An improved adjoint-based ocean wave reconstruction and prediction method

IF 2.8 Q2 MECHANICS
Jie Wu, X. Hao, Lian Shen
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引用次数: 4

Abstract

Abstract We propose an improved adjoint-based method for the reconstruction and prediction of the nonlinear wave field from coarse-resolution measurement data. We adopt the data assimilation framework using an adjoint equation to search for the optimal initial wave field to match the wave field simulation result at later times with the given measurement data. Compared with the conventional approach where the optimised initial surface elevation and velocity potential are independent of each other, our method features an additional constraint to dynamically connect these two control variables based on the dispersion relation of waves. The performance of our new method and the conventional method is assessed with the nonlinear wave data generated from phase-resolved nonlinear wave simulations using the high-order spectral method. We consider a variety of wave steepness and noise levels for the nonlinear irregular waves. It is found that the conventional method tends to overestimate the surface elevation in the high-frequency region and underestimate the velocity potential. In comparison, our new method shows significantly improved performance in the reconstruction and prediction of instantaneous surface elevation, surface velocity potential and high-order wave statistics, including the skewness and kurtosis.
一种改进的基于伴随的海浪重构与预测方法
提出了一种改进的基于伴随的粗分辨率测量数据非线性波场重建与预测方法。采用伴随方程的数据同化框架,寻找最优的初始波场,使后期波场模拟结果与给定的测量数据相匹配。与优化后的初始表面高程和速度势相互独立的传统方法相比,该方法增加了一个约束,即基于波的频散关系动态连接这两个控制变量。利用高阶谱法进行相分辨非线性波模拟得到的非线性波数据,对新方法和传统方法的性能进行了比较。我们考虑了非线性不规则波的各种波陡和噪声级。研究发现,传统方法往往高估了高频区域的地表高程,而低估了速度势。相比之下,我们的新方法在重建和预测瞬时地表高程、地表速度势和高阶波统计(包括偏度和峰度)方面的性能有了显著提高。
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来源期刊
CiteScore
2.40
自引率
0.00%
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