approach. Mathiyazhagan et al. [41] proposed a sustainable evaluation model using a combination of BWM and fuzzy TOPSIS methods for selecting materials in the construction sector. Liu et al. [16] utilized a combined model of DEMATEL and BWM to distinguish the causal relationship of several factors, as well as their importance for a green building assessment system. Naghizadeh Vardin et al. [5] suggested a hybrid model of BWM and fuzzy VIKOR for sustainable contractor selection problem. Alkan et al. [42] applied a hybrid Bayesian BWM-SAW method for selecting sustainable construction materials. Singh et al. [43] employed BWM for selecting green suppliers in construction companies in India.

Obstacles and Barriers to the Implementation of GCSCM
The obstacles and barriers to the implementation of GCSCM were collected using the literature survey shown in Table 1. Table 1. The Obstacles and barriers to the implementation of GCSCM, based on the literature review.

Author(s) Year Implementation Challenges and Obstacles
Balasubramanian and Shukla [3] Shortfall of necessary technical skills in the construction industry, lack of complete understanding of project goals and requirements, inappropriate working conditions Ayarkwa et al. [44] Lack of related laws and regulations and government support Aigbavboa et al. [45] Cost increase, unwillingness to use new methods in construction, lack of necessary technical skills in the construction industry Baron and Donath [46] Cost increase, lack of access to green materials, and improper maintenance Shrestha [47] Cost increase AlSanad [48] Unwillingness to use new methods in the construction industry Babalola et al. [49] Poor performance during construction, unrealistic project duration Wei et al. [50] Lack of complete understanding of project goals and requirements Govindan et al. [51] Cost increase, unwillingness to use new methods in the construction industry, lack of necessary technical skills in the construction industry, lack of access to green materials, low efficiency during construction, unrealistic project duration, lack of complete understanding of project goals and requirements, inappropriate working conditions, lack of designers, contractors and planners in the green construction industry, lack of related laws and regulations and government support Djokoto et al. [52] Poor performance during construction, unrealistic project duration Opoku and Fortune [53] Lack of related laws and regulations and government support Ojo et al. [54] Lack of access to green materials, lack of market for recyclable materials, lack of awareness of environmental effects, lack of information sharing between construction organizations and suppliers, weak commitment of senior management, lack of related laws and regulations and government support, demand shortage Liu et al. [55] Lack of designers, contractors and planners in the green construction industry, lack of training, knowledge, and experience of the green supply chain

Author(s) Year Implementation Challenges and Obstacles
Holt and Ghobadian [56] Low efficiency during construction, lack of proper training, awareness, and experiences of green supply chain Sharfman et al. [57] Lack of proper training, awareness, and experience of green supply chain Dashore and Sohani [58] Lack of designers, contractors, and planners in the green construction industry

Materials and Methods
The research methodology contains three steps. Figure 1 depicts the flowchart of the research methodology. Ojo et al. [54] Lack of access to green materials, lack of market for recyclable materials, lack of awareness of environmental effects, lack of information sharing between construction organizations and suppliers, weak commitment of senior management, lack of related laws and regulations and government support, demand shortage Liu et al. [55] Lack of designers, contractors and planners in the green construction industry, lack of training, knowledge, and experience of the green supply chain Holt and Ghobadian [56] Low efficiency during construction, lack of proper training, awareness, and experiences of green supply chain Sharfman et al. [57] Lack of proper training, awareness, and experience of green supply chain Dashore and Sohani [58] Lack of designers, contractors, and planners in the green construction industry

