Statistical Model of the Growth in Artificial Intelligence Utilization for Enhancing Supply Chain Resilience

Authors

    Ehsan Firoozi Department of Technology Management, ST.C., Islamic Azad University, Tehran, Iran
    Nasser Mikaeilvand * Department of Mathematics and Computer Science, CT.C., Islamic Azad University, Tehran, Iran Nasser.Mikaeilvand@iau.ac.ir
    Peyman Hajizade Department of Technology Management, ST.C., Islamic Azad University, Tehran, Iran

Keywords:

Supply Chain, Resilience, Artificial Intelligence

Abstract

Supply chain resilience refers to organizations’ ability to maintain stability and respond effectively to crises and sudden disruptions. As supply chains become increasingly complex, artificial intelligence (AI) has emerged as a highly efficient analytical tool. Through data analysis, pattern prediction, and risk identification, AI enables companies to respond promptly and optimally to critical conditions. This study systematically reviews and performs a bibliometric analysis of 238 review articles published between 2000 and 2024, examining the growth trends and thematic structure of research in the field of "artificial intelligence and supply chain resilience." Findings indicate that over 65% of the articles were published in the past five years (2019–2023), with the primary research focus centered on "artificial intelligence and machine learning." Keyword co-occurrence network analysis using scientometric indices reveals that the phrase “Internet of Things” holds the highest centrality score and is positioned at the center of the network. On average, each frequently used keyword is linked to more than 15 other concepts, with the network’s average degree estimated between 8 and 12. Thematic clustering of the research corpus reveals the formation of seven prominent research clusters, including "smart agriculture," "cold chain logistics," and "energy management." Among these, the cluster of "artificial intelligence and machine learning" has the highest share, indicating a strong research focus in recent years. The publication bias test yielded a Z-value of 1.614 (less than the critical value of 2.39 at the 0.05 significance level), indicating no significant bias in the data and thus affirming the validity of the current analysis. Moreover, based on practical study results, the implementation of AI algorithms has led to an average reduction of approximately 18% in operational supply chain costs and an increase of up to 25% in recovery speed following disruptions. These numerical and structural findings demonstrate that artificial intelligence—especially in interaction with the Internet of Things and machine learning—has played a pivotal and catalytic role in research related to supply chain resilience and is expected to continue to do so in the future. The clustered studies in the domain of supply chain resilience using artificial intelligence identified seven main clusters with significant differences in participation and growth trends. The largest cluster, “artificial intelligence and machine learning,” accounts for approximately 35% of all articles and has experienced a remarkable growth surge, particularly since 2019.

Downloads

Download data is not yet available.

References

Bassiouni, M. M., Chakrabortty, R. K., Hussain, O. K., & Rahman, H. F. (2023). Advanced deep learning approaches to predict supply chain risks under COVID-19 restrictions. Expert Systems with Applications, 211, 118604. https://doi.org/10.1016/j.eswa.2022.118604

Gabellini, M., Civolani, L., Calabrese, F., & Bortolini, M. (2024). A deep learning approach to predict supply chain delivery delay risk based on macroeconomic indicators: A case study in the automotive sector. Applied Sciences, 14(11), 4688. https://doi.org/10.3390/app14114688

Gartner. (2022). 5 strategic supply chain predictions for 2022. Gartner. https://www.gartner.com/en/articles/the-rise-of-the-ecosystem-and-4-more-supply-chain-predictions

Hosseini, S., Ivanov, D., & Dolgui, A. (2019). Review of quantitative methods for supply chain resilience analysis. Transport Research Part E: Logistics and Transportation Review, 125, 285-307. https://doi.org/10.1016/j.tre.2019.03.001

Hosseinnia Shavaki, F., & Ebrahimi Ghahnavieh, A. (2023). Applications of deep learning into supply chain management: A systematic literature review and a framework for future research. Artificial Intelligence Review, 56(5), 4447-4489. https://doi.org/10.1007/s10462-022-10289-z

Li, D., Zhi, B., Schoenherr, T., & Wang, X. (2023). Developing capabilities for supply chain resilience in a post-COVID world: A machine learning-based thematic analysis. IISE Transactions, 55(12), 1256-1276. https://doi.org/10.1080/24725854.2023.2176951

Lu, J. (2025). Influencing Factors of Agricultural Supply Chain Resilience Based on ISM-MICMAC. International Journal of High Speed Electronics and Systems. https://doi.org/10.1142/s0129156425405042

Mena, C., Melnyk, S. A., Baghersad, M., & Zobel, C. W. (2020). Sourcing decisions under conditions of risk and resilience: A behavioral study. Decision Sciences, 51(4), 985-1014. https://doi.org/10.1111/deci.12403

Spieske, A., & Birkel, H. (2021). Improving supply chain resilience through industry 4.0: A systematic literature review under the impressions of the COVID-19 pandemic. Computers & Industrial Engineering, 158, 107452. https://doi.org/10.1016/j.cie.2021.107452

Tobing, A. E. N., & Santosa, W. (2025). The Effect of Absorptive Capacity on Supply Chain Innovation Performance Through Supply Chain Resilience in Manufacturing Companies: Empirical Study From Bogor Region, Indonesia. Golden Ratio of Data in Summary, 5(1), 119-131. https://doi.org/10.52970/grdis.v5i1.927

Wong, L. W., Tan, G. W. H., Ooi, K. B., Lin, B., & Dwivedi, Y. K. (2024). Artificial intelligence-driven risk management for enhancing supply chain agility: A deep-learning-based dual-stage PLS-SEM-ANN analysis. International Journal of Production Research, 62(15), 5535-5555. https://doi.org/10.1080/00207543.2022.2063089

Yao, J. (2025). Analysis of the Factors Influencing Grain Supply Chain Resilience in China Using Bayesian Structural Equation Modeling. Sustainability, 17(7), 3250. https://doi.org/10.3390/su17073250

Yu, Y. (2025). The Impact of Digital Transformation on Supply Chain Resilience in Manufacturing: The Mediating Role of Supply Chain Integration. Sustainability, 17(9), 3873. https://doi.org/10.3390/su17093873

Downloads

Published

2025-06-01

Submitted

2025-02-06

Revised

2025-05-17

Accepted

2025-05-23

Issue

Section

Articles

How to Cite

Firoozi, E., Mikaeilvand, N., & Hajizade, P. . (2025). Statistical Model of the Growth in Artificial Intelligence Utilization for Enhancing Supply Chain Resilience. Digital Transformation and Administration Innovation, 1-13. https://journaldtai.com/index.php/jdtai/article/view/146

Similar Articles

1-10 of 27

You may also start an advanced similarity search for this article.