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Integration of a self-organizing map and a virtual pheromone for real-time abnormal movement detection in marine traffic

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Date
2017
Author
Venskus, Julius
Treigys, Povilas
Bernatavičienė, Jolita
Medvedev, Viktor
Voznak, Miroslav
Kurmis, Mindaugas
Bulbenkienė, Violeta
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Abstract
In recent years, the growth of marine traffic in ports and their surroundings raise the traffic and security control problems and increase the workload for traffic control operators. The automated identification system of vessel movement generates huge amounts of data that need to be analysed to make the proper decision. Thus, rapid self-lear ning algorithms for the decision support system have to be developed to detect the abnormal vessel movement in intense marine traffic areas. The paper presents a new self-learning adaptive classification algorithm based on the combination of a self-organizing map (SOM) and a virtual pheromone for abnormal vessel movement detection in maritime traffic. To improve the quality of classification results, Mexican hat neighbourhood function has been used as a SOM neighbourhood function. To estimate the classification results of the proposed algorithm, an experimental investigation has been performed using the real data set, provided by the Klaipeda seaport and that obtained from the automated identification system. The results of the research show that the proposed algorithm provides rapid self-learning characteristics and classification.
Issue date (year)
2017
URI
https://etalpykla.vilniustech.lt/handle/123456789/117294
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  • Straipsniai Web of Science ir/ar Scopus referuojamuose leidiniuose / Articles in Web of Science and/or Scopus indexed sources [7946]

 

 

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