A Stochastic Approach to Short-Term Ocean Wave Forecasting: Preliminary Results Using Data From a Remote Sensing Imaging System

Alexis Mérigaud, P. Tona
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引用次数: 1

Abstract

There is a growing interest in the applications of real-time wave forecasting (RTWF), which consists in predicting physical quantities directly related to waves, such as the free-surface elevation, wave loads, or the motion of a ship, from a few seconds to several minutes in advance, and using measurements updated in real time. Unlike comparable RTWF methods found in the literature, which are based on the solution of the physical wave propagation equations, the present approach, known as SBP (Spectrum-Based Predictor), adopts a rigorous probabilistic view on the wave prediction problem, based on well-established, standard oceanographic assumptions. This paper presents an application of the SBP method to real wave field data coming from a stereoscopic camera system. To the best of the authors’ knowledge, this is the first time stereo wave data are employed to test RTWF algorithms. The data, recorded at a location in Korea, in the Yellow Sea, present some considerable challenges, such as strong current in excess of 1 m/s, steep waves with substantial non-linear components, and large directional spread in the high-frequency range. With some adjustments to the original SBP approach to account for current, several prediction configurations are tested, showing excellent agreement between the experimental prediction performance curves, and those expected from the SBP theory. With an observation range in the order of 100m, and in the wave conditions studied, reasonably accurate predictions can be achieved up to 20s ahead (approximately 3.5 peak wave periods).
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短期海浪预报的随机方法:利用遥感成像系统数据的初步结果
人们对实时波浪预报(RTWF)的应用越来越感兴趣,它包括预测与波浪直接相关的物理量,如自由水面高程、波浪载荷或船舶的运动,提前几秒到几分钟,并使用实时更新的测量结果。与文献中发现的基于物理波传播方程解的RTWF方法不同,目前的方法称为SBP(基于频谱的预测器),基于完善的标准海洋学假设,对波浪预测问题采用严格的概率观点。本文介绍了SBP方法在立体摄像系统实际波场数据处理中的应用。据作者所知,这是首次使用立体波数据来测试RTWF算法。在黄海韩国某地记录的数据显示了一些相当大的挑战,例如超过1m /s的强流,具有大量非线性成分的陡峭波浪,以及高频范围内的大方向传播。通过对原始收缩压方法进行一些调整来考虑当前的情况,测试了几种预测配置,结果表明实验预测性能曲线与收缩压理论的预期曲线非常吻合。在100米左右的观测范围内,在所研究的波浪条件下,可以提前20秒(大约3.5个峰波周期)进行相当准确的预测。
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