Super-resolution on unstructured coastal wave computations with graph neural networks and polynomial regressions

IF 4.2 2区 工程技术 Q1 ENGINEERING, CIVIL
Jannik Kuehn , Stéphane Abadie , Matthias Delpey , Volker Roeber
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引用次数: 0

Abstract

Accurate high-resolution wave forecasts are essential for coastal communities, but local and even coastal coverage is often still missing due to the heavy computational load of modern state-of-the-art wave models. This study presents a machine learning super-resolution approach that drastically reduces the computational effort, while keeping errors negligible for the majority of forecasting applications. The method consists of first computing a wave forecast on a coarse mesh which is then converted to a forecast of finer resolution with the help of machine learning. To demonstrate the feasibility and the potential for practical applications of this approach, we present a case study of a 44-year hindcast along the French Basque coast over an unstructured mesh. We introduce two machine learning approaches, a graph neural network and a polynomial ridge regression and compare their performances in different sea states and spatial environments. Both models exhibit very small prediction errors for the significant wave heights, with Root Mean Square Errors (RMSEs) ranging from 0.3 cm to 2 cm, depending on the study region, while being up to 80 times faster than a direct computation of a numerical wave model at the corresponding spatial resolution. To the best of our knowledge, this is the first time that a super-resolution approach is extended to unstructured meshes in the field of coastal sciences.

利用图神经网络和多项式回归对非结构化沿岸波计算进行超分辨率处理
精确的高分辨率波浪预报对沿海社区至关重要,但由于现代最先进的波浪模型计算量大,往往仍无法覆盖当地甚至沿海地区。本研究提出了一种机器学习超分辨率方法,可大幅减少计算量,同时使误差在大多数预报应用中可以忽略不计。该方法首先在粗网格上计算波浪预报,然后在机器学习的帮助下将其转换为分辨率更高的预报。为了证明这种方法的可行性和实际应用潜力,我们介绍了一个在非结构化网格上沿法国巴斯克海岸进行 44 年后报的案例研究。我们引入了两种机器学习方法:图神经网络和多项式脊回归,并比较了它们在不同海况和空间环境下的表现。这两种模型对显著波高的预测误差都非常小,根据研究区域的不同,均方根误差(RMSE)从 0.3 厘米到 2 厘米不等,同时比直接计算相应空间分辨率的数值波浪模型快 80 倍。据我们所知,这是在沿岸科学领域首次将超分辨率方法扩展到非结构网格。
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来源期刊
Coastal Engineering
Coastal Engineering 工程技术-工程:大洋
CiteScore
9.20
自引率
13.60%
发文量
0
审稿时长
3.5 months
期刊介绍: Coastal Engineering is an international medium for coastal engineers and scientists. Combining practical applications with modern technological and scientific approaches, such as mathematical and numerical modelling, laboratory and field observations and experiments, it publishes fundamental studies as well as case studies on the following aspects of coastal, harbour and offshore engineering: waves, currents and sediment transport; coastal, estuarine and offshore morphology; technical and functional design of coastal and harbour structures; morphological and environmental impact of coastal, harbour and offshore structures.
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