基于融合海洋特征的动态图神经网络显著波高预测

IF 1.9 4区 地球科学 Q2 GEOCHEMISTRY & GEOPHYSICS
Yao Zhang , Lingyu Xu , Jie Yu
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引用次数: 0

摘要

有效波高(SWH)是波浪的核心参数之一,准确预测SWH对海洋资源评价具有重要意义。本文提出了一种新的多特征多节点SWH预测模型(MCMN)。该模型考虑了海洋特征之间的超前-滞后效应,并利用时间滞后相关性自动学习高级指示信息。对于时间特征,使用时间卷积网络(TCN)从高维空间特征中高效地并行提取时间相关性。此外,节点之间的依赖关系被建模为稳定的长期模式和动态的短期模式的联合结果。为了获得这些依赖关系,我们引入了一种新的动态图神经网络。与以前仅关注单个节点的SWH预测相比,该模型使我们能够通过捕捉节点之间的长期和短期时空关系模式,更全面地探索节点之间的时空依赖关系。分别在南海和东海的120个节点上进行了实验。结果表明,该模型提供了可靠的预测。最后,我们与五个深度学习模型进行了比较,结果表明,我们的模型在多节点、多步骤SWH预测中具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Significant wave height prediction based on dynamic graph neural network with fusion of ocean characteristics

Significant wave height (SWH) is one of the core parameters for wave and accurate prediction of SWH is of great importance for ocean resource assessment. In this paper, we propose a new multi-characteristic and multi-node SWH prediction model(MCMN). The model considers the lead–lag effect among ocean characteristics and utilizes time lag correlation to automatically learn advanced indication information. For the temporal features, temporal correlations are extracted from high-dimensional spatial features efficiently in parallel using Temporal Convolutional Network(TCN). Additionally, the dependencies between nodes are modeled as the joint result of stable long-term patterns and dynamic short-term patterns. To obtain these dependencies, we introduce a novel dynamic graph neural network. Compared to previous SWH predictions focused solely on individual nodes, this model allows us to more fully explore the spatio-temporal dependencies between the nodes by capturing both long-term and short-term spatio-temporal relationship patterns among the nodes. Experiments were conducted with 120 nodes in the South China Sea and East China Sea, respectively. The results show that the model provides reliable predictions. Finally, we compare with five deep learning models, and the results show that our model has better performance in multi-node and multi-step SWH prediction.

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来源期刊
Dynamics of Atmospheres and Oceans
Dynamics of Atmospheres and Oceans 地学-地球化学与地球物理
CiteScore
3.10
自引率
5.90%
发文量
43
审稿时长
>12 weeks
期刊介绍: Dynamics of Atmospheres and Oceans is an international journal for research related to the dynamical and physical processes governing atmospheres, oceans and climate. Authors are invited to submit articles, short contributions or scholarly reviews in the following areas: •Dynamic meteorology •Physical oceanography •Geophysical fluid dynamics •Climate variability and climate change •Atmosphere-ocean-biosphere-cryosphere interactions •Prediction and predictability •Scale interactions Papers of theoretical, computational, experimental and observational investigations are invited, particularly those that explore the fundamental nature - or bring together the interdisciplinary and multidisciplinary aspects - of dynamical and physical processes at all scales. Papers that explore air-sea interactions and the coupling between atmospheres, oceans, and other components of the climate system are particularly welcome.
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