Materials and Methods
The research methodology contains three steps. Figure 1 depicts the flowchart of the research methodology. In the first step, the research literature was examined, and the most important challenges and obstacles related to implementing GSCM in the construction industry were distinguished. In the second step, the components of GCSCM were determined using the opinions of the experts. The opinions of 20 experts and construction project managers In the first step, the research literature was examined, and the most important challenges and obstacles related to implementing GSCM in the construction industry were distinguished. In the second step, the components of GCSCM were determined using the opinions of the experts. The opinions of 20 experts and construction project managers were collected through a two-hour focus group meeting. The specialists and experts used in this research included scholars and scientific experts (university professors), together with executive experts (project managers). Table 2 shows the demographic information of the experts. These components were categorized into five groups, including main and supporting components. Green design, green procurement, and green production in the construction industry were categorized as the main components, and green management and green information in the construction industry were categorized as the supporting components, according to supply chain components depicted in Figure 2.
Buildings 2023, 13, x FOR PEER REVIEW 6 of 20 were collected through a two-hour focus group meeting. The specialists and experts used in this research included scholars and scientific experts (university professors), together with executive experts (project managers). Table 2 shows the demographic information of the experts. These components were categorized into five groups, including main and supporting components. Green design, green procurement, and green production in the construction industry were categorized as the main components, and green management and green information in the construction industry were categorized as the supporting components, according to supply chain components depicted in Figure 2. According to Figure 2, the first step in GCSCM is green procurement. Green procurement refers to materials that consume less resources and energy, are non-toxic, and do not have a detrimental impact on the environment. The second step is green design. Green According to Figure 2, the first step in GCSCM is green procurement. Green procurement refers to materials that consume less resources and energy, are non-toxic, and do not have a detrimental impact on the environment. The second step is green design. Green design includes the use of environmentally friendly methods in the construction industry to reduce the negative effects of construction on the environment. In other words, green design provides opportunities to reduce any potential negative environmental impacts. In green design, the environment and human health should be considered in the process of purchasing materials. The third step is green production, which is known as clean production. Green production emphasizes maximizing the protection of natural resources, reducing negative effects on the environment, and optimizing the consumption of resources. Additionally, the supporting component of green management means the management commitment to considering the concept of green in managing the entire construction supply chain. Moreover, green information, which has the role of information support in GCSCM is introduced as another supporting component.
Subsequently, based on Table 1 and Figure 2, the sub-components of the obstacles of the GCSCM were categorized through another focus group meeting, which are presented in Table 3. Table 3. The components and sub-components of the obstacles of green construction management (based on supply chain components). Failure to share information between construction organizations and suppliers As shown in Figure 2, five components, including three main components (green procurement, green design, and green production) and two supporting components (green management and green information) were distinguished in GCSCM. Then, 18 subcomponents related to the five aforementioned components were identified using the literature review (illustrated in Table 1) and experts' opinions. As an example, three subcomponents, including lack of access to green materials and materials (C11), lack of market for recyclable materials (C12), and lack of proper storage and maintenance of materials (C13), which are relevant to the component of green procurement, are among the obstacles and barriers of implementing GCSCM.

Components Code Sub-Components
In the third step, the fuzzy best-worst method (BWM) was utilized to determine the importance weights of the identified components and sub-components.
In an MCDM problem, a number of alternatives are evaluated with respect to a number of criteria to select the best alternative(s). The best-worst method (BWM) is one of the MCDM methods presented by Rezaei [10]. He also developed this method in 2016. BWM is based on pairwise comparisons between criteria. First, the best criterion and the worst criterion are identified, then the priority of the best criterion, compared to the number of criteria, as well as the degree of superiority of all criteria to the worst criterion, are determined using pairwise comparisons. BWM, as a powerful MCDM technique, has been widely used by several researchers for dealing with a variety of problems related to GSCM around the world [59][60][61].
Verbal and linguistic judgments made by decision-makers are usually vague and uncertain. Therefore, the fuzzy BWM method, as an extension of BWM, was developed to tackle the ambiguity and uncertainty associated with expert judgment [62].
The implementation steps of the fuzzy BWM method are as follows: Step 1: Determining the best criterion and the worst criterion: In this step, the most important and the least important criteria are determined using experts' opinions. C B and C W denote the best and the worst criteria, respectively.
Step 2: Pairwise comparison of the best criterion with other criteria and other criteria with the worst criterion: In this step, pairwise comparisons can be made using any fuzzy spectrum, but one of the most common spectrums for the fuzzy BWM method is based on the five-point Likert scale comprising the verbal expressions of equal importance (EI), weak importance (WI), moderately important (FI), very important (VI), and absolutely important (AI).
The best vector compared to other criteria is as follows: whereÃ B expresses the fuzzy best vector compared to other criteria andã Bj expresses the fuzzy preference of the best criterion C B compared to criterion j. It is clear that a BB = (1, 1, 1). In addition, the fuzzy preferences of all criteria, with respect to the worst criterion, were determined using the linguistic variables presented in Table 4, as follows: whereÃ W expresses the fuzzy worst vector compared to other criteria andã W j expresses the fuzzy preference of the criterion i compared to the worst criterion C W . It is clear that a WW = (1, 1, 1). Step 3: Forming the fuzzy BWM model. In this step, the weights of the criteria can be calculated using the following non-linear mathematical programming model. It is recommended to transform this model into linear mathematical programming model for a number of criteria more than three to obtain better results [62]. Step 4: Solving the model by one of the optimization software, such as LINGO or GAMS, to obtain the weights of the criteria W * 1 , W * 2 , . . . , W * n . In addition, the consistency ratio (CR) is determined using the consistency index (CI) (shown in Table 5) and the obtained optimal value k * : It should be noted that the best and the worst criteria can be determined using each expert's viewpoint individually. Consequently, a fuzzy BWM model is formed for each expert. After solving the model and calculating the weights of the criteria, the weights obtained from each expert are finally merged [62].

