1. Introduction
Amid the rapid development of global infrastructure, the Engineering, Procurement, and Construction (EPC) general contracting model has emerged as the predominant approach in the construction sector due to its highly integrated management structure and efficient collaborative operational mechanisms. By consolidating design, procurement, and construction, the EPC model exhibits significant advantages in enhancing project quality and reducing construction durations. However, as project scale and complexity escalate, the EPC model has encountered a series of practical challenges, including cost overruns, schedule delays, and quality fluctuations. These issues arise not only from the inherent difficulties associated with multi-stakeholder collaboration and deficiencies in the contractual framework but also reflect theoretical gaps in academic research regarding value-added mechanisms within EPC projects. In the context of enhanced public fund performance management, it is crucial to uncover the underlying mechanisms governing the interaction between multidimensional factors and their hierarchical transmission in order to address the bottlenecks that hinder value-added efficiency in government-invested EPC projects.
Value addition is a central pillar of value management in EPC projects, with its theoretical origins rooted in Porter’s value chain theory, which deconstructs corporate value addition into the symbiotic relationship between primary and support activities [
1]. This framework provides a foundational model for analyzing the logic of value formation. Expanding on this, Peter Hines’s work [
2] shifted the focus to customer-centric value, repositioning customer needs at the core of the value chain and propelling the theory towards a service-oriented paradigm. The practical application of this concept is highly diversified; at the process level, studies by Li and Zhang suggest that full-process tracking audits can dynamically monitor and optimize the value chain flow [
3], while other research cautions that excessive monitoring may stifle innovation. Regarding stakeholder dynamics, Du and Wang have shown that the intricate interplay of competition and cooperation between owners and contractors fosters resource and risk sharing, thereby driving value addition [
4]. Conversely, Berg et al. identified that organizational friction stemming from business model contradictions within the value chains of architecture, engineering, and construction (AEC) firms can undermine synergistic value addition [
5]. In the domain of technological innovation, Liu et al. underscore the critical role of digitalization and service-oriented transformation in redefining value addition pathways [
6], though previous studies have raised concerns about the scenario-specific adaptability of technologies like Building Information Modeling (BIM). Within risk management and organizational synergy, Wang et al. quantitatively identified 11 core risk factors influencing decision-making in large-scale projects [
7], and Wang and Bai used an evolutionary game model to validate the role of secondary risk management in sustaining value addition under the EPC + PPP model [
8]. However, the specific correlation between various risk factors and value addition remains a subject of debate in different studies. From a supply chain perspective, Huang and Li established a significant positive correlation between the degree of supply chain integration and procurement performance in international EPC projects [
9]. Similarly, Gao et al. demonstrated that prefabrication rates and logistics coordination are key determinants of construction duration in prefabricated building projects [
10]. Despite these findings, a comprehensive understanding of value transmission efficiency across different supply chain links is still fragmented. Methodologically, Bennett and Mayouf introduced a lifecycle value management framework [
11], while Wang et al. leveraged an evolutionary game model to reveal the dynamic mechanisms of value co-creation during digital transformation [
12]. However, a notable gap persists in the literature: a systematic analysis of the interactive effects of multidimensional factors, particularly in the dynamic characterization of value transmission pathways within complex project environments.
