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SHIP AS A WAVE BUOY: ESTIMATING RELATIVE WAVE DIRECTION FROM IN-SERVICE SHIP MOTION MEASUREMENTS USING MACHINE LEARNING

机译:船舶作为波浪的浮标:使用机器学习估计在役船舶运动测量中的相对波浪方向

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For operations at sea it is important to have a good estimate of the current local sea state. Often, sea state information comes from wave buoys or weather forecasts. Sometimes wave radars are used. These sources are not always available or reliable. Being able to reliably use ship motions to estimate sea state characteristics reduces the dependency on external and/or expensive sources. In this paper, we present a method to estimate sea state characteristics from time series of 6-DOF ship motions using machine learning. The available data consists of ship motion and wave scanning radar measurements recorded for a period of two years on a frigate type vessel. The research focused on estimating the relative wave direction, since this is most difficult to estimate using traditional methods. Time series are well suited as input, since the phase differences between motion signals hold the information relevant for this case. This type of input data requires machine learning algorithms that can capture both the relation between the input channels and the time dependence. To this end, convolutional neural networks (CNN) and recurrent neural networks (RNN) are adopted in this study for multivariate time series regression. The results show that the estimation of the relative wave direction is acceptable, assuming that the data set is large enough and covers enough sea states. Investigating the chronological properties of the data set, it turned out that this is not yet the case. The paper will include discussions on how to interpret the results and how to treat temporal data in a more general sense.
机译:对于海上作业,重要的一点是要对当前的当地海况进行良好的估算。通常,海况信息来自海浪浮标或天气预报。有时使用波雷达。这些来源并非总是可用或可靠。能够可靠地使用船舶运动来估计海况特征,可以减少对外部和/或昂贵资源的依赖。在本文中,我们提出了一种使用机器学习从6自由度船舶运动的时间序列估计海况特征的方法。可用数据包括在护卫舰上记录的为期两年的船舶运动和波扫描雷达测量值。该研究专注于估计相对波向,因为使用传统方法很难估计相对波向。时间序列非常适合作为输入,因为运动信号之间的相位差会保存与此情况相关的信息。这种类型的输入数据需要机器学习算法,该算法既可以捕获输入通道之间的关系,又可以捕获时间依赖性。为此,本研究采用卷积神经网络(CNN)和递归神经网络(RNN)进行多元时间序列回归。结果表明,假设数据集足够大并且涵盖了足够的海况,则相对波方向的估计是可以接受的。调查数据集的时间顺序特性,结果事实并非如此。本文将讨论如何解释结果以及如何从更一般的意义上处理时间数据。

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