Results
As aforementioned, for weighing the criteria in BWM, the best criterion and the worst criterion are determined through the experts' opinions. Therefore, five experts in the construction industry were asked to distinguish the most effective component (the best criterion) and the least effective component (the worst criterion). It should be noted that, since the weighting of components (criteria) and sub-components (sub-criteria) requires practical experience in implementation, 5 individuals who were practically involved in implementation (project managers) were selected among 20 research experts.
Then, they were asked to identify the priority of the best criterion (component) over the other criteria, as well as the priority of all criteria over the worst criterion, based on fuzzy numbers. The results are presented in Tables 6 and 7.  As can be seen in Table 6, expert 3 selected the C4 criterion as the best and most important criterion; however, the other experts selected the C2 criterion. According to Table 7, all the experts unanimously selected the C5 criterion as the worst and least important criterion.
In accordance with Table 6 and Equation (1), the best-to-others fuzzy vector can be formed based on the opinion of each expert. Additionally, based on Table 7 and Equation (2), the others-to-worst fuzzy vector is formed for each expert's opinion. The following vectors show the results according to the opinion of each expert: According to the vectorsÃ i B andÃ i W , a linear mathematical programming model is formed using Equation (3) to obtain the optimal fuzzy weights of the main criteria C1 to C5 for experts i = 1, . . . , 5. For instance, the following linear optimization model is presented and solved based on the vectorsÃ 1 B andÃ 1 W for the first expert.
1 6 * (l1 + 4 * m1 + u1) + 1 6 * (l2 + 4 * m2 + u2) + 1 6 * (l3 + 4 * m3 + u3) + 1 6 * (l4 + 4 * m4 + u4) + 1 6 * (l5 + 4 * m5 + u5) = 1; In the following, the consistency ratio (CR) is calculated using Equation (4). The findings are presented in Table 8. After calculating the fuzzy weights of the main criteria, the crisp value of the triangular fuzzy numberã i = (l i , m i , u i ), called the graded mean integration representation (GMIR), is obtained using Equation (5) [63]. Table 7 shows that the highest value was related to the green design criterion (C2) and the lowest value was related to the green information criterion (C5). Additionally, the value of 0.062 for the consistency ratio indicates the high consistency and accuracy of the findings. Similarly, the weights of the main criteria were obtained based on the other experts' opinions. The findings are presented in Tables 9-12. Additionally, Figure 3 shows the weight of each of the main criteria C1 to C5, regarding the experts' opinions.   According to the experts' opinions, the order of importance of the main criteria, based on the obtained weights using the fuzzy BWM method, is as follows: As can be seen, the C5 (green information) criterion was the least important, based on the opinions of all experts. The C2 (green design) criterion was the most important, based on the opinions of three experts. Subsequently, the geometric mean of each of the main criteria was computed to combine the experts' opinions. Additionally, the importance weights of sub-criteria (sub-components) were calculated using the fuzzy BWM method. The findings are given in Table 13.   According to the experts' opinions, the order of importance of the main criteria, based on the obtained weights using the fuzzy BWM method, is as follows: As can be seen, the C5 (green information) criterion was the least important, based on the opinions of all experts. The C2 (green design) criterion was the most important, based on the opinions of three experts. Subsequently, the geometric mean of each of the main criteria was computed to combine the experts' opinions. Additionally, the importance weights of sub-criteria (sub-components) were calculated using the fuzzy BWM method. The findings are given in Table 13. As stated in the above table, among the main obstacles and challenges of GCSCM, the C2 (green design) criterion was ranked first, with an importance weight of 0.270. The C4 (green management) criterion, with an importance weight of 0.244, was ranked second, the C3 (green production) criterion, with an importance weight of 0.204, was ranked third, the C1 (green procurement) criterion was ranked the fourth, with an importance weight of 0.189, and finally, the C5 (green information) criterion, with an importance weight of 0.072, was ranked the fifth.
According to "Local Weight" column in Table 12, the sub-criteria C11 (lack of access to green materials and materials), the sub-criterion C21 (lack of designers, contractors, and planners in the green construction industry), the sub-criterion C34 (cost increase), the sub-criterion C42 (lack of related laws and regulations and government support), and the sub-criterion C53 (non-sharing of information between construction companies and suppliers) were the most important sub-criteria of the C1 to C5 main criteria, respectively. Figure 4 shows the weights of the sub-criteria of each of the main criteria, based on local weight.
According to the weights of the main criteria and the local weights of the sub-criteria obtained by the fuzzy BWM method, the final weights of the sub-criteria were calculated, as shown in Table 12. Among the 18 sub-criteria, three sub-criteria C42 (lack of relevant laws and regulations and government support), C21 (lack of designers, contractors, and planners in the green construction industry), and C22 (lack of training, awareness, and appropriate experiences of green supply chain) are ranked the first to third with the importance weights of 0.1173, 0.1020, and 0.0996, respectively. Figure 5 illustrates the final weights of 18 sub-criteria.
According to "Local Weight" column in Table 12, the sub-criteria C11 (lack of access to green materials and materials), the sub-criterion C21 (lack of designers, contractors, and planners in the green construction industry), the sub-criterion C34 (cost increase), the subcriterion C42 (lack of related laws and regulations and government support), and the subcriterion C53 (non-sharing of information between construction companies and suppliers) were the most important sub-criteria of the C1 to C5 main criteria, respectively. Figure 4 shows the weights of the sub-criteria of each of the main criteria, based on local weight.  According to the weights of the main criteria and the local weights of the sub-criteria obtained by the fuzzy BWM method, the final weights of the sub-criteria were calculated, as shown in Table 12. Among the 18 sub-criteria, three sub-criteria C42 (lack of relevant laws and regulations and government support), C21 (lack of designers, contractors, and planners in the green construction industry), and C22 (lack of training, awareness, and appropriate experiences of green supply chain) are ranked the first to third with the importance weights of 0.1173, 0.1020, and 0.0996, respectively. Figure 5 illustrates the final weights of 18 sub-criteria.  obtained by the fuzzy BWM method, the final weights of the sub-criteria were calculated, as shown in Table 12. Among the 18 sub-criteria, three sub-criteria C42 (lack of relevant laws and regulations and government support), C21 (lack of designers, contractors, and planners in the green construction industry), and C22 (lack of training, awareness, and appropriate experiences of green supply chain) are ranked the first to third with the importance weights of 0.1173, 0.1020, and 0.0996, respectively. Figure 5 illustrates the final weights of 18 sub-criteria.

