Quoc-Hieu Phan | Logistics | Best Researcher Award

Mr. Quoc-Hieu Phan | Logistics | Best Researcher Award

PhD Student at Chaoyang University of Technology in Taiwan.

Quoc-Hieu Phan is a Ph.D. student at Chaoyang University of Technology in Taiwan and a former lecturer in Ho Chi Minh City, Vietnam. His academic focus lies in the intersection of logistics, AI, and knowledge management, driven by the growing complexity and sustainability demands of global supply chains. With a strong foundation in applied research, he has published in both Q1 and Q2 journals, positioning himself as an emerging voice in logistics innovation. His work leverages neutrosophic logic and decision-making models to address pressing challenges in reverse logistics and ESG implementation within emerging economies. With a clear orientation toward sustainability and operational intelligence, Phan’s research continues to bridge the gap between theoretical modeling and practical application, earning him recognition within the academic community.

Professional Profile

ORCID

Education 

Quoc-Hieu Phan is currently pursuing his doctoral studies at Chaoyang University of Technology, Taiwan. His academic progression reflects a strong commitment to both teaching and research. Prior to enrolling in the Ph.D. program, he served as a lecturer in Vietnam, where he developed expertise in logistics systems, management science, and interdisciplinary problem-solving frameworks. His formal education is complemented by his practical experiences and early involvement in academic publishing. Although specific undergraduate and master’s credentials are not detailed, his role as a university lecturer and active researcher indicates a robust educational background grounded in logistics, operations research, and decision sciences. His doctoral training at Chaoyang University of Technology has enabled him to explore advanced modeling techniques such as Neutrosophic and DEMATEL frameworks, particularly in the context of sustainability and supply chain optimization.

Experience 

Before embarking on his Ph.D. journey, Quoc-Hieu Phan served as a lecturer in logistics and management in Ho Chi Minh City, Vietnam. His teaching roles allowed him to mentor undergraduate students, design logistics-focused curricula, and supervise early-stage research projects. This teaching experience enriched his research, helping him stay grounded in real-world logistics problems faced by emerging economies. His academic exposure transitioned into high-quality research outputs upon joining Chaoyang University of Technology, where he has focused intensively on sustainability and operational challenges in logistics. Phan’s practical insight into Southeast Asian logistics infrastructure and policy has played a crucial role in shaping his scholarly contributions. His dual engagement in education and research enables him to maintain a balance between theoretical advancement and application-oriented innovation.

Research Focus

Quoc-Hieu Phan’s research centers on sustainable logistics, reverse logistics optimization, knowledge sharing frameworks, and the integration of artificial intelligence into supply chain design. His methodological toolkit includes Neutrosophic logic, Delphi methods, and the DEMATEL approach, which he applies to multi-criteria decision-making problems. A distinguishing feature of his work is the focus on ESG (Environmental, Social, and Governance) dimensions of logistics—particularly in emerging economies where sustainability transitions are both urgent and complex. His studies aim to identify critical barriers and propose robust, adaptive frameworks for strategic planning and policy design. Through his research, Phan contributes to the advancement of resilient and environmentally responsible supply chains, offering both theoretical innovation and actionable insights. His work stands at the confluence of computational intelligence, sustainability science, and logistics operations.

Publication Top Notes

Title: Towards sustainable logistics in emerging economies: Identifying ESG barriers using newtrosophic delphi-dematel model
Authors: Quoc-Hieu Phan; Thanh-Ngan Le; Phi-Hung Nguyen; Lan-Anh Thi Nguyen; Tra-Giang Vu
Journal: Journal of Open Innovation: Technology, Market, and Complexity
Summary: This paper addresses the lack of structured ESG (Environmental, Social, Governance) strategies in the logistics sector of emerging economies. Using the Neutrosophic Delphi-DEMATEL model, the authors identify critical ESG barriers that hinder sustainable logistics implementation. This hybrid decision-making model allows for uncertainty, fuzziness, and expert-driven feedback loops, leading to a prioritized set of challenges and corresponding intervention pathways. The paper offers a systemic approach to ESG integration, contributing to policymaking and sustainable supply chain redesign in emerging markets.
Authors: Thanh-Ngan Le; Quoc-Hieu Phan; Phi-Hung Nguyen; Lan-Anh Thi Nguyen
Repository: Zenod

