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FEM Analysis of Dropped Container in Offshore Platform Operations with Nonlinear Fitting Based on PLS-Based Neural Network

机译:基于PLS的神经网络非线性拟合海上平台作业中跌落集装箱的有限元分析。

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Offshore platform has long been in a complex and time-varying marine environment, would be inevitably influenced by environmental load and accidental loading, and result in the occurrence of various kinds of accidents or even disasters. The risk assessment for ocean platform has become an important issue in marine engineering field. However, the quantitative calculation of risks in the marine engineering industry is extremely difficult. The reason may attribute to the fact that there are few relevant statistical databases; and the mechanism of collision damage of marine structures is complex. The numerical simulation of impact caused by falling object is carried out by nonlinear finite element method (FEM). The PLS-RBF network is used for nonlinear interpolation purpose by combining the partial least square regression with the radial basis function (RBF) neural network. Therefore, the trained network can be implemented to obtain accurate collision results under various conditions by nonlinear interpolation. The feasibility and effectiveness of the proposed mapping approach for nonlinear finite analysis are testified by the simulation validation.
机译:海上平台长期处于复杂且时变的海洋环境中,不可避免地会受到环境负荷和意外负荷的影响,并导致各种事故甚至灾害的发生。海洋平台的风险评估已成为海洋工程领域的重要课题。但是,海洋工程行业中风险的定量计算非常困难。原因可能归因于相关统计数据库很少;海洋结构碰撞破坏的机理是复杂的。利用非线性有限元方法(FEM)对跌落物体造成的冲击进行了数值模拟。通过将偏最小二乘回归与径向基函数(RBF)神经网络相结合,PLS-RBF网络用于非线性插值。因此,可以通过非线性插值来实现训练网络,以在各种条件下获得准确的碰撞结果。仿真验证了所提出的非线性有限分析映射方法的可行性和有效性。

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