The EPC model for government-invested projects has emerged as a pivotal instrument for enhancing the efficiency of public project delivery, yet its adoption and evolution display considerable regional disparities and ongoing practical debates. In Europe and the Americas, the EPC approach was introduced earlier within municipal engineering, emphasizing the improvement in management efficiency through the implementation of standardized contracts. In contrast, the promotion of EPC in emerging Asian markets is predominantly policy-driven, exemplified by China’s reliance on a suite of regulatory documents to encourage the prioritization of EPC in government-funded initiatives. Current research in this domain primarily follows two trajectories: one examines the adaptability of management models, seeking to optimize performance across the entire project lifecycle [
13], while the other investigates the enabling role of digital technologies, with studies such as Li et al. demonstrating that digitalization can enhance sustainable performance through improved stakeholder collaboration [
14]. In practice, core controversies persist in four key areas. First, regarding the allocation of responsibilities among multiple stakeholders, Chen et al. underscore the necessity of clearly delineating the roles of government, general contractors, and project management entities [
15], although some scholars advocate for maintaining flexibility to accommodate dynamic project adjustments. Second, in the realm of public fund oversight, Sheppard and Beck discuss the delicate balance between transparency and efficiency [
16], highlighting divergent approaches between “rigid auditing” and “flexible regulation”. This challenge is further contextualized in emerging economies where innovative financing mechanisms, such as blue bonds, are being introduced under nascent regulatory frameworks, as discussed by Endarto et al. in the case of Indonesia [
17]. Third, the tension between policy compliance and engineering flexibility is exemplified by Wacinkiewicz and Słotwiński, who analyze the constraining influence of legal frameworks in the Polish context [
18]. This aligns with broader discussions on how legal instruments, including easements, can either facilitate or hinder sustainable infrastructure development, as highlighted by Peráček and Kaššaj in the context of smart cities [
19]. Meanwhile, other studies argue for the necessity of adaptive mechanisms in exceptional scenarios. Fourth, in contract design, Aboseif and Hanna advocate for the incorporation of performance quantification metrics [
20], yet practical implementation often reveals a disconnect between these metrics and actual project needs. With respect to value-added mechanisms, Lao et al. highlight the importance of design-driven integration capabilities [
21], Zhou et al. elucidate the interactive effects among technology, organization, and policy [
22], and Huang et al. emphasize the critical role of supply chain management [
23]. Nevertheless, existing research has yet to fully elucidate the synergistic mechanisms that reconcile the public interest orientation with the value-added objectives unique to government investment projects, indicating a clear need for further investigation in this area.
A review of existing research reveals that the current research paradigm is highly fragmented, with most studies concentrating on a single aspect or specific perspective, thereby lacking a comprehensive understanding of the underlying logic of value-added systems. In the field of construction engineering in particular, prior research has predominantly examined the role and impact of the value chain in general engineering projects, while insufficient attention has been devoted to the value-added processes of government-invested EPC projects. The mechanism and pathways of value addition constitute the core dimensions of the value formation process in EPC projects. The profound implications and intrinsic interrelationships of these dimensions urgently warrant systematic academic investigation.
This study addresses the critical challenge of enhancing value-added efficiency in government-invested EPC projects by systematically examining their underlying mechanisms. Our core objectives are three-fold:
To identify the key factors influencing value addition and their synergistic mechanisms across four critical dimensions: contract cost, organization, technology, and environment;
To reveal the hierarchical transmission pathways of value addition, characterized by a cascading structure from a “root level” to a “transitional level” and a “direct level;”
To validate the applicability and effectiveness of a DEMATEL–TAISM–MICMAC hybrid model in analyzing complex value-added systems.
Through rigorous scientific inquiry, this study aims to establish a robust theoretical framework and practical management strategies for enhancing the value of government-invested EPC projects. To this end, the following key hypothesis is proposed: “An integrated DEMATEL–TAISM–MICMAC model provides a comprehensive analytical framework capable of effectively revealing the value-added mechanism in government-invested EPC projects. By encompassing a closed-loop process of “quantitative identification, structural decomposition, and functional validation”, the model can accurately pinpoint core drivers, clarify multi-level transmission pathways, and facilitate the classification of factor roles, thereby supporting the formulation of targeted management strategies”.
This main hypothesis is decomposed into three testable sub-hypotheses:
H1 (Identification Efficacy). The DEMATEL module quantitatively identifies causal relationships among factors, enabling the precise identification of root-level drivers that exert dominant influence within the value-added system.
H2 (Pathway Elucidation). The TAISM module structurally defines the hierarchical and directional interactions between factors, clearly revealing the transmission logic in “root level → transitional level → direct level”, thereby mapping the value transmission pathways.
H3 (Functional Validation and Strategic Utility). The MICMAC module classifies factors into functionally distinct clusters (e.g., independent, dependent, linkage, and autonomous), validating the structural findings and providing a scientific basis for developing stratified management strategies.
In summary, this study addresses the fundamental challenges associated with enhancing the value-added efficiency of government-invested EPC projects. By developing a multidimensional integrated framework and employing an innovative hybrid model, the research seeks to uncover the intrinsic driving mechanisms and hierarchical transmission logic underlying value-added pathways. The study systematically identifies key driving factors, clarifies hierarchical structures, and delineates functional roles, thereby proposing a stratified optimization strategy. This approach provides a robust theoretical foundation and practical implementation pathways for optimizing the management systems of government-invested projects.