Title: Rethinking Reverse Logistics: Neutrosophic Strategies for Warehouse Management Challenges
Authors: Thanh-Ngan Le; Quoc-Hieu Phan; Phi-Hung Nguyen; Lan-Anh Thi Nguyen
Repository: Zenodo
Summary: This article explores reverse logistics challenges in warehouse environments and proposes neutrosophic logic-based solutions for strategic decision-making. The authors model uncertain conditions in warehouse operations, such as product returns, restocking complexities, and space utilization inefficiencies. Their neutrosophic framework improves responsiveness and resilience in reverse logistics systems by quantifying uncertainty and offering flexible decision alternatives. The research has practical implications for warehouse managers aiming to enhance efficiency in post-consumer logistics.

Conclusion

This article explores reverse logistics challenges in warehouse environments and proposes neutrosophic logic-based solutions for strategic decision-making. The authors model uncertain conditions in warehouse operations, such as product returns, restocking complexities, and space utilization inefficiencies. Their neutrosophic framework improves responsiveness and resilience in reverse logistics systems by quantifying uncertainty and offering flexible decision alternatives. The research has practical implications for warehouse managers aiming to enhance efficiency in post-consumer logistics.

Vahid Yahyapour Ganji | Machine Learning Applications | Best Researcher Award

Mr. Vahid Yahyapour Ganji | Machine Learning Applications | Best Researcher Award

Ph.D. Candidate at Kharazmi Universtiy in Iran.

Vahid Yahyapour Ganji is a supply chain researcher and analyst with a deep-rooted expertise in data-driven decision-making, mathematical optimization, and logistics systems. With a career bridging academia and industry, he has contributed to several high-impact studies on supply chain resilience, sustainability, and robust network design. Currently a Supply Chain Business Analyst at Farapokht, Tehran, he supports strategic procurement and risk analysis using advanced modeling tools. He is the co-author of multiple journal articles focused on optimization under uncertainty, vehicle routing, and digital transformation in logistics. His recent work emphasizes circular supply chains and integrates machine learning principles for performance evaluation. Vahid’s pragmatic background in LTL logistics, production planning, and systems analytics enhances his ability to approach research with operational insight. His analytical thinking and interdisciplinary skill set position him at the forefront of real-world machine learning applications in industrial systems.

Professional Profiles

Google Scholar | ORCID

Strengths for the Award

Vahid Yahyapour Ganji demonstrates a strong and evolving research trajectory in the fields of supply chain engineering, optimization, and logistics. His work, especially the recent publication on robust and data-driven circular supply chain networks, showcases a sophisticated understanding of resilience and responsiveness—key pillars in modern supply chain design. This research is particularly relevant in today’s dynamic socio-economic context where adaptability and sustainability are critical.

He has consistently engaged with high-impact problems through advanced mathematical modeling, optimization under uncertainty, and multi-objective frameworks. His publication record spans reputable journals and includes topics such as sustainable vehicle routing, hierarchical hub location problems, and digital resilience frameworks, indicating breadth as well as depth in his domain.

Moreover, his academic background is fortified by a top-ranked Master’s degree, where he was awarded a full scholarship and ranked third among graduates. He complements this academic excellence with a diverse set of practical experiences in project planning, supply chain supervision, and business analytics—contributing to the real-world relevance of his research. His technical proficiency in tools such as Python, GAMS, Power BI, and AnyLogistix further underlines his readiness to tackle data-intensive, complex modeling tasks.

Education Summary 

Vahid Yahyapour Ganji earned his Master of Science in Logistics and Supply Chain Engineering from Kharazmi University (Tehran), where he graduated with distinction. His thesis focused on multi-objective mathematical modeling for hierarchical hub locations under congestion and uncertainty—a theme consistent throughout his later work. His coursework emphasized simulation, optimization, and multi-criteria decision-making using fuzzy logic and probabilistic tools. Prior to his master’s degree, he completed a Bachelor’s in Industrial Engineering at Iran University of Science and Technology, with a thesis focused on stock index prediction using artificial neural networks. This early interest in machine learning laid the groundwork for his future data-driven research. His academic foundation is further enriched by practical knowledge in transportation systems, logistics design, and applied operations research, positioning him as a data-literate problem-solver capable of advancing industrial applications through innovative algorithmic approaches.

