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Application of system identification techniques in efficient modelling of offshore structural response. Part I: Model development

机译:系统识别技术在海上结构响应有效建模中的应用。第一部分:模型开发

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Offshore structures are exposed to random wave loading in the ocean environment and hence the probability distribution of the extreme values of their response to wave loading is of great value in the design of these structures. Wave loading on slender members of bottom-supported jacket or jack-up structures is frequently calculated by Morison's equation. Due to nonlinearity of the drag component of Morison wave loading and also due to intermittency of wave loading on members in the splash zone, the response is often non-Gaussian; therefore, simple techniques for derivation of their extreme response probability distribution are not available. Finite-memory nonlinear systems (FMNS) are extensively used in establishing a simple relationship between the output and input of complicated nonlinear systems. In this paper, it will be shown how the response of an offshore structure exposed to Morison wave loading can be approximated by the response of an equivalent finite-memory nonlinear system. The approximate models can then be used to determine the probability distribution of response extreme values with great efficiency. Part I of this paper is devoted to the development of an efficient FMNS model for offshore structural response while part II is devoted to the validation of the developed models.
机译:海洋结构在海洋环境中会受到随机波浪载荷的影响,因此它们对波浪载荷的响应的极值的概率分布在这些结构的设计中具有重要价值。底部支撑的外套或自升式结构的细长构件上的波浪载荷通常根据莫里森方程计算。由于莫里森波载荷的阻力分量的非线性,以及由于飞溅区域中成员的波载荷的间歇性,其响应通常是非高斯的。因此,尚无用于推导其极端响应概率分布的简单技术。有限内存非线性系统(FMNS)被广泛用于建立复杂非线性系统的输出和输入之间的简单关系。在本文中,将展示如何通过等效的有限内存非线性系统的响应来近似暴露于莫里森波荷载下的海上结构的响应。然后,可以使用近似模型高效地确定响应极值的概率分布。本文的第一部分专门针对海上结构响应开发有效的FMNS模型,而第二部分专门针对已开发模型的验证。

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