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Estimating the Speed of Ice-Going Ships by Integrating SAR Imagery and Ship Data from an Automatic Identification System

机译:通过从自动识别系统集成SAR图像和船舶数据来估算冰船的速度

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摘要

The automatic identification system (AIS) was developed to support the safety of marine traffic. In ice-covered seas, the ship speeds extracted from AIS data vary with ice conditions that are simultaneously reflected by features in synthetic aperture radar (SAR) images. In this study, the speed variation was related to the SAR features and the results were applied to generate a chart of expected speeds from the SAR image. The study was done in the Gulf of Bothnia in March 2013 for ships with ice class IA Super that are able to navigate without icebreaker assistance. The speeds were normalized to dimensionless units ranging from 0 to 10 for each ship. As the matching between AIS and SAR was complicated by ice drift during the time gap (from hours to two days), we calculated a set of local statistical SAR features over several scales. Random forest tree regression was used to estimate the speed. The accuracy was quantified by mean squared error and by the fraction of estimates close to the actual speeds. These depended strongly on the route and the day. The error varied from 0.4 to 2.7 units2 for daily routes. Sixty-five percent of the estimates deviated by less than one speed unit and 82% by less than 1.5 speed units from the AIS speeds. The estimated daily mean speeds were close to the observations. The largest speed decreases were provided by the estimator in a dampened form or not at all. This improved when the ice chart thickness was included as a predictor.
机译:开发了自动识别系统(AIS)以支持海洋交通的安全性。在冰盖的海洋中,从AIS数据中提取的船舶速度随着合成孔径雷达(SAR)图像中的特征而同时反射的冰条件。在该研究中,速度变化与SAR特征有关,并且应用结果以从SAR图像产生预期速度的图表。这项研究于2013年3月的B4DIA湾进行了船只IA Super的船舶,可以在没有破冰援助的情况下导航。速度被标准化为每艘船的0到10的无量纲单位。由于AIS和SAR之间的匹配在时间差间隙(从小到两天)时,我们计算了一组局部统计SAR特征在几种尺度上。随机森林树回归用于估计速度。通过平均平均误差和估计的分数来量化精度,靠近实际速度。这些依赖于路线和一天。对于日常路线,误差从0.4到2.7单元变化。六十五个估计值偏离不到一个速度单元,82%通过AIS速度的速度小于1.5个速度。估计的每日平均速度接近观察结果。估算器以湿润的形式提供最大速度降低。当包含冰图厚度作为预测器时,这种改善。

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  • 作者

    Markku Similä; Mikko Lensu;

  • 作者单位
  • 年度 2018
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  • 原文格式 PDF
  • 正文语种 eng
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