A deep hybrid network for significant wave height estimation

IF 3.1 3区 地球科学 Q2 METEOROLOGY & ATMOSPHERIC SCIENCES
Luca Patanè, Claudio Iuppa, Carla Faraci, Maria Gabriella Xibilia
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引用次数: 0

Abstract

The influence of weather conditions on sea state, and in particular on the dynamic evolution of waves, is an important issue that affects several areas, including maritime traffic and the planning of coastal works. To collect relevant data, buoys are used to set up distributed sensor networks along coastal areas. However, unfavourable weather conditions can lead to downtime, which can be extended due to maintenance issues. The ability to improve the robustness of these sensor systems using predictive models, i.e. digital twins, to interpolate and extrapolate missing data is an important and growing area of research. To accomplish such a task, models must be found that can account for both the spatial and temporal dynamics of the input data to correctly estimate the variables of interest. In this work, a deep learning architecture is proposed to realize a digital twin for the monitoring buoy for significant wave height estimation using spatial and temporal information about the wind field in the area of interest. The proposed methodology was applied to a case study using wave height data from an Italian Sea Monitoring Network buoy installed near the coast of Sicily and wind field data from the Copernicus Climate Change Service ERA5 reanalysis. The reported results show that the use of a multi-block hybrid deep neural network consisting of convolutional layers for spatial feature extraction and short-term memory layers for modelling the involved dynamics, which takes into account the buoy surrounding area, outperforms other empirical, numerical, machine learning and deep learning methods used in the literature.

用于估算显波高度的深度混合网络
天气条件对海况的影响,特别是对波浪动态演变的影响,是一个影响到多个领域的重要 问题,包括海上交通和海岸工程规划。为了收集相关数据,人们使用浮标在沿海地区建立分布式传感器网络。然而,不利的天气条件可能会导致停机,而维护问题又会延长停机时间。利用预测模型(即数字孪生)对缺失数据进行插值和推断,从而提高这些传感器系统的鲁棒性,是一个重要且不断发展的研究领域。要完成这一任务,必须找到能够考虑输入数据的空间和时间动态的模型,以正确估计相关变量。在这项工作中,提出了一种深度学习架构,利用相关区域风场的时空信息,为监测浮标实现数字孪生,以估算显著波高。所提出的方法被应用于一项案例研究,使用的波高数据来自安装在西西里岛海岸附近的意大利海洋监测网浮标,风场数据来自哥白尼气候变化服务ERA5再分析。报告结果表明,使用由卷积层(用于空间特征提取)和短时记忆层(用于相关动态建模)组成的多块混合深度神经网络,并考虑到浮标周围区域,其效果优于文献中使用的其他经验、数值、机器学习和深度学习方法。
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来源期刊
Ocean Modelling
Ocean Modelling 地学-海洋学
CiteScore
5.50
自引率
9.40%
发文量
86
审稿时长
19.6 weeks
期刊介绍: The main objective of Ocean Modelling is to provide rapid communication between those interested in ocean modelling, whether through direct observation, or through analytical, numerical or laboratory models, and including interactions between physical and biogeochemical or biological phenomena. Because of the intimate links between ocean and atmosphere, involvement of scientists interested in influences of either medium on the other is welcome. The journal has a wide scope and includes ocean-atmosphere interaction in various forms as well as pure ocean results. In addition to primary peer-reviewed papers, the journal provides review papers, preliminary communications, and discussions.
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