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Wave Height Prediction based on Wind Information by using General Regression Neural Network, study case in Jakarta Bay

机译:通用回归神经网络基于风信息的海浪高度预测,以雅加达湾为例

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Information about ocean wave is very important for naval navigation, port operations, offshore or nearshore activities around the sea waters. Moreover prediction of wave condition is necessary for design of harbour, coastal and offshore structures. Variations in wave heights are caused by wind pressure on free waves which make it random and uncertain, so that become difficult to predict. In previous studies, wave prediction have been carried out by using semi-empirical methods and conventional methods that require high resolution simulations and high computation. In this paper, we propose a method for prediction wave height from wind data by using a variant of Artificial Neural Network (ANN) with single pass associative memory-forward, so called General Regression Neural Network (GRNN). To obtain a set of training data, we perform numerical wave simulation by using SWAN (Simulating Wave Nearshore) model by using wind data obtained from ECMWF ERA-5. As a study area, we choose a rather shallow bathymetry and complex geometry, in Jakarta Bay, Indonesia. Results of prediction by using GRNN show a good agreement with wave data.
机译:有关海浪的信息对于海上航行,港口作业,海水附近的近海或近岸活动非常重要。此外,波浪条件的预测对于港口,沿海和近海结构的设计是必要的。波高的变化是由自由波上的风压引起的,这使其变得随机且不确定,因此变得难以预测。在先前的研究中,已经通过使用半经验方法和需要高分辨率模拟和高计算量的常规方法来进行波浪预测。在本文中,我们提出了一种通过使用人工神经网络(ANN)的变体与单程关联记忆转发来从风数据预测波浪高度的方法,即通用回归神经网络(GRNN)。为了获得一组训练数据,我们使用从ECMWF ERA-5获得的风数据,通过使用SWAN(近海模拟波)模型进行数值波模拟。作为研究区域,我们在印度尼西亚雅加达湾选择了较浅的测深和复杂的几何形状。使用GRNN进行的预测结果与波浪数据显示出良好的一致性。

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