An artificial neural network based system for wave height prediction

IF 1.9 3区 工程技术 Q3 ENGINEERING, CIVIL Coastal Engineering Journal Pub Date : 2023-03-21 DOI:10.1080/21664250.2023.2190002
Elad Dakar, J. M. Fernández Jaramillo, I. Gertman, R. Mayerle, R. Goldman
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引用次数: 0

Abstract

ABSTRACT We present a system for predicting the hourly significant wave height at a specific wave measurement station in the middle of Israel’s Mediterranean coast (Hadera). Our system uses an artificial neural network (ANN) composed of two sub-networks. We evaluate the importance of different inputs to the system. The input includes wind forecast data from the SKIRON atmospheric modeling system, wave forecast for the station’s location given by the SWAN wave model, and observed wave data. Our system pre-processes the wind data using a spatial filtering scheme and then enters it into the first sub-network in the form of a multidimensional tensor. We take special care to interconnect the tensor elements through a dimensional permutation that leads the ANN to sum elements along all the tensor’s dimensions. Our system groups the output of the first sub-network with the rest of the input and feeds it to the second sub-network that gives the prediction. Our ANN system outperforms the SWAN wave model in estimating wave heights over 1.5 meters. We obtain the best performance when either all input components are used or just wind and observations. Reimplementation of the system at Ashkelon yields smaller improvements due to insufficient training data.
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基于人工神经网络的波高预测系统
我们提出了一个系统,用于预测以色列地中海沿岸中部(Hadera)的特定波浪测量站的每小时有效波高。本系统采用由两个子网络组成的人工神经网络(ANN)。我们评估不同输入对系统的重要性。输入的数据包括来自SKIRON大气模拟系统的风预报数据、SWAN波浪模式给出的台站位置的波浪预报数据以及观测到的波浪数据。我们的系统使用空间滤波方案对风数据进行预处理,然后将其以多维张量的形式输入到第一个子网络中。我们特别注意通过维度排列来连接张量元素,这使得人工神经网络沿着张量的所有维度求和元素。我们的系统将第一个子网络的输出与其余输入分组,并将其提供给给出预测的第二个子网络。我们的人工神经网络系统在估计1.5米以上的波浪高度方面优于SWAN波浪模型。我们在使用所有输入分量或仅使用风和观测时获得最佳性能。由于训练数据不足,在亚实基伦重新实施该系统的改进较小。
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来源期刊
Coastal Engineering Journal
Coastal Engineering Journal 工程技术-工程:大洋
CiteScore
4.60
自引率
8.30%
发文量
0
审稿时长
7.5 months
期刊介绍: Coastal Engineering Journal is a peer-reviewed medium for the publication of research achievements and engineering practices in the fields of coastal, harbor and offshore engineering. The CEJ editors welcome original papers and comprehensive reviews on waves and currents, sediment motion and morphodynamics, as well as on structures and facilities. Reports on conceptual developments and predictive methods of environmental processes are also published. Topics also include hard and soft technologies related to coastal zone development, shore protection, and prevention or mitigation of coastal disasters. The journal is intended to cover not only fundamental studies on analytical models, numerical computation and laboratory experiments, but also results of field measurements and case studies of real projects.
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