2. Materials and Methods
2.1. Preliminary Selection of Influencing Factors
To identify the factors influencing the value addition of government-invested EPC projects, this study began with a comprehensive literature review using the Web of Science database. The search, employing the keywords ‘EPC’ and ‘value-added,’ yielded 15 highly relevant articles, which were selected as key references for identifying the factors that contribute to value addition [
24,
25,
26,
27,
28,
29,
30,
31,
32,
33,
34,
35,
36,
37,
38]. In addition, a detailed case analysis of nine government-invested EPC projects implemented across various sectors and regions in China (including Xinjiang and Guangdong provinces) was conducted between 2019 and 2025. These projects span multiple industries, such as housing construction and transportation infrastructure, encompassing a total of nine projects. The analysis aimed to identify key challenges and potential areas for improvement during the project implementation phase. Based on the findings from the literature review and case-based statistical analysis, this study identified 24 critical factors influencing value enhancement in government-invested EPC projects. These factors were categorized into four dimensions—contract cost, organization, technology, and environment—considering both internal and external perspectives.
2.2. Refinement of Core Influencing Factors
2.2.1. Questionnaire Design and Survey
This study involved field visits to construction enterprises and government departments. In-depth interviews were conducted with industry experts possessing extensive experience in EPC contracting projects. A questionnaire survey was employed to accurately identify the key factors influencing value addition. A total of 73 questionnaires were distributed, yielding 68 valid responses. The content of the questionnaire primarily covered the respondents’ personal background information and their assessment of the impact of value-added factors. The participating units included construction companies, general contracting units, and project management departments responsible for handling government-invested projects.
2.2.2. Reliability and Validity Analysis
IBM SPSS Statistics (v26.0) was employed to perform reliability and validity tests on the sample data. The results indicated that the overall Cronbach’s α coefficient of the scale reached 0.864, while the KMO (Kaiser–Meyer–Olkin) value was 0.713. These findings suggest that the questionnaire scale possesses high reliability and validity and that the sample data satisfy the prerequisites for factor analysis. Furthermore, a weight analysis was conducted, as illustrated in
Figure 1. In the subsequent model-building phase, to ensure that a limited number of factors could adequately explain all information, four factors with relatively weak influence were excluded from the original 24 factors. This resulted in 20 core value-added influencing factors, which collectively form the value-added influencing factor indicator system, as detailed in
Table 1.
2.3. Fundamental Scientific Research Methods
In this study, we employed four core scientific research methodologies to ensure the rigor and comprehensive nature of our analysis [
19].
- 1.
Analytical Method
We began by critically reviewing the existing literature, survey data, and expert evaluations to deconstruct the complex value-added mechanism into four key dimensions: contract cost, organization, technology, and environment. This process involved dissecting the collaborative mechanisms among various stakeholders, the contractual framework, and technical processes. Through this, we identified 24 preliminary factors, which were then refined into 20 core indicators using a statistical weighting method.
- 2.
Deductive Method
Based on Porter’s value chain theory and the principles of EPC project governance, we deduced a series of testable hypotheses regarding the hierarchical value transmission pathways. This deductive logic guided the construction of our hybrid DEMATEL–TAISM–MICMAC model, establishing a causal chain for empirical validation.
- 3.
Comparative Method
We employed a comparative approach to identify key differences in value drivers and transmission efficiency. This was achieved by contrasting regional implementation paradigms (e.g., China’s policy-driven EPC model versus Europe’s standardized contractual approach) and by cross-validating the causal attributes from DEMATEL, the cluster roles from MICMAC, and the hierarchical positioning from TAISM.
- 4.
Case Study Method
We conducted an empirical case study on a series of government-invested EPC projects, selecting typical cases from regions such as Xinjiang, China. Core data, including cost overruns, schedule delays, and design change rates, were obtained from official survey reports issued by the 12th Division Government Investment Project Construction Center [
39]. To enhance data reliability, we further validated the key findings and causal chains of value erosion events through semi-structured interviews. These interviews, conducted with senior project managers and owner representatives, provided critical insights into the root causes and transmission mechanisms of the issues. Through systematic cross-validation, we robustly confirmed the hierarchical transmission paths and clarified the specific roles of various fundamental factors in value loss.
By integrating these four methods—analytical, deductive, comparative, and case study methods—our research ensures a comprehensive methodology. Each method emphasizes different aspects while working synergistically to support the complete research framework, from foundational analysis to empirical validation. Through the collaboration of quantitative modeling and qualitative analysis, we ensure the rigor and multidimensionality of our conclusions.
