WIND AND WAVE TRAINED ARTIFICIAL NEURAL NETWORKS FOR THE FORECASTING OF WAVE CLIMATE IN HARBOUR AREA

Luca Cavallaro, Claudio Iuppa, Elisa Castro, Carla Faraci, Rosaria Ester Musumeci, Enrico Foti
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Abstract

Nowadays, maritime transportation has expanded rapidly, involving the need to enhance several navigation-related issues, particularly concerning the safety of navigation, which is significantly impacted by weather conditions. In this regard, creating a wave forecasting system could facilitate vessel movement at the harbour entrance or inside the sheltered area. Wave characteristics are usually estimated using numerical models, which generally require high computational costs, making them inadequate for nowcasting and forecasting wave climate. The current study describes the implementation of a forecasting methodology for the port area of Augusta (Sicily) based on an Artificial Neural Network (ANN) that attempts to deliver a trustworthy response and the numerical model but with a significant reduction in the computational time.
采用风浪训练人工神经网络对港区波浪气候进行预报
如今,海上运输迅速发展,涉及到需要加强几个与航行有关的问题,特别是与航行安全有关的问题,这受到天气条件的显著影响。在这方面,建立海浪预报系统可方便船只在海港入口或避风区内移动。波浪特征通常使用数值模式估计,这通常需要较高的计算成本,使其不适合临近预报和预测波浪气候。目前的研究描述了基于人工神经网络(ANN)的奥古斯塔(西西里岛)港区预测方法的实施,该方法试图提供可靠的响应和数值模型,但大大减少了计算时间。
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