Discussion and Conclusions
Considering the share of the construction industry in polluting the environment and increasing the attention of governments, non-governmental organizations, and environmentalists to the requisite of reducing environmental pollution [2,64,65], one of the most important issues is how construction organizations overcome the various obstacles and challenges in GCSCM. The usage of the concept of GSCM in the construction industry means creating environmental thinking at all stages of the construction supply chain, including the design, implementation, and delivery of the bult asset to the final consumers and beneficiaries. The main goal of implementing GCSCM is to minimize the environmental consequences and impacts caused by the activities of construction projects on air, water, soil, animal species, plants, and natural resources [38].
The current research was conducted with the aim of identifying the obstacles and barriers of implementing GSCM in the construction industry. Reviewing the related literature to obstacles and barriers affecting the implementation of GCSCM, as well as soliciting the opinions of the experts in the construction industry, revealed that five components influence the successful implementation of GCSCM. These five components were considered according to the concept of supply chain management, green management, and the construction industry. The conceptual model of this study contains five components, three of which are main components, including "Green Procurement", "Green Design", and "Green Production". Two other components have the supporting role for this cycle, which are "Green Management" and "Green Information". Then, the sub-components of each component were identified through the literature review and expert judgment. The weighting and prioritization of components showed that most challenges and obstacles in GCSCM are related to "Green Design" in the construction industry.
Based on the obtained weights of the main criteria using the fuzzy BWM method, "Green Design", with a score of 0.270, is the most important component. The weight of this component has a significant difference with the weights of the other components that are placed in the second to fifth places. The importance weight of "Green Design" (the first ranked component), compared to "Green Management" (the second ranked component), is more than 10%, compared to "Green Production" (the third ranked component) is more than 32%, compared to "Green Procurement" (the fourth ranked component) is more than 42%, and finally, compared to "Green Information" (the fifth ranked component), is more than 2.75 times. This matter indicates that the main focus should be on proper design, considering all principles of the green concept in construction projects. Compliance with these principles, along with the principles of green management in the construction industry, is responsible for more than half of the challenges and obstacles.
In addition, among all the sub-components related to the environmental challenges, the sub-component of "lack of related laws and regulations and government support" was recognized as the most important barrier. Although many countries have laws and regulations about the environment and several national and international efforts have been made to protect the environment, environmental challenges have significantly increased in many areas, particularly the construction industry. Therefore, governments should pay more attention to the necessity of implementing GSCM and supporting it. GSCM is the integration of supply chain management with environmental requirements. This integration includes all stages of product design, the selection and supply of raw materials, manufacturing, and transportation. Hence, the goal of GSCM in the construction industry is to optimize the allocation and consumption of resources, increase benefits, and achieve environmental compatibility through the promotion of environmentally friendly activities. Taking environmental considerations into account and providing appropriate executive frameworks can lead to the development of the entire supply chain, along with environmental protection. Environmental protection not only has a vital role in sustainable development, but also has direct and indirect effects on economic activities, quality of life, social welfare and satisfaction, and the level of real incomes.

