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Mining maritime traffic conflict trajectories from a massive AIS data

机译:采矿海上流量冲突来自巨大的AIS数据的轨迹

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The growing volume of maritime traffic is proving a hindrance to navigational safety. Researchers have sought to improve the safety of maritime transportation by conducting statistical analysis on historical collision data in order to identify the causes of maritime collisions. However, this approach is hindered by the limited number of incidents that can be collected in a given area over a given period of time. Automatic Identification System (AIS) has made available enormous quantities of maritime traffic data. Trajectory data are collected through the electronic exchange of navigational data among ships and terrestrial and satellite base stations. Due to a massive AIS data of recording ship movement, such data provide great opportunity to discover maritime traffic knowledge of movement behavior analysis, route estimation, and the detection of anomalous behaviors. Our objective in this paper was to identify potential between-ship traffic conflicts through the discovery of AIS data. Traffic conflict refers to trajectories that could lead to a collision if the ships do not take any evasive action. In other words, conflicting trajectories can be treated as a near-collision cases for analysis. The prevention of collisions requires an efficient method by which to extract conflicting trajectories from a massive collection of AIS data. To this end, we developed a framework CCT Discovery that allows the automated identification of clusters of conflicting trajectories (CCTs) from AIS data without supervision. Experiments based on real-world data demonstrate the efficacy of the proposed framework in terms of accuracy and efficiency. For improvement in the navigational traffic safety, the discovered data of conflict trajectory can contribute to numerous applications, such as collision situation awareness and prediction, anti-collision behaviors modeling and recommendation, and conflict area analysis for maritime traffic flow management.
机译:日益增长的海上交通量正在证明导航安全的障碍。研究人员试图通过对历史碰撞数据进行统计分析来提高海运的安全性,以确定海上碰撞的原因。然而,这种方法受到在给定时间段的给定区域中收集的有限数量的事件。自动识别系统(AIS)已提供巨大数量的海上交通数据。通过船舶和地面和卫星基站之间的导航数据交换来收集轨迹数据。由于录制船舶运动的巨大AIS数据,这些数据提供了发现运动行为分析,路线估计和异常行为检测的海洋流量知识的绝佳机会。我们本文的目的是通过发现AIS数据来确定船舶之间的潜在行动冲突。交通冲突是指如果船舶不采取任何避免行动,可以导致碰撞的轨迹。换句话说,矛盾的轨迹可以被视为近乎碰撞的分析案例。防止碰撞需要一种有效的方法,可以通过该方法从大规模收集AIS数据中提取冲突的轨迹。为此,我们开发了一个框架CCT发现,允许在没有监督的情况下从AIS数据自动识别冲突轨迹(CCTS)的群集。基于现实世界数据的实验证明了在准确性和效率方面提出了框架的功效。为了改善导航交通安全,发现冲突轨迹的发现数据可以有助于许多应用,例如碰撞情况意识和预测,防撞行为建模和建议,以及海上交通流管理的冲突区域分析。

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