Professional Experience

Vahid Yahyapour Ganji’s professional journey showcases a progression through multiple strategic and analytical roles across Iran’s industrial sector. He began as a Project Planning Engineer at Omran Sazan Mahab, managing EPS infrastructure timelines and resource allocation. At Tipax, he played a pioneering role in Iran’s first Less Than Truckload (LTL) service, overseeing pricing and last-mile logistics. He then served as Production Planning Supervisor at Nouyan Negin Parsian, where he led forecasting and BPMN-driven process improvements. As Product Manager and Sales Planning Manager at Tejarat Gostar Arisa, he shaped B2B product portfolios and built performance dashboards to streamline operations. Presently, at Farapokht, he drives supply chain analytics, trend forecasting, and vendor evaluation. Across these roles, he integrates business intelligence tools, such as Power BI and simulation platforms, with domain expertise—bridging data science and operations to deliver strategic outcomes.

Research Focus

Vahid Yahyapour Ganji’s research lies at the intersection of machine learning, supply chain optimization, and decision-making under uncertainty. His central focus is on developing robust, data-driven models that enhance supply chain resilience, circularity, and responsiveness. He employs advanced operations research techniques—such as multi-objective programming, stochastic modeling, and fuzzy systems—to address real-world logistics challenges. Vahid is particularly invested in integrating machine learning algorithms to optimize performance evaluations, sustainability metrics, and network structures. His work spans topics such as sustainable vehicle routing under variable traffic, hub location modeling with congestion, and DLARG (Digital, Lean, Agile, Resilient, Green) frameworks for energy systems. His methodological contributions emphasize adaptability, scalability, and real-time responsiveness—vital qualities for modern logistics systems in uncertain environments. His deep understanding of non-convex optimization and simulation tools empowers him to craft innovative, machine-learning-enabled solutions for global supply chain challenges.

Award and Honor

Vahid Yahyapour Ganji has been consistently recognized for his academic and analytical excellence. During his Master’s studies at Kharazmi University, he ranked third among his cohort and was awarded a full three-year academic scholarship in recognition of his academic performance and research potential. His leadership in multiple industry-academic research projects has also been acknowledged through co-authorships with senior researchers and repeated invitations to collaborate on optimization-centric publications. His participation in national conferences on entrepreneurship and business management adds to his scholarly contributions. Furthermore, his academic track record—coupled with his interdisciplinary research output—demonstrates not only individual achievement but also a commitment to solving large-scale, practical challenges in logistics and operations. These distinctions, along with his growing presence in peer-reviewed publications, make him a noteworthy candidate for recognition in machine learning application research.

Publication Top Notes

Title: A robust design of a circular supply chain network based on the resilience and responsiveness dimensions: A data-driven model
Authors: Vahid Yahyapour Ganji, Ehsan Hozan, Parisa Babolhavaeji, AmirReza Tajally, Mohssen GhanavatiNejad
Journal: Socio-Economic Planning Sciences, July 2025
Summary:
This article proposes a robust framework for designing circular supply chain networks by incorporating resilience and responsiveness as dual performance dimensions. The model employs a data-driven optimization approach that integrates real-time variability, uncertainty, and recovery capabilities, using machine learning-inspired data structuring. The authors provide case-based validation demonstrating how the model enhances network agility and sustainability.

Conclusion

Overall, Vahid Yahyapour Ganji presents a highly promising profile for the Best Researcher Award. His ability to combine theoretical rigor with practical insight into sustainable supply chain systems is a significant asset. His recent work on resilient and responsive circular supply chains addresses a critical global challenge and reflects a mature, impactful research direction. With further development of his publication portfolio and broader academic engagement, he stands out as a strong candidate deserving of recognition for his research contributions.