- ابراهیمپور، م.، و زینب فرجود چکامی، ز. (۲۰۲۳). شناسایی و رتبهبندی شاخصهای تابآوری زنجیره تأمین در چهار بُعد با استفاده از روش سوآرا در صنعت غذا. فصلنامه مدیریت بهبود، ۱۷(۲)، ۳۳–۵۹.
- تورجیپور، ر.، سهرابپور، و.، نظرپور، ا.، اوغازی، پ.، و فیشل، م. (۲۰۲۱). هوش مصنوعی در مدیریت زنجیره تأمین: مرور نظاممند ادبیات. فصلنامه پژوهشهای بازرگانی (Journal of Business Research)، ۱۲۲، ۵۰۲–۵۱۷.
- رحیمی، ع.، راد، ع.، عالمتبریز، ا.، و معتمدی، ا. (۲۰۱۸). ارائه مدل ساختاری–تفسیری زنجیره تأمین تابآور در صنایع دفاعی ایران. فصلنامه مدیریت نظامی، ۱۸(۷۱)، ۳۱–۷۰. بازیابیشده از: https://jmm.iranjournals.ir/article_34787_ea431f4533067a553e0ce3795811db33.pdf
- رحیمیان، م. م.، و رجبزادهقطاری، ع. (۲۰۱۷). سنجش تابآوری زنجیره تأمین با استفاده از رویکرد سامانههای تطبیقی پیچیده؛ مطالعه موردی: صنعت داروسازی ایران. پژوهشهای نوین در تصمیمگیری، ۲(۲)، ۱۵۵–۱۹۵.
- رسولیوندی، محمد، عالمتبریز، ابوالفضل، و سلطانپناه، هوشنگ. (1403). ارائه الگوی عوامل عملکردی تابآوری پایدار زنجیره تأمین صنعت قطعهسازی خودروی ایران با رویکرد توسعه صادرات. فصلنامه علمی تخصصی توسعه صنعتی ایران. (در حال چاپ)
- کریمیزارچی، م.، مابودی، ح.، فتحی، م. ر.، و خسروی، ع. (۲۰۲۰). ارائه مدل تابآور زنجیره تأمین دفاعی با استفاده از مدلسازی ساختاری–تفسیری. فصلنامه مدیریت بهبود، ۱۴(۲)، ۶۷–۹۱.
- کیا، جواد سادات، مهتدی، محمد، و نژاد، یعقوب قاسم. (1402). شناسایی و رتبهبندی معیارهای کلیدی مؤثر در تابآوری زنجیره تأمین (مورد مطالعه: شرکت پشتیبانی ایثار). نشریه اندیشه آماد، 22(86)، 79– https://www.magiran.com/paper/2676445
- Agrawal, T. K., Kumar, V., Pal, R., Wang, L., & Chen, Y. (2021). Blockchain-based framework for supply chain traceability: A case example of textile and clothing industry. Computers & industrial engineering, 154, 107130.
- Al Naimi, M., Faisal, M. N., Sobh, R., & Uddin, S. F. (2021). Antecedents and consequences of supply chain resilience and reconfiguration: an empirical study in an emerging economy. Journal of Enterprise Information Management, 34(6), 1722-1745.
- Baryannis, G., Dani, S., & Antoniou, G. (2019). Predicting supply chain risks using machine learning: The trade-off between performance and interpretability. Future Generation Computer Systems, 101, 993-1004.
- Bécue, A., Maia, E., Feeken, L., Borchers, P., & Praça, I. (2020). A new concept of digital twin supporting optimization and resilience of factories of the future. Applied Sciences, 10(13), 4482.
- Belhadi, A., Kamble, S., Fosso Wamba, S., & Queiroz, M. M. (2022). Building supply-chain resilience: an artificial intelligence-based technique and decision-making framework. International Journal of Production Research, 60(14), 4487-4507.
- Berger, R., Wagner, R., Dion, P. M., & Matthias, O. (2025). Disrupting disruptions: Enhancing supply chain resilience—Lessons from the US Air Force. Annals of Operations Research, 347(3), 1163–1192. https://doi.org/10.1007/s10479-025-06527-6
- Cavalcante, I. M., Frazzon, E. M., Forcellini, F. A., & Ivanov, D. (2019). A supervised machine learning approach to data-driven simulation of resilient supplier selection in digital manufacturing. International Journal of Information Management, 49, 86-97.
- Choi, T.-M. (2023). Supply chain financing using blockchain: Impacts on supply chains selling fashionable products. Annals of Operations Research, 331(1), 393-415.
- CNA. (2024). Camoland: Clothing and Textile Industrial Base Wargame Report. CNA.
- CNA. (2024, October 11). New war game reveals gaps in military clothing supply chain. CNA. https://www.cna.org/our-media/press-releases/2024/10-11
- Cole, R., Stevenson, M., & Aitken, J. (2019). Blockchain technology: implications for operations and supply chain management. Supply Chain Management: An International Journal, 24(4), 469-483.
- DBB, Department of Defense Business Board. (2025). Supply Chain Illumination in the DoD.
