Designing A Sustainable Waste Chain Network for Banana Farm Under Uncertainty: A Case Study
Subject Areas : Supply chain management and logisticsMahla Zhian Vamarzani 1 , Fardin Rezaei Zeynali 2 , AmirReza Tajally 3 , Mohammad Parvin 4
1 - School of Industrial Engineering, Rouzbahan University, Mazandaran, Iran
2 - School of Industrial Engineering, College of Engineering, University of Tehran, Tehran, Iran
3 - School of Industrial Engineering, College of Engineering, University of Tehran
4 - Department of Industrial and Systems Engineering, Auburn University, Auburn, AL, USA
Keywords: Waste Chain Configuration, Agri-food Waste Management, Sustainability, Banana Farm, Goal Programming,
Abstract :
In recent years, due to the significant increase in global food demand, waste management in the agri-food industry has emerged as a major and complex challenge. The literature review indicates a significant gap in research, as no prior studies have investigated the waste chain configuration problem for banana farms specifically. Consequently, this study aims to address this gap by focusing on designing an efficient waste chain system for banana farms, incorporating all three pillars of sustainability—financial, social, and environmental. Waste produced in banana farms after harvesting can be repurposed in various industries, including energy production, compost manufacturing, and animal feed. Therefore, this research proposes a multi-objective mathematical model to optimize sustainability goals. Additionally, to address uncertainties in the model, the Robust Fuzzy Optimization (RFO) method is applied. Next, the study introduces a novel solution approach named stochastic Chebyshev Multi-Choice Goal Programming with Utility Function (CMCGP-UF) and tests it using a real-world case study. The results demonstrate both the effectiveness and efficiency of the developed method. Moreover, several sensitivity analyses are conducted to assess the impact of key model parameters on the research problem. Lastly, managerial insights and practical recommendations are provided for real-world application.
Abulibdeh, A., Zaidan, E., & Abulibdeh, R. (2024). Navigating the confluence of artificial intelligence and education for sustainable development in the era of industry 4.0: Challenges, opportunities, and ethical dimensions. Journal of Cleaner Production, 140527.
Adisa, O., Ilugbusi, B. S., Adelekan, O. A., Asuzu, O. F., & Ndubuisi, N. L. (2024). A comprehensive review of redefining agricultural economics for sustainable development: Overcoming challenges and seizing opportunities in a changing world. World Journal Of Advanced Research and Reviews, 21(1), 2329–2341.
Alzate Acevedo, S., Díaz Carrillo, Á. J., Flórez-López, E., & Grande-Tovar, C. D. (2021). Recovery of banana waste-loss from production and processing: a contribution to a circular economy. Molecules, 26(17), 5282.
Chauhan, A., Debnath, R. M., & Singh, S. P. (2018). Modelling the drivers for sustainable agri-food waste management. Benchmarking: An International Journal, 25(3), 981–993.
Ciccullo, F., Cagliano, R., Bartezzaghi, G., & Perego, A. (2021). Implementing the circular economy paradigm in the agri-food supply chain: The role of food waste prevention technologies. Resources, Conservation and Recycling, 164, 105114.
Foroozesh, N., Karimi, B., Mousavi, S. M., & Mojtahedi, M. (2023). A hybrid decision-making method using robust programming and interval-valued fuzzy sets for sustainable-resilient supply chain network design considering circular economy and technology levels. Journal of Industrial Information Integration, 33, 100440.
Gholian-Jouybari, F., Hajiaghaei-Keshteli, M., Bavar, A., Bavar, A., & Mosallanezhad, B. (2023). A design of a circular closed-loop agri-food supply chain network—A case study of the soybean industry. Journal of Industrial Information Integration, 36, 100530.
Hernandez, D., Pasha, L., Yusuf, D. A., Nurfaizi, R., & Julianingsih, D. (2024). The role of artificial intelligence in sustainable agriculture and waste management: Towards a green future. International Transactions on Artificial Intelligence, 2(2), 150–157.
Kumar, P., Raj, A., & Kumar, V. A. (2024). Approach to Reduce Agricultural Waste via Sustainable Agricultural Practices. In Valorization of Biomass Wastes for Environmental Sustainability: Green Practices for the Rural Circular Economy (pp. 21–50). Springer.
