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Machine Learning-Assisted Anomaly Detection in Maritime Navigation using AIS Data

机译:使用AIS数据的海上航行中机器学习辅助异常检测

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The automatic identification system (AIS) reports vessels' static and dynamic information, which are essential for maritime traffic situation awareness. However, AIS transponders can be switched off to hide suspicious activities, such as illegal fishing, or piracy. Therefore, this paper uses real world AIS data to analyze the possibility of successful detection of various anomalies in the maritime domain. We propose a multi-class artificial neural network (ANN)-based anomaly detection framework to classify intentional and non-intentional AIS on-off switching anomalies. The multi-class anomaly framework captures AIS message dropouts due to various reasons, e.g., channel effects or intentional one for carrying illegal activities. We extract position, speed, course and timing information from real world AIS data, and use them to train a 2-class (normal and anomaly) and a 3-class (normal, power outage and anomaly) anomaly detection models. Our results show that the models achieve around 99.9% overall accuracy, and are able to classify a test sample in the order of microseconds.
机译:自动识别系统(AIS)报告船舶的静态和动态信息,这对于了解海上交通情况至关重要。但是,可以关闭AIS转发器以隐藏可疑活动,例如非法捕鱼或盗版。因此,本文使用现实世界中的AIS数据来分析成功检测海域各种异常的可能性。我们提出了一种基于多类人工神经网络(ANN)的异常检测框架,以对有意和无意AIS开关切换异常进行分类。多类异常框架会由于各种原因(例如,通道效应或进行非法活动的故意原因)捕获AIS消息丢失。我们从真实的AIS数据中提取位置,速度,航向和时间信息,并使用它们来训练2类(正常和异常)和3类(正常,停电和异常)异常检测模型。我们的结果表明,这些模型可实现约99.9%的总体准确度,并且能够以微秒为单位对测试样本进行分类。

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