- Department of Defense. (2024). Ensure Supply Chain Resilience: FY2024 Progress Update. Performance.gov.
- Deveci, M. (2023). Effective use of artificial intelligence in healthcare supply chain resilience using fuzzy decision-making model. Soft Computing, 1-14.
- Ekström, T. (2025). Supply chain resilience: An empirical exploration of barriers and enablers in military settings. Scandinavian Journal of Military Studies, 8(1), 119–136. https://doi.org/10.31374/sjms.350
- Elvemo, L. (2025). Supply Chain Resilience in Military Operations: A Case Study Exploring Command and Control. Scandinavian Journal of Military Studies, 8(1), 178–199. https://doi.org/10.31374/sjms.356
- Elvemo, L. (2025). Supply chain resilience in military operations: A case study exploring command and control. Scandinavian Journal of Military Studies, 8(1), 178–199. https://doi.org/10.31374/sjms.356
- Elvemo, L. (2025). Supply chain resilience in military operations: A case study exploring command and control. Scandinavian Journal of Military Studies, 8(1), 178–199. Scandinavian Journal of Military Studies
- Fiksel, J., & Fiksel, J. (2015). From risk to resilience. Springer.
- Gunasekaran, A., Papadopoulos, T., Dubey, R., Wamba, S. F., Childe, S. J., Hazen, B., & Akter, S. (2017). Big data and predictive analytics for supply chain and organizational performance. Journal of Business Research, 70, 308-317.
- Gunasekaran, A., Subramanian, N., & Rahman, S. (2015). Supply chain resilience: role of complexities and strategies. In (Vol. 53, pp. 6809-6819): Taylor & Francis.
- Guo, D., & Mantravadi, S. (2025). The role of digital twins in lean supply chain management: Review and research directions. International Journal of Production Research, 63(5), 1851–1872. https://doi.org/10.1080/00207543.2024.2372655
- Guo, Y., Liu, F., Song, J.-S., & Wang, S. (2025). Supply chain resilience: A review from the inventory management perspective. Fundamental Research, 5(2), 450–463. https://doi.org/10.1016/j.fmre.2024.08.002
- Hahn, G. J. (2020). Industry 4.0: a supply chain innovation perspective. International Journal of Production Research, 58(5), 1425-1441.
- Hamidu, Z., Boachie-Mensah, F. O., & Issau, K. (2023). Supply chain resilience and performance of manufacturing firms: role of supply chain disruption. Journal of Manufacturing Technology Management, 34(3), 361-382.
- Hohenstein, N.-O., Feisel, E., Hartmann, E., & Giunipero, L. (2015). Research on the phenomenon of supply chain resilience: a systematic review and paths for further investigation. International journal of physical distribution & logistics management, 45(1/2), 90-117.
- Ivanov, D., Dolgui, A., & Sokolov, B. (2019). The impact of digital technology and Industry 4.0 on the ripple effect and supply chain risk analytics. International Journal of Production Research, 57(3), 829-846.
- Kamalahmadi, M., & Parast, M. M. (2016). A review of the literature on the principles of enterprise and supply chain resilience: Major findings and directions for future research. International journal of production economics, 171, 116-133.
- Katsaliaki, K., Galetsi, P., & Kumar, S. (2022). Supply chain disruptions and resilience: A major review and future research agenda. Annals of Operations Research, 1-38.
- Katsaliaki, K., Galetsi, P., & Kumar, S. (2022). Supply chain disruptions and resilience: A major review and future research agenda. Annals of Operations Research, 319(1), 965–1002.
- Li, H., Wu, Y., Cao, D., & Wang, Y. (2021). Organizational mindfulness towards digital transformation as a prerequisite of information processing capability to achieve market agility. Journal of Business Research, 122, 700-712.
- Liu, W., He, Y., Dong, J., & Cao, Y. (2023). Disruptive technologies for advancing supply chain resilience. Frontiers of Engineering Management, 10(2), 360-366.
- Liu, W., Liu, X., Shi, X., Hou, J., Shi, V., & Dong, J. (2023). Collaborative adoption of blockchain technology: A supply chain contract perspective. Frontiers of Engineering Management, 10(1), 121-142.
- López, C., & Ishizaka, A. (2019). A hybrid FCM-AHP approach to predict impacts of offshore outsourcing location decisions on supply chain resilience. Journal of Business Research, 103, 495-507.
- Lucas, R., Ekström, T., Fusaro, P., Hastings Roer, E., & Retter, L. (2024). Toward Defense Supply Chain Disruption Management: A Research Agenda for Defense Supply Chain Resilience (RR-A2504-1). RAND Corporation.
- Narayanamurthy, G., & Tortorella, G. (2021). Impact of COVID-19 outbreak on employee performance–moderating role of industry 4.0 base technologies. International Journal of Production Economics, 234, 108075.
- Nayal, K., Raut, R. D., Queiroz, M. M., Yadav, V. S., & Narkhede, B. E. (2023). Are artificial intelligence and machine learning suitable to tackle the COVID-19 impacts? An agriculture supply chain perspective. The International Journal of Logistics Management, 34(2), 304-335.
