Browse > Article
http://dx.doi.org/10.7837/kosomes.2019.25.6.649

Analysis of Real Ship Operation Data using a Smart Ship Platform  

Kang, Jin-Hui (Ship and Offshore Performance Research Center, Samsung Heavy Industries)
Lee, Hyun-Ho (Ship and Offshore Performance Research Center, Samsung Heavy Industries)
Lee, Won-Ju (Division of Marine Engineering, Korea Maritime and Ocean University)
Lee, In-Ho (Ship and Offshore Performance Research Center, Samsung Heavy Industries)
Kim, Jae-Woo (Ship and Offshore Performance Research Center, Samsung Heavy Industries)
Park, Cheong-Hee (Dept. of Computer Science and Engineering, Chungnam National University)
Publication Information
Journal of the Korean Society of Marine Environment & Safety / v.25, no.6, 2019 , pp. 649-657 More about this Journal
Abstract
An essential part of the development of an autonomous ship is supporting technology that can effectively check and diagnose the operational status of the ship form the shore control center on land. This development has recently occurred in the shipbuilding and shipping industries. In this paper, we present a smart ship solution that operates, as a single system, a data collection platform that gathers ship operation data and a service platform that provides various services. When this smart ship solution was applied to an operating ship, it was determined that a variety of high-quality data could be collected compared to existing ship data collection systems. In addition, it was shown that of the operation data collected, analysis of parameters related to the main engine can be used to determine the overall state by deriving valid results and visualizing patterns. In conclusion, it was suggested that a ship's operation status could be checked more effectively and a comprehensive evaluation could be possible at the shore control center if the results of this study were extended to various ship equipment and analyzed together with the operational environment data.
Keywords
Smart ship; Operation data; Platform; Main engine; Data analysis;
Citations & Related Records
연도 인용수 순위
  • Reference
1 Lim, Y. K., J. W. Park, O. S. Kim, and J. W. Lee(2011), Current status on the development of an integrated management system of the intelligent digital ship, Proceedings of Symposium of the Korean Institute of communication and Information Sciences, pp. 31-32.
2 Mirovic, M., M. Milicevic, and I. Obradovic(2018), Big data in the maritime industry, NASE MORE, Vol. 65, No. 1, pp. 56-62.   DOI
3 Perera, L. P. and B. Mo(2016), Machine Intelligence for Energy Efficient Ships: A Big Data Solution. Maritime Engineering and Technology III, Guedes Soares & Santos (Eds.), Vol. 1, pp. 143-150.
4 Rodseth, O. Jan, L. P. Perera, and B. Mo(2016), Big data in shipping-Challenges and opportunities, 15th International Conference on Computer and IT Applications in the Maritime Industries.
5 Wang K., X. Yan, Y. Yuan, X. Jiang, G. Lodewijks, and R. R. Negenborn(2017), Study on route division for ship energy efficiency optimization based on big environment data, IEEE 4th International Conference on Transportation Information and Safety (ICTIS), pp. 111-116.
6 Carlos, G., B. Lund, and E. Hagestuen(2018), Case Study: Ship Performance Evaluation by Application of Big Data, Hull Performance & Insights Conference.
7 DNV-GL(2018), Digital Twins for Blue Denmark, DNV-GL Report No. 2018-0006, Rev. A.
8 Garcia-Dominguez, A.(2015), Mobile applications, cloud and bigdata on ships and shore stations for increased safety on marine traffic; a smart ship project, IEEE International Conference on Industrial Technology(ICIT), pp. 1532-1537.