Mamashli, Z., & Javadian, N. (2020). Sustainable design modifications municipal solid waste management network and better optimization for risk reduction analyses. Journal of Cleaner Production, 123824. https://doi.org/https://doi.org/10.1016/j.jclepro.2020.123824
Mamashli, Z., Nayeri, S., Tavakkoli-Moghaddam, R., Sazvar, Z., & Javadian, N. (2021). Designing a sustainable–resilient disaster waste management system under hybrid uncertainty: A case study. Engineering Applications of Artificial Intelligence, 106, 104459.
Mehmood, A., Ahmed, S., Viza, E., Bogush, A., & Ayyub, R. M. (2021). Drivers and barriers towards circular economy in agri‐food supply chain: a review. Business Strategy & Development, 4(4), 465–481.
Mirzagoltabar, H., Shirazi, B., Mahdavi, I., & Arshadi Khamseh, A. (2023). Integration of sustainable closed-loop supply chain with reliability and possibility of new product development: a robust fuzzy optimisation model. International Journal of Systems Science: Operations & Logistics, 10(1), 2119112.
Mondal, A., Giri, B. K., Roy, S. K., Deveci, M., & Pamucar, D. (2024). Sustainable-resilient-responsive supply chain with demand prediction: An interval type-2 robust programming approach. Engineering Applications of Artificial Intelligence, 133, 108133.
Nath, P. C., Mishra, A. K., Sharma, R., Bhunia, B., Mishra, B., Tiwari, A., Nayak, P. K., Sharma, M., Bhuyan, T., & Kaushal, S. (2024). Recent advances in artificial intelligence towards the sustainable future of agri-food industry. Food Chemistry, 138945.
Nayeri, S., Khoei, M. A., Rouhani-Tazangi, M. R., GhanavatiNejad, M., Rahmani, M., & Tirkolaee, E. B. (2023). A data-driven model for sustainable and resilient supplier selection and order allocation problem in a responsive supply chain: A case study of healthcare system. Engineering Applications of Artificial Intelligence, 124, 106511.
Nayeri, S., Paydar, M. M., Asadi-Gangraj, E., & Emami, S. (2020). Multi-objective Fuzzy Robust Optimization Approach to Sustainable Closed-Loop Supply Chain Network Design. Computers & Industrial Engineering, 106716.
Nayeri, S., Sazvar, Z., & Heydari, J. (2022). A fuzzy robust planning model in the disaster management response phase under precedence constraints. Operational Research, 1–35.
Nayeri, S., Sazvar, Z., & Heydari, J. (2023). Designing an IoT-enabled supply chain network considering the perspective of the Fifth Industrial Revolution: Application in the medical devices industry. Engineering Applications of Artificial Intelligence, 122, 106113.
Perdana, T., Kusnandar, K., Perdana, H. H., & Hermiatin, F. R. (2023). Circular supply chain governance for sustainable fresh agricultural products: Minimizing food loss and utilizing agricultural waste. Sustainable Production and Consumption, 41, 391–403.
Rațu, R. N., Veleșcu, I. D., Stoica, F., Usturoi, A., Arsenoaia, V. N., Crivei, I. C., Postolache, A. N., Lipșa, F. D., Filipov, F., & Florea, A. M. (2023). Application of Agri-food by-products in the food industry. Agriculture, 13(8), 1559.
Sazvar, Z., Tafakkori, K., Oladzad, N., & Nayeri, S. (2021). A Capacity Planning Approach for Sustainable-Resilient Supply Chain Network Design under Uncertainty: A Case Study of Vaccine Supply Chain. Computers & Industrial Engineering, 107406.
Sazvar, Z., Tavakoli, M., Ghanavati-Nejad, M., & Nayeri, S. (2022). Sustainable-resilient supplier evaluation for high-consumption drugs during COVID-19 pandemic using a data-driven decision-making approach. Scientia Iranica.
Talaei, M., Moghaddam, B. F., Pishvaee, M. S., Bozorgi-Amiri, A., & Gholamnejad, S. (2016). A robust fuzzy optimization model for carbon-efficient closed-loop supply chain network design problem: a numerical illustration in electronics industry. Journal of Cleaner Production, 113, 662–673.
Tran, T. H., Nguyen, T. B. T., Le, H. S. T., & Phung, D. C. (2024). Formulation and solution technique for agricultural waste collection and transport network design. European Journal of Operational Research, 313(3), 1152–1169.