Author
Listed:
- Lai-Wan Wong
- Garry Wei-Han Tan
- Keng-Boon Ooi
- Binshan Lin
- Yogesh K. Dwivedi
Abstract
This study posits that the use of artificial intelligence (AI) enables supply chains (SCs) to dynamically react to volatile environments, and alleviate potentially costly decision-makings for small-medium enterprises (SMEs). Building on a resource-based view, this work examines the impact of AI on SC risk management for SMEs. A structural model comprising of AI-risk management capabilities, SC re-engineering capabilities and supply chain agility (SCA) was developed and tested based on data collected from executives, managers and senior managers of SMEs The main methodological approach used in this study is partial least squares-based structural equation modelling (PLS-SEM) and artificial neural network (ANN). The results identified the use of AI for risk management influences SC re-engineering capabilities and agility. Re-engineering capabilities further affect and mediate agility. PLS-SEM and ANN were compared and the results revealed consistency for models A and B. Current levels of demand uncertainties in the SC challenges managers in making complex trade-off decisions that require huge management resources in very limited time. With AI, it is possible to model various scenarios to answer crucial questions that archaic infrastructures are not able to. This study combines a multi-construct agility concept and identified non-linear relationships in the model.
Suggested Citation
Lai-Wan Wong & Garry Wei-Han Tan & Keng-Boon Ooi & Binshan Lin & Yogesh K. Dwivedi, 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, Taylor & Francis Journals, vol. 62(15), pages 5535-5555, August.
Handle:
RePEc:taf:tprsxx:v:62:y:2024:i:15:p:5535-5555
DOI: 10.1080/00207543.2022.2063089
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