Modeling and Analyzing Supply Chain Reliability under Uncertainty: A Simulation-Based Study Using Real-World Data
DOI:
https://doi.org/10.33095/4d5mcx44الكلمات المفتاحية:
supply chain reliability, uncertainty, simulation, resilience, Risk Managementالملخص
This paper has presented a simulation-based framework for analyzing supply chain reliability under uncertainty, supported by a comprehensive literature review, theoretical grounding, and a real-world case study. The main contribution lies in demonstrating how simulation modeling — particularly hybrid approaches — can capture the complex dynamics of modern supply chains and provide decision-makers with practical tools for stress-testing, scenario planning, and reliability enhancement.
This study aims to evaluate supply chain reliability under uncertainty by integrating simulation and probabilistic modeling. The purpose is to investigate how disruptions in supply, demand, and logistics affect performance indicators such as service level, recovery time, costs, and lost sales, thereby offering insights for resilience planning. The theoretical foundation builds on contingency theory, complex adaptive systems, the resource-based view, and risk management frameworks to capture the dynamic and interdependent nature of supply chains.
This study aims to develop a comprehensive simulation-based framework for analyzing and enhancing supply chain reliability under conditions of uncertainty. It differs from previous studies in that they addressed individual elements such as supplier disruptions or logistics, while this study considers them collectively, making it more comprehensive. Furthermore, it utilizes simulations of discrete events to measure the impact of interactions and support decision-making.
The research used the analytical method in order to formulate hypotheses and build simulation models to reach the results in order to formulate the practical part. The main reason behind relying on the simulation method in this study is the limited availability of actual data needed to build an integrated statistical or standard model, in addition to the small sample size, which does not allow for accurate and reliable statistical analyses.
The simulation results underscore that supply chain reliability cannot be assured through isolated optimization efforts. Instead, organizations must adopt systems thinking, where risks in supply, demand, and logistics are assessed in an integrated manner. The conceptual framework developed in Section 3 and validated through the case study in Section 5 serves as a replicable methodology for similar assessments in other industries.
التنزيلات
المراجع
Reference:
A. Rashid, F. A., Hishamuddin, H., Saibani, N., Abu Mansour, M. R., & Harun, Z. (2022). A Review of Supply Chain Uncertainty Management in the End-of-Life Vehicle Industry. Sustainability, 14(19), 12573. https://doi.org/10.3390/su141912573
Alsaleh, T., & Farooq, B. (2025). Simulation models for sustainable, resilient, and optimized global electric vehicles supply chain. Scientific Reports.
Ascari, G., Bonam, D., & Smadu, A. (2024). Global supply chain pressures, inflation, and implications for monetary policy. Journal of International Money and Finance, 142, 103029. https://doi.org/10.1016/j.jimonfin.2024.103029
Banks, J. (2005). Discrete event system simulation. (Pearson Education India. Ed.).
Camur, M. C., Ravi, S. K., & Saleh, S. (2024). Enhancing supply chain resilience: A machine learning approach for predicting product availability dates under disruption. Expert systems with applications, 247, 123226.
Fosso Wamba, S., Queiroz, M. M., Guthrie, C., & Braganza, A. (2022). Industry experiences of artificial intelligence (AI): benefits and challenges in operations and supply chain management. Production Planning & Control, 33(16), 1493–1497. https://doi.org/10.1080/09537287.2021.1882695
Habibie, F., Chakraborty, R. K., & Abbasid, A. (2023). Evaluating supply chain network resilience considering disruption propagation. Computers & Industrial Engineering, 183, 109531. https://doi.org/10.1016/j.cie.2023.109531
Hu, Y. (2023). Perspectives in closed-loop supply chains network design considering risk and uncertainty factors. arXiv preprint arXiv:2306.04819.
