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Sustainable Sugar Agro-Industrial Value Chain: An Integrated Lean Framework for Risk Management, Circularity, and Artificial Intelligence

Author

Listed:
  • Yasniel Sánchez Suárez

    (Department of Industrial Engineering, Faculty of Industrial Engineering, Matanzas University, Matanzas 40100, Cuba
    Center for Future Studies, RUTA FUTURO Local Development Project, Matanzas 40100, Cuba)

  • Darian Samá Muñoz

    (Center for Future Studies, RUTA FUTURO Local Development Project, Matanzas 40100, Cuba
    Department of Agro-Industrial Engineering, Faculty of Technical Sciences, Agricultural University of Havana, San José de las Lajas, Mayabeque 32700, Cuba)

  • José Armando Pancorbo Sandoval

    (Faculty of Law, Administrative Science and Social Sciences, UTE University, Santo Domingo Campus, Santo Domingo 170129, Ecuador)

  • Leonardo Ernesto Domínguez Díaz

    (Department of Industrial Engineering, Faculty of Industrial Engineering, Matanzas University, Matanzas 40100, Cuba
    Center for Future Studies, RUTA FUTURO Local Development Project, Matanzas 40100, Cuba)

  • Arialys Hernández Nariño

    (Center for Future Studies, RUTA FUTURO Local Development Project, Matanzas 40100, Cuba
    Directorate of Science and Technological Innovation, Medical University of Matanzas, Matanzas 40100, Cuba)

  • Maylín Marqués León

    (Department of Industrial Engineering, Faculty of Industrial Engineering, Matanzas University, Matanzas 40100, Cuba
    Center for Future Studies, RUTA FUTURO Local Development Project, Matanzas 40100, Cuba)

  • Marcos Antonio Espinosa Blanco

    (Department of Bioinformatics, Faculty of Computational Sciences and Technologies, University of Informatics Sciences, Havana 19370, Cuba)

Abstract

Sustainable management of sugar agro-industrial value chains requires a multidimensional approach that integrates economic, environmental, and social criteria. Current literature addresses risk management, circularity, and artificial intelligence in isolation, without an integrated framework that generates synergistic value. The objective of this research is to validate an integrated framework for the sustainable management of sugar agro-industrial value chains. A mixed-methods, qualitative-quantitative, descriptive-retrospective study was conducted on the Cuban sugar agro-industry during 2023–2025. The procedure was structured into five phases and 10 stages; Petri net simulation was used to validate its logical consistency. Material, economic-financial, and knowledge flows were mapped; 16 stakeholder groups and their influence–dependence relationships were analyzed; 41 risks were identified, of which six were classified as critical. Simulation-based scenario modeling, which integrates risk, circularity, and AI interventions, projects an average potential reduction of 33.4% in total chain lead time, pending empirical validation. Petri nets confirmed the absence of connectivity errors, free-choice violations, and flow noise, formally validating the logical consistency of the procedure. The research supports the hypothesis that an integrated framework combining risk management, circularity, and AI, validated using Petri nets for logical consistency, projects improvements in the efficiency and sustainability of the value chain.

Suggested Citation

  • Yasniel Sánchez Suárez & Darian Samá Muñoz & José Armando Pancorbo Sandoval & Leonardo Ernesto Domínguez Díaz & Arialys Hernández Nariño & Maylín Marqués León & Marcos Antonio Espinosa Blanco, 2026. "Sustainable Sugar Agro-Industrial Value Chain: An Integrated Lean Framework for Risk Management, Circularity, and Artificial Intelligence," Sustainability, MDPI, vol. 18(13), pages 1-32, June.
  • Handle: RePEc:gam:jsusta:v:18:y:2026:i:13:p:6389-:d:1973496
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