Journal of Engineering and Applied Sciences

Year: 2018
Volume: 13
Issue: 4 SI
Page No. 3803 - 3808

Maritime Big Data Analysis of Ship Route Traffic Characteristics with MapReduce Processing

Authors : Kwang Il Kim, Keon Myung Lee and Jung Sik Jeong

References

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IMO., 2013. Development of draft Software Quality Assurance (SOA) guidelines for E-navigation. International Maritime Organization, London, UK.

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Kang, S.J., S.Y. Lee and K.M. Lee, 2015. Performance comparison of OpenMP, MPI and mapreduce in practical problems. Adv. Multimedia, 2015: 1-9.
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Kim, J.S., J.S. Jeong and G.K. Park, 2013. Prediction table for marine traffic for vessel traffic service based on cognitive work analysis. Intl. J. Fuzzy Logic Intell. Syst., 13: 315-323.
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Kim, K.I., J.S. Jeong and B.G. Lee, 2017. Study on the analysis of near-miss ship collisions using logistic regression. J. adv. Comput. Intell. Inf., 21: 467-473.
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Kim, K.I., J.S. Jeong and G.K. Park, 2013. Assessment of external force acting on ship using big data in maritime traffic. J. Korean Inst. Intell. Syst., 23: 379-384.
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