Discovering Maritime Traffic Route from AIS network

Po-Ruey Lei, Tzu-Hao Tsai, Wen-Chih Peng
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引用次数: 12

Abstract

The recent build-up network of Automatic Identification System (AIS) equipped on vessels provides a rich source of vessel movement information. AIS is originally designed for automatically exchanging navigation information, such as their unique identification, position, course, and speed, with nearby vessels and terrestrial receivers to affect collision avoidance and safety control. The collected sequences of AIS logs can be considered as maritime trajectory data, i.e., the sequences of location points with timestamps. This vast amount of AIS trajectory data can be collected and employed to achieve an awareness of maritime traffic knowledge. This paper is devoted to discovery of maritime traffic route from trajectory data generated by AIS networks. However, AIS trajectory data discovery is a challenging task because of the trajectory data is available with uncertainty. Furthermore, unlike the vehicles' movements are constrained by road networks, there is no such a sea route for vessels to follow in marine areas. To overcome the challenges, we propose a framework of Maritime Traffic Route Discovery (abbreviated as MTRD) to generate pattern-aware routes to achieve an effective understanding of maritime traffic awareness. The proposed framework is evaluated on real AIS data and the experimental results shows that the proposed MTRD is able to extract the marine traffic route effectively and provides a cornerstone of maritime traffic knowledge for traffic management, anomaly detection, and conflict analysis in the future.
从AIS网络发现海上交通航路
最近建立的船舶自动识别系统(AIS)网络提供了丰富的船舶运动信息来源。AIS最初的设计是为了自动与附近的船只和地面接收器交换导航信息,例如它们的唯一标识、位置、航向和速度,以影响避碰和安全控制。AIS日志采集序列可视为海上轨迹数据,即带时间戳的定位点序列。这些大量的AIS轨迹数据可以被收集并用于实现海上交通知识的感知。本文致力于从AIS网络生成的轨迹数据中发现海上交通路线。然而,由于轨迹数据具有不确定性,AIS轨迹数据的发现是一项具有挑战性的任务。此外,不像车辆的移动受到道路网络的限制,在海洋地区没有这样的海上航线供船只遵循。为了克服这些挑战,我们提出了一个海上交通路线发现框架(简称MTRD)来生成模式感知路线,以实现对海上交通意识的有效理解。实验结果表明,该框架能够有效地提取海上交通航路,为未来的交通管理、异常检测和冲突分析提供了海上交通知识的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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