- Naz, F., Kumar, A., Majumdar, A., & Agrawal, R. (2022). Is artificial intelligence an enabler of supply chain resiliency post COVID-19? An exploratory state-of-the-art review for future research. Operations Management Research, 15(1), 378-398.
- Ning, Y., Li, L., Xu, S. X., & Yang, S. (2023). How do digital technologies improve supply chain resilience in the COVID-19 pandemic? Evidence from Chinese manufacturing firms. Frontiers of Engineering Management, 10(1), 39-50.
- OECD. (2025). OECD Supply Chain Resilience Review: Navigating Risks. OECD Publishing.
- Pimenta, M. L., Cezarino, L. O., Piato, E. L., da Silva, C. H. P., Oliveira, B. G., & Liboni, L. B. (2022). Supply chain resilience in a Covid-19 scenario: Mapping capabilities in a systemic framework. Sustainable Production and Consumption, 29, 649-656.
- RAND Corporation. (2024). Toward Defense Supply Chain Disruption Management (RRA2504-1).
- Rogerson, M., & Parry, G. C. (2020). Blockchain: case studies in food supply chain visibility. Supply Chain Management: An International Journal, 25(5), 601-614.
- Roman, E.-A., Stere, A.-S., Roșca, E., Radu, A.-V., Codroiu, D., & Anamaria, I. (2025). State of the art of digital twins in improving supply chain resilience. Logistics, 9(1), 22. https://doi.org/10.3390/logistics9010022
- Rossit, D. A., Tohme, F., & Frutos, M. (2019). Production planning and scheduling in Cyber-Physical Production Systems: a review. International journal of computer integrated manufacturing, 32(4-5), 385-395.
- Ruiz-Benítez, R., López, C., & Real, J. C. (2018). The lean and resilient management of the supply chain and its impact on performance. International journal of production economics, 203, 190-202.
- Sahu, A. K., Datta, S., & Mahapatra, S. (2017). Evaluation of performance index in resilient supply chain: a fuzzy-based approach. Benchmarking: An International Journal, 24(1), 118-142.
- Sandelowski, M., & Barroso, J. (2006). Handbook for synthesizing qualitative research. springer publishing company.
- Singh, G., Jayaraman, R., & Ahmad, S. (2024). Analyzing the role of digital twins in developing a resilient-sustainable manufacturing supply chain: A grey influence analysis (GINA) approach. Technological Forecasting and Social Change, 209, 123763.
- Singh, G., Jayaraman, R., & Ahmad, S. (2024). Analyzing the role of digital twins in developing a resilient–sustainable manufacturing supply chain: A grey influence analysis (GINA) approach. Technological Forecasting and Social Change, 209, 123763. https://doi.org/10.1016/j.techfore.2024.123763
- Singh, S., Misra, S. C., & Singh, G. (2024). Leveraging additive manufacturing for enhanced supply chain resilience and sustainability: a strategic integration framework. Global Journal of Flexible Systems Management, 25(2), 343-368.
- Sjøbakk, B., Bakås, O., Bondarenko, O., & Kamran, T. (2015). Designing a performance measurement system to support materials management in engineer-to-order: a case study. Advances in manufacturing, 3, 111-122.
- Tortorella, G. L., Prashar, A., Antony, J., Fogliatto, F. S., Gonzalez, V., & Godinho Filho, M. (2024). Industry 4.0 adoption for healthcare supply chain performance during COVID-19 pandemic in Brazil and India: the mediating role of resilience abilities development. Operations Management Research, 17(2), 389-405.
- U.S. Army. (2025). Flow Wars: Wargaming logistics networks in a military tug o’ war.
- U.S. Army. Herzog, E., Stein, O., & DeLong, S. (2025). Flow Wars: Wargaming logistics networks in a military tug o’ war.
- Usuga Cadavid, J. P., Lamouri, S., Grabot, B., Pellerin, R., & Fortin, A. (2020). Machine learning applied in production planning and control: a state-of-the-art in the era of industry 4.0. Journal of Intelligent Manufacturing, 31, 1531-1558.
- Xu, H., Zheng, H., Sun, D., Wang, M., & Ye, C. (2024). An Integrated Framework for Enablers in Supply Chain Resilience: Model Development and Analysis. IEEE Access, 12, 42490-42508.
- Yin, W. (2023). Identifying the pathways through digital transformation to achieve supply chain resilience: an fsQCA approach. Environmental Science and Pollution Research, 30(4), 10867-10879.
- Yin, Weili & Ran, Wenxue & Zhang, Zhe. (2024). A configuration approach to build supply chain resilience: From matching perspective. Expert Systems with Applications. 249. 123662. 10.1016/j.eswa.2024.123662.
- Yoo, J. J.-E., & Cho, M. (2021). Supply chain flexibility fit and green practices: evidence from the event industry. International Journal of Contemporary Hospitality Management, 33(7), 2410-2427.
|