System Engineering and Productivity

System Engineering and Productivity

Designing a Green Closed-Loop Supply Chain Network for Pharmaceutical Products Using Cuckoo Search Algorithm

Document Type : Research Paper

Authors
1 Corresponding author: Assistant Professor, Department of Industrial Engineering, South Tehran Branch, Islamic Azad University, Tehran, Iran
2 M.Sc., Department of Industrial Engineering, South Tehran Branch, Islamic Azad University, Tehran, Iran
Abstract
Pharmaceutical companies face complex challenges in designing and managing their supply chains due to regulatory requirements at the national, international, and internal levels, along with government-imposed constraints such as the sourcing of raw materials, distribution, exchange rates, and production and storage conditions. Designing green and closed-loop supply chain networks can play a crucial role in reducing costs, increasing efficiency, and minimizing the environmental impact of the industry. In this paper, a model for designing green and closed-loop supply chains for pharmaceutical products is proposed, focusing on the optimal location of production, distribution, and recycling centers. The proposed model takes into account both internal factors, such as the selection of raw materials and green technologies, and external factors like optimal site selection and transportation system optimization. The goal of this model is to minimize fixed and operational costs, reduce environmental pollutant emissions, and enhance supply chain sustainability. To solve the problem, mathematical modeling was applied using GAMS software, and the Cuckoo Search Algorithm (CSA) was implemented in MATLAB software. This approach provides optimal and efficient solutions for complex problems, yielding reliable results. The findings of this research indicate that the proposed approach can play a significant role in improving performance and greening pharmaceutical supply chains.

Highlights

  • Development of a multi-objective mathematical model for the green closed-loop supply chain design.
  • Incorporation of product returns due to perishability and recall of side-effect medications in the pharmaceutical supply chain
  • Development of a Cuckoo Search Algorithm to solve the multi-objective model in large-scale instances

Keywords
Subjects

Copyright © Marzieh Mozafari, Jafar Savari

 

License

This article is released under the Creative Commons Attribution (CC BY 4.0) license. Anyone is free to copy, share, translate, and adapt this article for any purpose, whether commercial or non-commercial, as long as proper citation is given to the authors and original publication.

 

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Volume 5, Issue 1 - Serial Number 14
Serial No. 14, Spring Quarterly
Spring 2025
Pages 135-153

  • Receive Date 11 January 2025
  • Revise Date 10 February 2025
  • Accept Date 05 March 2025
  • First Publish Date 05 March 2025
  • Publish Date 22 May 2025