DESIGNING OF DIGITAL SUPPLY CHAIN TWINS TO IMPROVE SUPPLY CHAIN RESILIENCE USING MACHINE LEARNING AND SIMULATION MODELS
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Date
2024
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State University of New York at Binghamton
Abstract
Due to global diversification and risk, supply chain resiliency has become crucial.
Supply chain risks must be identified, assessed, and mitigated to preserve continuity and
gain a competitive edge. Although supply chain disruptions have been a problem for a long
time, researchers need to pay more attention to using modern technology to develop
resilient supply systems. Digital twin technology offers significant benefits to supply chain
management through real-time monitoring, simulation, and optimization. This research
looks into leveraging advanced technology by integrating a digital twin environment into
supply chains, which could be used to mitigate disruptions. Moreover, this research aims
to study how the digital supply chain twin' improves and manages the supply chain's
resilience using machine learning and simulation models. Thus, this research seeks to
address two gaps: knowledge and methodology. This study's contributions include
designing a phase to integrate a digital twin into the supply chain, developing a conceptual
resilient digital supply chain twin framework, modeling a digital supply chain twin using
machine learning and simulation to improve supply chain resilience, and validating the
model by case study.
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Keywords
Systems Science-Industrial Engineering-Supply Chain-Machine Learning-Simulation