A Review of Artificial Intelligence and its Role in the Ports and Maritime Supply Chain
DOI:
https://doi.org/10.56830/IJAMS07202302Keywords:
Artificial intelligence (AI), maritime supply chain, Industry 4.0, PMI MethodAbstract
The procurement system, operations management, logistics, and marketing channel become the main engine of trade in the world in recent years, so the results obtained by recent authors have a paramount role in the supply chain. This paper aims to present a review of the artificial intelligence process in supply chain management. Two stages of literature studies are proposed. The first focuses on the presentation of theories and methods related to artificial intelligence and supply chain management. Where the Method is A review of artificial intelligence and its role in the ports and maritime supply chain supported as a review of recently published papers. The findings suggest that the previous literature is largely focused on supply chain management, thus leaving the research screening at a very limited level. The second stage presents the literature on the application of artificial intelligence in the Ports and Maritime Industry. The most remarkable finding is that most studies ignored the theories related to the issue of artificial intelligence and supply chain management. Additionally, the previous works show a lack of adoption of certain types of artificial intelligence in the port and maritime industry. Consequently, the studies of the impact of artificial intelligence on the port and maritime sector remain unexploited as it is based on a bibliometric review. In this case, it is recommended that researchers study other types of artificial intelligence on supply chain management, develop a systematic review of the impact of artificial intelligence on the port and maritime sector, and link theory and practice
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