Tracking of ARPA Radar Signals Based on UK–PDAF and Fusion with AIS Data

Chang Han, Sung Wook Lee, Eun Seok Jin
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Abstract

To maintain the existing systems of ships and introduce autonomous operation technology, it is necessary to improve situational awareness through the sensor fusion of the automatic identification system (AIS) and automatic radar plotting aid (ARPA), which are installed sensors. This study proposes an algorithm for determining whether AIS and ARPA signals are sent to the same ship in real time. To minimize the number of errors caused by the time series and abnormal phenomena of heterogeneous signals, a tracking method based on the combination of the unscented Kalman filter and probabilistic data association filter is performed on ARPA radar signals, and a position prediction method is applied to AIS signals. Especially, the proposed algorithm determines whether the signal is for the same vessel by comparing motion-related components among data of heterogeneous signals to which the corresponding method is applied. Finally, a measurement test is conducted on a training ship. In this process, the proposed algorithm is validated using the AIS and ARPA signal data received by the voyage data recorder for the same ship. In addition, the proposed algorithm is verified by comparing the test results with those obtained from raw data. Therefore, it is recommended to use a sensor fusion algorithm that considers the characteristics of sensors to improve the situational awareness accuracy of existing ship systems.
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基于UK-PDAF与AIS数据融合的ARPA雷达信号跟踪
为了维护现有船舶系统,引入自主作战技术,需要通过安装传感器的自动识别系统(AIS)和自动雷达标绘辅助系统(ARPA)的传感器融合来提高态势感知能力。本研究提出了一种实时确定AIS和ARPA信号是否发送到同一船舶的算法。为了最大限度地减少异构信号的时间序列和异常现象带来的误差,对ARPA雷达信号进行了基于无气味卡尔曼滤波和概率数据关联滤波相结合的跟踪方法,并将位置预测方法应用于AIS信号。特别是,该算法通过比较采用相应方法的异构信号数据中的运动相关成分来判断信号是否为同一艘船。最后,在一艘训练舰上进行了测量试验。在此过程中,利用同一船航次数据记录仪接收到的AIS和ARPA信号数据对算法进行验证。此外,通过将测试结果与原始数据进行比较,验证了所提算法的有效性。因此,建议采用考虑传感器特性的传感器融合算法来提高现有舰船系统的态势感知精度。
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