2021
DOI: 10.1007/s13437-021-00241-3
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K-means clustering for SAT-AIS data analysis

Abstract: The paper deals with a problem of automatic identification system (AIS) data analysis, especially eliminating the impact of AIS packet collision and detecting existing outliers in AIS data. To solve this problem, a clustering-based approach is proposed. AIS is a system that supports the exchange of information between vessels about their trajectories, e.g. position, speed or course. However, SAT-AIS, which enables the system to work on a global scale, struggles against packet collisions due to the fact that th… Show more

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Cited by 9 publications
(6 citation statements)
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“…With the advent of the Internet age, massive data is pouring in, and all kinds of information, such as orders, processing, transportation, etc. [10], must be processed accurately and effectively to organize the division of labor and form a whole integration. In addition, information infrastructure, as a hardware facility, is directly related to the ability to collect and process various data.…”
Section: Informationmentioning
confidence: 99%
“…With the advent of the Internet age, massive data is pouring in, and all kinds of information, such as orders, processing, transportation, etc. [10], must be processed accurately and effectively to organize the division of labor and form a whole integration. In addition, information infrastructure, as a hardware facility, is directly related to the ability to collect and process various data.…”
Section: Informationmentioning
confidence: 99%
“…Thus, several studies were conducted to investigate research questions in the field of maritime traffic using historical AIS data. Examples of these studies include the detection of abnormal ship behavior [48], prediction of vessel trajectory [32,47], data analysis, such as outlier detection [5] and collision risk analysis [29], and the application of machine learning algorithms [46] to improve the quality of AIS data and enhance the performance of handling maritime processes.…”
Section: Related Workmentioning
confidence: 99%
“…Zhang et al [36] proposed a ship route design based on AIS trajectory analysis. Mieczynska and Czarnowski [37] used clustering to improve AIS device efficiency, where they aimed to eliminate existing outliers resulting from AIS packet collision. Park and Jeong [38] estimated collision risk via distance-based parameters, such as distance at closest point approach (DCPA) and time to closest point approach (TCPA).…”
Section: Problem Statementmentioning
confidence: 99%