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An equitable and accessible vaccine supply chain network in the epidemic outbreak of COVID-19 under uncertainty

Vaccination is one of the most efficient ways to restrict and control the spread of epidemic outbreaks such as COVID-19. Due to the limited COVID-19 vaccine supply, an equitable and accessible plan should be prepared to cope with. This research focuses on designing a vaccine supply chain while aimin...

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Published in:Journal of ambient intelligence and humanized computing 2023-11, Vol.14 (11), p.14695-14719
Main Authors: Shiri, Mahdyeh, Ahmadizar, Fardin
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description Vaccination is one of the most efficient ways to restrict and control the spread of epidemic outbreaks such as COVID-19. Due to the limited COVID-19 vaccine supply, an equitable and accessible plan should be prepared to cope with. This research focuses on designing a vaccine supply chain while aiming to achieve an equitable and accessible network. We present a novel mathematical formulation that helps to optimize vaccine distribution to inoculate people with various priority levels to achieve an equitable plan. The transshipment strategy is also incorporated into the model to enhance the accessibility of COVID-19 vaccine types between health facilities. The nature of COVID-19 is dynamic over time due to mutations, and the protection level of each vaccine type against this disease is not exact. Besides, complete information about the demand for different vaccine types is not available. Hence, we use Multi-Stage Stochastic Programming as a reliable strategy that is organized to manage stochastic data in a dynamic environment for the first time in the vaccine supply chain network. The scenarios in this approach are generated using a Monte Carlo simulation method, and then a forward scenario reduction technique is conducted to construct a suitable scenario tree. The practicality and capability of the model are shown in a real-life case of Iran. The results show that the performance of the Multi-Stage Stochastic Programming is significantly improved compared with the two-stage stochastic programming regarding the total cost of the vaccine supply chain and the number of the shortage units.
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subjects Accessibility
Artificial Intelligence
Computational Intelligence
Coronaviruses
COVID-19 vaccines
Disease control
Engineering
Epidemics
Health care facilities
Health facilities
Immunization
Monte Carlo simulation
Original Research
Outbreaks
Pandemics
Robotics and Automation
Stochastic programming
Supply chains
User Interfaces and Human Computer Interaction
Vaccines
Viral diseases
title An equitable and accessible vaccine supply chain network in the epidemic outbreak of COVID-19 under uncertainty
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