Practical Implications
The present study was conducted with the aim of determining and ranking the significant barriers and obstacles affecting GCSCM. Since the construction industry is one of the main sectors in the development of countries and known as one of the environmentally polluting industries, the implementation of GSCM in this industry is very important and challenging. Previous studies regarding green supply chain management in the construction industry investigated and identified the influential factors, in order to reduce and resolve conflicts between supply chain components and increase cooperation. As an example, Xie et al. [38] examined the issue of strengthening public and private partnerships in green construction management. However, due to the complexity of the construction supply chain, only 1.39% of research works have addressed the application of green supply chain management in the construction industry [66]. Therefore, the present research added value and contributed to the extant knowledge through collecting, identifying, and categorizing the implementation obstacles and challenges of GCSCM. In addition, the novel fuzzy BWM, as a novel MCDM method, was employed to rank the identified barriers and obstacles. Among the MCDM methods, BWM has received more attention from researchers and scholars because of the less pairwise comparisons and higher accuracy. In this paper, the importance weight of each of the main criteria and sub-criteria was evaluated and obtained through the opinions of the construction experts. Inevitably, it is crucial to managers, contractors, and decision-makers in the construction industry to distinguish these challenges and obstacles.

Academic Implications
Due to the importance of environment and green management in the construction industry, the role of researchers in developing theoretical grounds becomes more prominent. For this purpose, some suggestions are provided, as follows:

•
Training and informing planners and decision-makers on the topic of green management, • Reviewing and modifying the relevant laws and regulations, • Proposing novel scientific methods for different phases of the construction supply chain management can develop some of these theoretical foundations and be scientific for universities and researchers.

Suggestions for Further Research
In this research, 18 obstacles and barriers of implementing green supply chain management in the construction industry have been identified. As a suggestion for future research, more challenges and obstacles may be identified. Additionally, it is suggested to evaluate the interrelationship and impact of the identified obstacles on each other.