Ivanov, D. (2021). Supply Chain Viability and the COVID-19 pandemic: a conceptual and formal generalization of four major adaptation strategies. International Journal of Production Research, 59(12), 3535–3552. https://doi.org/10.1080/00207543.2021.1890852
Jabber, M. Y., & Peltokorpi, J. (2024). Economic order/production quantity (EOQ/EPQ) models with product recovery: A review of mathematical modeling (1967–2022). Applied Mathematical Modelling, 129, 655–672. https://doi.org/10.1016/j.apm.2024.02.022
Khan, M. N., Akhtar, P., Zhang, L. L., & Khan, Z. (2024). Operating in environments affected by uncertainty: Supply chain finance, timely information sharing using advanced technology, and financial performance in Supply Chain Management 4.0. Journal of General Management, 50(1), 37–52. https://doi.org/10.1177/03063070241263155
Law, A. M. (2015). Simulation Modeling and Analysis. (5th International, Ed.).
Lazebnik, T. (2025). Evaluating supply chain resilience during pandemic using agent-based simulation. Physica A: Statistical Mechanics and its Applications, 130780.
Liu, W., & Liu, Z. (2023). Simulation Analysis of Supply Chain Resilience of Prefabricated Building Projects Based on System Dynamics. Buildings, 13(10), 2629. https://doi.org/10.3390/buildings13102629
Luckier, F., Timonina-Farkas, A., & Seifert, R. W. (2025). Balancing Resilience and Efficiency: A Literature Review on Overcoming Supply Chain Disruptions. Production and Operations Management, 34(6), 1495–1511. https://doi.org/10.1177/10591478241302735
Mickle, T., McCabe, D., & Swanson, A. (2023). How the big chip makers are pushing back on Biden’s China agenda. . The New York Times, 5.
Mirzaaliyan, M., Hajian Heidary, M., & Amir, M. (2024). Evaluating the supply chain resilience strategies using discrete event simulation and hybrid multi-criteria decision-making (case study: natural stone industry). Journal of Simulation, 18(5), 851–867. https://doi.org/10.1080/17477778.2024.2342927
Moktadir, M. A., & Ren, J. (2024). Global semiconductor supply chain resilience challenges and mitigation strategies: A novel integrated decomposed fuzzy set Delphi, WINGS and QFD model. International Journal of Production Economics, 273, 109280. https://doi.org/10.1016/j.ijpe.2024.109280
Pournader, M., Kach, A., & Talluri, S. (Sri). (2020). A Review of the Existing and Emerging Topics in the Supply Chain Risk Management Literature. Decision Sciences, 51(4), 867–919. https://doi.org/10.1111/deci.12470
Sievert, K., Song, Y., Chen, Y., & Karplus, V. J. (2024). Expanding renewable electricity use in global corporate supply chains. Environmental Research: Energy, 1(3), 033001. https://doi.org/10.1088/2753-3751/ad5448
Wang, Q., Zhou, H., & Zhao, X. (2024). The role of supply chain diversification in mitigating the negative effects of supply chain disruptions in COVID-19. International Journal of Operations & Production Management, 44(1), 99–132. https://doi.org/10.1108/IJOPM-09-2022-0567
Yin, R. K. (2018). Case study research and applications: Vol. Vol. 6 (C. Sage. Thousand Oaks, Ed.).
منشور
إصدار
القسم
الرخصة
الحقوق الفكرية (c) 2025 مجلة العلوم الاقتصادية والادارية

هذا العمل مرخص بموجب Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
Articles submitted to the journal should not have been published before in their current or substantially similar form or be under consideration for publication with another journal. Please see JEAS originality guidelines for details. Use this in conjunction with the points below about references, before submission i.e. always attribute clearly using either indented text or quote marks as well as making use of the preferred Harvard style of formatting. Authors submitting articles for publication warrant that the work is not an infringement of any existing copyright and will indemnify the publisher against any breach of such warranty. For ease of dissemination and to ensure proper policing of use, papers and contributions become the legal copyright of the publisher unless otherwise agreed.
The editor may make use of Turtitin software for checking the originality of submissions received.



















