Print Email Facebook Twitter Deep Learning in Maritime Autonomous Surface Ships Title Deep Learning in Maritime Autonomous Surface Ships: Current Development and Challenges Author Ye, Jun (Wuhan University of Technology) Li, Chengxi (The Hong Kong Polytechnic University) Wen, Weisong (The Hong Kong Polytechnic University) Zhou, Ruiping (Wuhan University of Technology) Reppa, V. (TU Delft Transport Engineering and Logistics) Date 2023 Abstract Autonomous surface ships have become increasingly interesting for commercial maritime sectors. Before deep learning (DL) was proposed, surface ship autonomy was mostly model-based. The development of artificial intelligence (AI) has prompted new challenges in the maritime industry. A detailed literature study and examination of DL applications in autonomous surface ships are still missing. Thus, this article reviews the current progress and applications of DL in the field of ship autonomy. The history of different DL methods and their application in autonomous surface ships is briefly outlined. Then, the previously published works studying DL methods in ship autonomy have been categorized into four groups, i.e., control systems, ship navigation, monitoring system, and transportation and logistics. The state-of-the-art of this review paper majorly lies in presenting the existing limitations and innovations of different applications. Subsequently, the current issues and challenges for DL application in autonomous surface ships are discussed. In addition, we have proposed a comparative study of traditional and DL algorithms in ship autonomy and also provided the future research scope as well. Subject Artificial intelligence (AI)Deep learning (DL)Maritime autonomous surface shipsReview To reference this document use: http://resolver.tudelft.nl/uuid:cb6b6300-7699-46b2-968f-b8ae83cc4875 DOI https://doi.org/10.1007/s11804-023-00367-1 Embargo date 2024-03-25 ISSN 1671-9433 Source Journal of Marine Science and Application, 22 (3), 584-601 Part of collection Institutional Repository Document type review Rights © 2023 Jun Ye, Chengxi Li, Weisong Wen, Ruiping Zhou, V. Reppa Files PDF s11804_023_00367_1.pdf 1.88 MB Close viewer /islandora/object/uuid:cb6b6300-7699-46b2-968f-b8ae83cc4875/datastream/OBJ/view