2.4. DEMATEL–TAISM–MICMAC Hybrid Model Analysis Method
To thoroughly investigate the intricate network structure and underlying mechanisms of value creation in government-funded EPC projects, this study proposes and implements a hybrid analytical framework that integrates DEMATEL, TAISM, and MICMAC methodologies (as illustrated in
Figure 2). By synthesizing these three complementary approaches, the model addresses the limitations of traditional value-added analyses, which often struggle with ambiguity and a lack of comprehensiveness in capturing complex causal relationships and hierarchical structures among influencing factors. This integrated framework thus enables a systematic and in-depth exploration of the sources, pathways, and principal drivers of value addition in such projects [
40].
- (1)
The Decision-Making Trial and Evaluation Laboratory (DEMATEL) serves a central quantitative role in this research. Given the inherent complexity of multi-factor interactions in the value-added process, DEMATEL is employed to quantify the interdependencies and strength of influences among various factors. This provides essential data for identifying core variables that significantly impact value output and for clarifying the causal mechanisms governing value-added pathways [
41]. The comprehensive influence values derived from DEMATEL not only highlight explicit relationships between factors but also map the transmission efficiency of value within the project system, establishing a solid quantitative foundation for revealing the hierarchical transmission logic underlying value addition [
24].
- (2)
The Comprehensive Adversarial Interpretation Structure Model (TAISM) is introduced to address the challenges posed by the diverse value aspirations and strategic interactions among the multiple stakeholders involved in EPC projects, including the government, general contractors, and various agencies. In contrast to traditional models, TAISM is particularly adept at capturing the feedback loops in project value-added systems. The UP-type and DOWN-type directed topological hierarchy diagrams constructed by TAISM serve to identify potential leakage points in the value realization process and trace the fundamental drivers of value addition, respectively. This dual “traceability–convergence” perspective provides a powerful analytical tool for harmonizing multi-stakeholder conflicts and optimizing the value distribution framework, effectively addressing the core challenges of value management in government-invested EPC projects [
42].
- (3)
The Matrix Cross-Multiplication Classification Method (MICMAC) plays a crucial role in systematically categorizing the factors influencing value addition. By evaluating the driving forces and dependencies among the various factors, MICMAC classifies them into distinct roles, such as core drivers, key hubs, or terminal performance factors. This classification not only reveals the unique contributions of each factor within the value-added system but also clarifies the interaction mechanisms between them. The multidimensional cross-validation feature of MICMAC ensures the stability of the relationships, offering a clear depiction of the intrinsic structure and core-periphery dynamics of the value-added system. Consequently, the analysis results provide a robust theoretical foundation for the formulation of hierarchical management strategies [
43].
2.5. Construction of the DEMATEL–TAISM Hybrid Model
- (1)
Construction of the Direct Original Matrix O
Based on questionnaire survey data, we construct a direct original matrix O among the 20 value-added influencing factors. Factor Oij represents the degree of direct influence of factor Si on factor Sj, as shown in Formula (1):
- (2)
Calculation of the Composite Influence Matrix T
The direct original matrix O is normalized using Formula (2) to obtain the normative influence matrix N. Subsequently, both the direct and indirect influence relationships between factors are considered, and the composite influence matrix T is calculated according to Formula (3):
- (3)
Identification of Factors Influencing Relevant Indicators
Utilizing the composite influence matrix T, the influencing degree (Di), influenced degree (Ci), centrality (Mi), and causality (Ri) of each value-added influencing factor are calculated as follows:
- (4)
Computation of the Overall Influence Matrix H
The overall influence matrix H is derived from the composite influence matrix T, representing the complete set of influence relationships across all factors in the system, integrating both direct and indirect influences:
- (5)
Formulation of the Reachable Matrix R
To identify the hierarchical structure and critical paths within the system, a threshold value λ is set. The overall influence matrix H is transformed into a binary logical reachable matrix R:
- (6)
Establishing the General Skeleton Matrix S
The reachable matrix R undergoes hierarchical optimization to eliminate redundant connections, resulting in a reduced reachable matrix R′. The nodes are then recovered to form the general skeleton matrix S, which clearly delineates the core hierarchical structure of the system:
- (7)
Calculation of the Matrix with Influence Values WS
The values in the composite influence matrix
T corresponding to the “1” values in the general skeleton matrix
S are retained to form the influence-valued skeletal matrix
TS, which contains the influence strength information. This matrix is subsequently used to identify and integrate cyclic relationships among factors, yielding the final matrix
WS, which provides quantitative edge weights for constructing hierarchical topological graphs [
44].
