A decision analytics pipeline for balancing business, environmental and social impacts of supply chain disruptions

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Date
2025-09-27
Authors
Babazadeh, Reza
Ozturk, Cemalettin
O’Sullivan, Barry
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Publisher
Elsevier
Research Projects
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Abstract
Supply chain resilience is essential for maintaining global economic stability and ensuring the continuous delivery of goods and services. This study introduces a new decision analytics framework to stress test supply chains by improving robustness, addressing network vulnerabilities, and developing adaptive mitigation strategies. The proposed approach includes a modifed Time to Survive (TTS) model, a sustainable mitigation planning Time to Recover (TTR) model, and a sequential Monte Carlo simulation to measure variability in mitigation plans. It focuses on reducing business, environmental, and social impacts while supporting strategies such as dual sourcing and capacity reallocation. Multi-objective mathematical programming and open-source technologies are used to develop the framework. Computational experiments with a synthetic supply chain network generator confirm its scalability, efficiency, and practical value.
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Keywords
Supply chain resiliency , Stress testing , Time to Survive , Time to Recover , Variable quantifcation
Citation
Babazadeh, R., Ozturk, C. and O’Sullivan, B. (2025) 'A decision analytics pipeline for balancing business, environmental and social impacts of supply chain disruptions', IFAC-PapersOnLine, 59(10), pp. 2862–2867. https://doi.org/10.1016/j.ifacol.2025.09.481
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