Practical method for evaluating wind influence on autonomous ship operations (2nd report)

IF 2.7 4区 工程技术 Q2 ENGINEERING, CIVIL
Atsuo Maki, Yuuki Maruyama, Leo Dostal, Kenji Sasa, Ryohei Sawada, Kouki Wakita
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引用次数: 0

Abstract

Recently, a considerable number of research and development projects have focused on automatic vessels. A highly realistic simulator is needed to validate control algorithms for autonomous vessels. For instance, when considering the automatic berthing/unberthing of a vessel, the effect of wind in such low-speed operations cannot be ignored because of the low rudder performance during slow harbor maneuvers. Therefore, a simulator used to validate an automatic berthing/unberthing control algorithm should be able to reproduce the time histories of wind speed and wind direction realistically. Therefore, in our first report on this topic, to obtain the wind speed distribution, we proposed a simple algorithm to generate the time series and distribution of wind speed only from the mean wind speed. However, for wind direction, the spectral distribution could not be determined based on our literature surveys, and hence, a simple method for estimating the coefficients of the stochastic differential equation (SDE) could not be proposed. In this study, we propose a new methodology for generating the time history of wind direction based on the results of Kuwajima et al.’s work. They proposed a regression equation of the standard deviation of wind direction variation for the mean wind speed. In this study, we assumed that the wind direction distribution can be represented by a linear filter as in our previous paper, and its coefficients are derived from Kuwajima’s proposed equation. Then, as in the previous report, the time series of wind speed and wind direction can be calculated easily by analytically solving the one-dimensional SDE. The joint probability density functions of wind speed and wind direction obtained by computing them independently agree well with the measurement results.

Abstract Image

评估风对船舶自主运行影响的实用方法(第二次报告)
最近,相当多的研究和开发项目都集中在自动船只上。需要一个高度逼真的模拟器来验证自动船只的控制算法。例如,在考虑船舶自动靠泊/离泊时,由于在港口慢速机动时舵的性能较低,因此在这种低速操作中不能忽视风的影响。因此,用于验证自动靠泊/离泊控制算法的模拟器应能真实再现风速和风向的时间历程。因此,在我们关于该主题的第一份报告中,为了获得风速分布,我们提出了一种简单的算法,仅从平均风速生成风速的时间序列和分布。然而,根据我们的文献调查,风向的频谱分布无法确定,因此无法提出一种简单的方法来估计随机微分方程(SDE)的系数。在本研究中,我们以 Kuwajima 等人的研究成果为基础,提出了一种生成风向时间历史的新方法。他们提出了平均风速的风向变化标准偏差回归方程。在本研究中,我们假定风向分布可以用线性滤波器表示,如前一篇论文所述,其系数来自 Kuwajima 提出的方程。然后,与之前的报告一样,通过分析求解一维 SDE,可以轻松计算出风速和风向的时间序列。通过独立计算得到的风速和风向的联合概率密度函数与测量结果非常吻合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Marine Science and Technology
Journal of Marine Science and Technology 工程技术-工程:海洋
CiteScore
5.60
自引率
3.80%
发文量
47
审稿时长
7.5 months
期刊介绍: The Journal of Marine Science and Technology (JMST), presently indexed in EI and SCI Expanded, publishes original, high-quality, peer-reviewed research papers on marine studies including engineering, pure and applied science, and technology. The full text of the published papers is also made accessible at the JMST website to allow a rapid circulation.
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