论文标题
通过基于分数矩的混合分布方法对高维非线性随机动态系统的第一分概率估计
First-passage probability estimation of high-dimensional nonlinear stochastic dynamic systems by a fractional moments-based mixture distribution approach
论文作者
论文摘要
高维非线性随机系统的第一阶段概率估计是许多科学和工程领域都可以解决的重要任务,但仍然是一个开放的挑战。本文开发了一种新颖的方法,称为“基于分数的混合分布”,以应对这种挑战。通过通过分数力矩和混合分布的概念捕获系统响应的极值分布(EVD)来实现这种方法。在我们的背景下,从定义上讲,分数时刻本身是与复杂的集成的高维积分。为了有效计算分数矩,使用精制的拉丁分层采样(RLSS)开发了允许样本扩展的平行自适应采样方案。以这种方式,可以评估分数矩的差异降低和并行计算。从低阶分数矩的了解,预计感兴趣的EVD将被重建。基于引入扩展的逆高斯分布和对数扩展偏斜的分布,提出了一个柔性混合分布模型,其中其分数矩以分析形式得出。通过拟合一组分数矩,可以通过提出的混合模型恢复EVD。因此,可以直接从恢复的eVD获得不同阈值下的第一阶段概率。该方法的性能通过三个示例组成的三个示例和一个工程问题来验证。
First-passage probability estimation of high-dimensional nonlinear stochastic systems is a significant task to be solved in many science and engineering fields, but remains still an open challenge. The present paper develops a novel approach, termed 'fractional moments-based mixture distribution', to address such challenge. This approach is implemented by capturing the extreme value distribution (EVD) of the system response with the concepts of fractional moments and mixture distribution. In our context, the fractional moment itself is by definition a high-dimensional integral with a complicated integrand. To efficiently compute the fractional moments, a parallel adaptive sampling scheme that allows for sample size extension is developed using the refined Latinized stratified sampling (RLSS). In this manner, both variance reduction and parallel computing are possible for evaluating the fractional moments. From the knowledge of low-order fractional moments, the EVD of interest is then expected to be reconstructed. Based on introducing an extended inverse Gaussian distribution and a log extended skew-normal distribution, one flexible mixture distribution model is proposed, where its fractional moments are derived in analytic form. By fitting a set of fractional moments, the EVD can be recovered via the proposed mixture model. Accordingly, the first-passage probabilities under different thresholds can be obtained from the recovered EVD straightforwardly. The performance of the proposed method is verified by three examples consisting of two test examples and one engineering problem.