- (8)
Antagonistic Hierarchy Extraction
Two types of directed topological hierarchy diagrams are constructed based on the reachable matrix R:
UP type (Result-oriented): Factors that satisfy the condition T(ei) = R(ei) are placed at the lowest level (Level 0), and the hierarchy is subsequently decomposed downward layer by layer, following the reachability relationships.
DOWN type (Cause-priority): Factors meeting the condition
T(
ei) =
Q(
ei) are positioned at the lowest level (Level 5), and the hierarchy is constructed upward layer by layer, based on precedence relationships [
45].
- (9)
Calculation of Driving Force (Qi) and Dependence (Yi), and Construction of the Driving Force–Dependence Matrix
The driving force (Qi) and dependence (Yi) of each factor are derived from the row and column sums of the reachable matrix R, respectively:
Using the calculated (Qi) and (Yi) values, a driving force–dependence matrix is constructed, categorizing the factors into four types: autonomous cluster, dependent cluster, linkage cluster, and independent cluster. This categorization helps clarify the functional roles of each factor within the value-added system.
4. Discussion
To ensure the economic benefits and overall efficiency of government-invested EPC projects and achieve value addition, it is necessary to systematically build a control system from three levels: direct, transitional, and root. These three layers support and influence each other, collectively determining the project’s economic benefits and overall efficiency. The following analysis will systematically examine the key control factors and corresponding management strategies for each level to construct a comprehensive and in-depth project governance framework.
- 1.
Precise Control of Direct-level Factors to Ensure the Economic Benefits of EPC Project Construction
In government-invested EPC projects, the direct-level factors are pivotal for safeguarding the project’s economic outcomes. Inadequate management of these factors can result in substantial economic losses, which are both immediate and directly observable.
Factor S4 (reduction of contract disputes and claims) plays a critical role in protecting the economic interests of the project. It is essential for swiftly addressing disputes and minimizing the escalation of improper costs. However, the effectiveness of S4 is heavily contingent upon the stability of upstream processes. Specifically, ambiguities in contract terms at the root level and inefficiencies in change management during the transitional phase can exacerbate risks, increasing the likelihood of claims and disputes, which ultimately diminish project profits. To optimize the effectiveness of S4, it is crucial to continuously monitor contract performance, implement proactive dispute resolution mechanisms, and establish systematic claim prevention strategies. These measures will mitigate value losses caused by upstream risk transmission.
Similarly, S6 (control of material and equipment procurement costs) is instrumental in determining the competitiveness of the project’s cost baseline; effective cost optimization requires accurate market insights and strong negotiation strategies. However, the performance of S6 is highly sensitive to fluctuations in upstream and midstream factors. Design oversights or disruptions within the supply chain may lead to procurement cost premiums and project delays, resulting in compounded economic losses. Thus, dynamic cost monitoring and flexible procurement strategies should be incorporated, along with rapid supplier coordination and contingency planning. This proactive approach will enable the real-time detection of cost deviations and prompt adjustments to procurement strategies, thus preventing cost escalations and mitigating schedule risks stemming from design flaws or supply disruptions.
The overall aim of controlling direct-level factors is to establish a robust defense that intercepts upstream risks before they impact the project’s economic value. This strategy reinforces the protective barrier surrounding the project’s economic benefits.
- 2.
Strengthening Transitional-level Management to Enhance Overall EPC Project Efficiency
The transitional level plays a critical role in EPC projects by serving as the value transmission hub between root-level and direct-level factors. Optimizing the management of transitional-level factors is crucial for enhancing overall project efficiency and preventing the cross-level transmission of risks. Failure to manage this level effectively can result in stagnation of value-added pathways and exacerbate risks, severely undermining project performance.
S7 (integrated management and coordination) functions as a strategic lever for dismantling professional silos and promoting multi-stage collaboration. Its core objective is to systematically eliminate information barriers through integrated cross-functional platforms (e.g., Project Management Information Systems—PMIS) and establish regular coordination mechanisms. The effectiveness of S7 is crucial for ensuring the seamless transmission of value across upstream and downstream stages. If S7 is poorly implemented, root-level design improvements may fail to transition effectively into procurement and construction phases. Additionally, procurement control and dispute mitigation at the direct level may become ineffective due to communication breakdowns, leading to resource misallocation, schedule delays, and interface conflicts. Ensuring the efficient functioning of the S7 mechanism is, therefore, essential for fostering deep collaboration and the dynamic adaptation of resources across design, procurement, and construction stages.
