Efficient sampling for extreme event statistics of the wave loads on an offshore platform

M. A. Mohamad, T. Sapsis
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Abstract

We develop a method for the evaluation of extreme event statistics associated with nonlinear dynamical systems, using a very small number of samples. From an initial dataset of design points, we formulate a sequential strategy that provides the ‘next-best’ data point (set of parameters) that when evaluated results in improved estimates of the probability density function (pdf) for a scalar quantity of interest. The approach utilizes Gaussian process regression to perform Bayesian inference on the parameter-to-observation map describing the quantity of interest. We then approximate the desired pdf along with uncertainty bounds utilizing the posterior distribution of the inferred map. The ‘next-best’ design point is sequentially determined through an optimization procedure that selects the point in parameter space that maximally reduces uncertainty between the estimated bounds of the pdf prediction. Since the optimization process utilizes only information from the inferred map it has minimal computational cost. Moreover, the special form of the criterion emphasizes the tails of the pdf. The method is applied to estimate the extreme event statistics for a very high-dimensional system with millions degrees of freedom: an offshore platform subjected to three-dimensional irregular waves. It is demonstrated that the developed approach can accurately determine the extreme event statistics using orders of magnitude smaller number of samples compared with traditional approaches.
海上平台波浪荷载极端事件统计的有效采样
我们开发了一种方法来评估与非线性动力系统相关的极端事件统计,使用非常少量的样本。从设计点的初始数据集中,我们制定了一个顺序策略,该策略提供了“次优”数据点(参数集),当对其进行评估时,结果是对感兴趣的标量的概率密度函数(pdf)的改进估计。该方法利用高斯过程回归对描述感兴趣数量的参数-观测图进行贝叶斯推理。然后,我们利用推断地图的后验分布近似期望的pdf以及不确定性边界。“次优”设计点通过优化程序依次确定,优化程序选择参数空间中最大限度地减少pdf预测估计边界之间的不确定性的点。由于优化过程仅利用来自推断映射的信息,因此计算成本最小。此外,该准则的特殊形式强调了pdf的尾部。将该方法应用于具有百万自由度的非常高维系统——受三维不规则波浪作用的海上平台的极端事件统计估计。结果表明,与传统方法相比,该方法可以使用少几个数量级的样本数准确地确定极端事件统计量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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