建立人工神经网络,预测帆船的风、流、浪的方向和大小

Timur İnan, A. Baba
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引用次数: 2

摘要

水流、风、波浪方向和大小是影响船舶航向的重要因素。这些因素的作用可能是积极的,也可能是消极的,这取决于船舶的航向。在这两种情况下,根据这些条件对路线进行优化,将改善劳动力,燃料和时间等因素。为了估计航行区域的风、浪、流方向和震级,有必要开发一种利用历史信息进行预测的系统。我们的研究使用了来自E1M3A浮子的历史信息,这是POSEIDON系统的一部分。利用这些信息,我们训练了人工神经网络,并创建了三个独立的人工神经网络。人工神经网络可以预测风向和风速、海流方向和速度、波浪方向和高度。该系统所作的估计仅对浮标所在的区域有效。对于不同的区域,有必要使用利用这些区域的历史信息训练的人工神经网络。这项研究是前瞻性研究的一个例子。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Building artificial neural networks to predict direction and magnitude of wind, current and wave for sailing vessels
Current, wind, wave direction and magnitude are important factors affecting the course of ships. These factors may act positively or negatively depending on the course of a vessel. In both cases, optimization of the route according to these conditions, will improve the factors such as labor, fuel and time. In order to estimate the wind, wave, current direction and magnitude for the region to be navigated, it is necessary to develop a system that can make predictions by using historical information. Our study uses historical information from the E1M3A float, which is a part of the POSEIDON system. With this information being used, artificial neural networks were trained and three separate artificial neural networks were created. Artificial neural networks can predict wind direction and speed, direction and speed of sea current, wave direction and heigth. The esmitations made by this system are only valid for the region where the float is located. For different regions, it is necessary to use artificial neural networks trained using the historical information of those regions. This study is an example for prospective studies.
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