Research on the cooperative operation of intelligent tugs and maritime autonomous surface ships (MASS)
DOI: 10.23977/ieim.2024.070216 | Downloads: 1 | Views: 41
Author(s)
Xuejun Wang 1
Affiliation(s)
1 Tianjin Port Tugboat & Lighter Co., Ltd, Tianjin, 300345, China
Corresponding Author
Xuejun WangABSTRACT
With the rapid development of autonomous technology, the application of intelligent tugs and Maritime Autonomous Surface Ships (MASS) in collaborative operations in the field of marine engineering has attracted increasing attention. This study aims to explore the key technologies, collaborative strategies, and application effects of intelligent tugs and MASS in specific marine tasks. By employing a hybrid intelligent algorithm and machine learning technology, this study designs an intelligent decision support system to achieve efficient and safe collaborative operations. The results show that optimizing collaborative operation strategies can significantly improve the efficiency and safety of task execution. The findings of this study provide an important theoretical and practical basis for the further development of intelligent ship technology and its application in the field of marine engineering.
KEYWORDS
Intelligent tugs, Maritime Autonomous Surface Ships (MASS), collaborative operations, hybrid intelligent algorithm, machine learningCITE THIS PAPER
Xuejun Wang, Research on the cooperative operation of intelligent tugs and maritime autonomous surface ships (MASS). Industrial Engineering and Innovation Management (2024) Vol. 7: 116-122. DOI: http://dx.doi.org/10.23977/ieim.2024.070216.
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