S8 (optimized supply chain management) serves as a vital safeguard, ensuring timely and cost-effective resource availability while mitigating the risks associated with supply disruptions. Key strategies include tiered supplier management, strategic agreements, and optimized logistics planning. The stability of S8 is paramount for maintaining project continuity. During execution, disruptions in the supply chain or improper resource allocation can compromise procurement cost control, leading to cost overruns and delays. Moreover, these disruptions may necessitate adjustments to root-level designs, initiating a cascade of changes that deplete project value. Therefore, it is essential to establish an agile supply chain governance framework, supported by risk-buffering mechanisms, to ensure the uninterrupted delivery of critical resources. This will help shield the design and cost management layers from the adverse effects of supply fluctuations.
S11 (continuous monitoring and performance evaluation) serves as the central mechanism for dynamically calibrating project objectives and fostering continuous improvement. By implementing a multidimensional KPI system that encompasses quality, cost, schedule, safety, and compliance, coupled with periodic diagnostics and early-warning feedback, S11 provides real-time monitoring of project progress and deviations. Its key function is to deliver data-driven insights that inform decision-making at all levels of the project. In the absence of S11, deviations at the root level would remain unaddressed, compromising the effectiveness of transitional-level coordination and supply chain management, which would ultimately undermine direct-level protections. The data generated by S11, therefore, acts as the driving force for refining root-level strategies, optimizing transitional-level processes, and adjusting direct-level controls, ensuring that the project remains on course.
The S7–S8–S11 coordination framework creates a closed-loop system that integrates resource management, process coordination, and dynamic regulation. This system bridges the value transmission gap between the root and direct levels, significantly reducing the risk of cross-level risk amplification. Through continuous performance feedback, this framework facilitates comprehensive efficiency improvements, establishing a Pareto improvement paradigm that enhances the overall efficiency of government-invested EPC projects throughout their lifecycle.
- 3.
Implementing Root-level Strategies to Establish a Solid Foundation for EPC Project Construction
Root-level factors form the bedrock upon which both the economic benefits and overall efficiency of EPC projects are built. Inadequate management of these factors can initiate risk transmission downstream, leading to the erosion of project value and benefits.
S1 (detailed and explicit contractual clauses) is the foundational safeguard for risk management, ensuring clear definitions of rights, responsibilities, and risk allocation. A well-structured contract provides legal certainty and fosters collaborative stability throughout the project’s execution phase. The clarity of S1 is crucial in preventing downstream disputes. Previous case studies have demonstrated that ambiguous or poorly defined contract terms are often the root cause of subsequent disputes and claims, amplifying risks during execution. Therefore, investing adequate resources in contract negotiation and refinement during the initiation phase is critical to establishing a solid risk management foundation. This ensures that root-level issues do not evolve into direct conflicts that impact value addition.
S12 (collaborative participation in early planning and design phases) represents a strategic initiative for optimizing design and mitigating source risks. By adopting the Integrated Project Delivery (IPD) model or conducting cross-disciplinary workshops, early collaboration between owners, designers, contractors, key suppliers, and government approval agencies can be facilitated during the conceptualization and schematic design phases. The primary benefit of S12 lies in ensuring that the design solutions are constructible, procurable, and optimized for the project’s lifecycle. However, the effectiveness of S12 is contingent upon the depth of collaboration; insufficient early-stage coordination often results in design defects that initiate a chain of events including cost overruns, frequent revisions, and schedule delays. Strengthening early-stage collaboration, therefore, helps reduce rework costs, enhances overall coordination, and lays a solid foundation for project value addition.
Implementing root-level strategies is akin to establishing a strong foundation for the entire project. By focusing on robust contractual frameworks and optimizing design solutions from the outset, risks can be effectively contained in the early stages, preventing their escalation and ensuring the long-term economic success and efficiency of the project throughout its lifecycle.
Based on the preceding analysis, the implementation of a systematic three-tiered governance model—encompassing the root, transitional, and direct layers—is crucial for ensuring the economic viability and enhancing the value addition of government-invested EPC projects. These three layers are interconnected and mutually reinforcing, forming an organically integrated management framework that mitigates risks and promotes seamless project delivery.
In accordance with the scientific findings presented in previous chapters, this study confirms its core hypothesis: the integrated DEMATEL–TAISM–MICMAC model provides a comprehensive analytical framework capable of effectively revealing the value-added mechanism in government-invested EPC projects. The empirical results are highly consistent with our hypothesis, proving the model’s robustness in dissecting complex value-added pathways and supporting strategic formulation.