论文标题

使用人工神经网络和血管响应光谱数据进行海态估计的响应组件分析

Response Component Analysis for Sea State Estimation Using Artificial Neural Networks and Vessel Response Spectral Data

论文作者

Long, Nathan K., Sgarioto, Daniel, Garratt, Matthew, Sammut, Karl

论文摘要

将“船作为波浮标类比”的使用(SAWB)提供了一种新颖的方法来估计海洋状态,其中在因果波特性和血管运动响应信息之间建立了关系。这项研究的重点是使用神经网络(NNS)对基于SAWB的SEA状态估计(SSE)进行无模型的机器学习方法,以将血管响应频谱数据映射到小型无人居住的表面容器的统计波特性。 结果表明,升高响应与显着的波高估计之间存在很强的相关性,而当利用了多个容器自由度(DOF)的数据时,观察到平均波周期和波趋势预测的准确性可显着改善。总体而言,与使用类似仿真设置的现有SSE方法相比,SSE的3-DOF(大量,俯仰和滚动)的表现很好。即使运动反应较低(在高频,低波高海洋状态下),将小容器用于SAWB的优点是合理的,即使SSE精度也是合理的。鉴于频谱形式的船舶运动响应的信息密集统计表示以及NNS有效建模变量之间复杂关系的能力,设计的SSE方法显示了使用SAWB方法对移动SSE系统的未来适应性的希望。

The use of the `ship as a wave buoy analogy' (SAWB) provides a novel means to estimate sea states, where relationships are established between causal wave properties and vessel motion response information. This study focuses on a model-free machine learning approach to SAWB-based sea state estimation (SSE), using neural networks (NNs) to map vessel response spectral data to statistical wave properties for a small uninhabited surface vessel. Results showed a strong correlation between heave responses and significant wave height estimates, whilst the accuracy of mean wave period and wave heading predictions were observed to improve considerably when data from multiple vessel degrees of freedom (DOFs) was utilized. Overall, 3-DOF (heave, pitch and roll) NNs for SSE were shown to perform well when compared to existing SSE approaches that use similar simulation setups. One advantage of using small vessels for SAWB was shown as SSE accuracy was reasonable even when motion responses were low (in high-frequency, low wave height sea states). Given the information-dense statistical representation of vessel motion responses in spectral form, as well as the ability of NNs to effectively model complex relationships between variables, the designed SSE method shows promise for future adaptation to mobile SSE systems using the SAWB approach.

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