Determination of cryogenic temperature loads for finite-element model of LNG bunkering ship under LNG release accident

IF 1.1 Q4 MECHANICS Curved and Layered Structures Pub Date : 2023-01-01 DOI:10.1515/cls-2022-0205
H. Nubli, J. Sohn, Sangjin Kim
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Abstract

Abstract The rising demand for liquefied natural gas (LNG)-fueled ships requires the LNG bunkering facility that partially uses a ship-to-ship operation. The bunkering process of LNG fuel may have a greater risk due to LNG volatility. The cryogenic temperature of LNG poses a threat to the personnel and structural embrittlement to ships. Therefore, cryogenic spill protection optimization was introduced concerning the structural strength analysis using finite element (FE) by utilizing cryogenic temperature loads provided by the computational fluid dynamics (CFD) model of an LNG release. This study aims to build a platform for transferring the temperature load profile from CFD to FE software accurately. The CFD model usually uses a structured Cartesian grid, and the FE method adopts an unstructured tetrahedral or hexahedral mesh. As a result, both configurations store results at different positions, and it is not preferred for the load profile to be transferred directly. The error will be greater due to the variance of positions. Random Forest, a machine learning method, has been employed that uses a regression technique to deal with a continuous variable. An accurate load profile for the FE model can be obtained by adopting decision tree learning in Random Forest. The procedure for determining the temperature load profile is presented in this article.
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LNG泄漏事故下LNG加注船有限元模型低温载荷的确定
摘要对液化天然气(LNG)燃料船舶的需求不断增长,需要部分使用船对船操作的LNG加注设施。由于液化天然气的波动性,液化天然气燃料的加注过程可能具有更大的风险。液化天然气的低温对人员构成威胁,对船舶造成结构脆化。因此,介绍了利用液化天然气释放的计算流体动力学(CFD)模型提供的低温温度载荷,使用有限元(FE)进行结构强度分析的低温泄漏防护优化。本研究旨在建立一个平台,将CFD中的温度-载荷分布精确地转换为有限元软件。CFD模型通常使用结构化笛卡尔网格,有限元方法采用非结构化四面体或六面体网格。因此,两种配置都将结果存储在不同的位置,并且不优选直接传输负载分布。由于位置的变化,误差会更大。随机森林是一种机器学习方法,它使用回归技术来处理连续变量。通过在随机森林中采用决策树学习,可以获得有限元模型的精确负载分布。本文介绍了确定温度负荷分布的程序。
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来源期刊
CiteScore
2.60
自引率
13.30%
发文量
25
审稿时长
14 weeks
期刊介绍: The aim of Curved and Layered Structures is to become a premier source of knowledge and a worldwide-recognized platform of research and knowledge exchange for scientists of different disciplinary origins and backgrounds (e.g., civil, mechanical, marine, aerospace engineers and architects). The journal publishes research papers from a broad range of topics and approaches including structural mechanics, computational mechanics, engineering structures, architectural design, wind engineering, aerospace engineering, naval engineering, structural stability, structural dynamics, structural stability/reliability, experimental modeling and smart structures. Therefore, the Journal accepts both theoretical and applied contributions in all subfields of structural mechanics as long as they contribute in a broad sense to the core theme.
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