UP - logo
E-resources
Full text
Peer reviewed Open access
  • Sustainable supply chain ma...
    Tsai, Feng Ming; Bui, Tat-Dat; Tseng, Ming-Lang; Ali, Mohd Helmi; Lim, Ming K.; Chiu, Anthony SF

    Resources, conservation and recycling, April 2021, 2021-04-00, Volume: 167
    Journal Article

    •This study aims to imply a data-driven analysis for sustainable supply chain management.•A hybrid methods are adopted due to the uncertainty and complexity.•Big-data, closed-loop supply chain, industry 4.0, policy, remanufacturing, supply chain network design are the indicators for trends and challenges.•Latin America and Caribbean, and Africa shows for improvement by distinct apprehensions on eco-efficiency and risk management. This study proposes a data-driven analysis that describes the overall situation and reveals the factors hindering improvement in the sustainable supply chain management field. The literature has presented a summary of the evolution of sustainable supply chain management across attributes. Prior studies have evaluated different parts of the supply chain as independent entities. An integrated systematic assessment is absent in the extant literature and makes it necessary to identify potential opportunities for research direction. A hybrid of data-driven analysis, the fuzzy Delphi method, the entropy weight method and fuzzy decision-making trial and evaluation laboratory is adopted to address uncertainty and complexity. This study contributes to locating the boundary of fundamental knowledge to advance future research and support practical execution. Valuable direction is provided by reviewing the existing literature to identify the critical indicators that need further examination. The results show that big data, closed-loop supply chains, industry 4.0, policy, remanufacturing, and supply chain network design are the most important indicators of future trends and disputes. The challenges and gaps among different geographical regions is offered that provides both a local viewpoint and a state-of-the-art advanced sustainable supply chain management assessment. Display omitted