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Database of model-scale sloshing experiment for LNG tank and application of artificial neural network for sloshing load prediction

机译:LNG罐模型尺度晃动实验数据库及人工神经网络在晃动预测中的应用

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摘要

Seoul National University has conducted a considerable number of six degree-of-freedom irregular small-scale sloshing model tests 1/70-1/25 scales, particularly focusing on the tanks of liquefied natural gas (LNG) carriers. An experimental database has been created to provide information of sloshing load severity, which are obtained from a lot of the post-processed experimental results. In this paper, the summary of the database is described. The artificial neural network is trained based on the database to predict sloshing load severity. Various attributes that affect experimental results are considered. Management of these attributes and the machine learning architecture are illustrated. The prediction results are validated for several experiments that are not included in the training process. Further possibilities of using the database for model test planning and cargo hold design are discussed.
机译:首尔国立大学进行了相当数量的六种自由度不规则的小型晃动模型试验,特别是专注于液化天然气(LNG)载体的坦克。已经创建了一个实验数据库以提供晃动负荷严重性的信息,这些信息是从大量处理后的实验结果获得的。在本文中,描述了数据库的摘要。人工神经网络基于数据库培训,以预测晃动负荷严重程度。考虑影响实验结果的各种属性。说明了这些属性和机器学习架构。验证预测结果对于不包括在培训过程中的几个实验。讨论了使用数据库进行模型测试规划和货物保持设计的进一步可能性。

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