描述随机疲劳裂纹扩展的泊松型概率模型的快速模拟方案

Hiroaki Tanaka-Kanekiyo
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引用次数: 0

摘要

基于描述泊松型噪声驱动下随机疲劳裂纹扩展的概率模型,提出了一种用于可靠性分析的蒙特卡罗快速模拟方法。所提出的仿真方案基于一种适用于lsamvy过程的概率测度变换,实现了重要采样原理,使得生成的样本量很小,也能准确估计出很小的故障概率。首先,通过引入时间非齐次复合泊松过程作为驱动噪声,建立了描述随机疲劳裂纹扩展的随机微分方程。其次,利用时间变量变换技术,将时间齐次复合泊松过程的概率测度变换应用于随机疲劳裂纹扩展模型,得到了实现重要采样原理的蒙特卡罗模拟方案。最后,通过一些数值算例说明,所提出的模拟方案可以在样本量很小的情况下准确估计疲劳失效概率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Fast Simulation Scheme for a Probabilistic Model of Poisson Type Describing Random Fatigue Crack Growth
A fast Monte Carlo simulation scheme is newly developed for reliability analyses based upon a probabilistic model describing random fatigue crack growth driven by a noise of Poisson type. The proposed simulation scheme is based upon a probability measure transformation available for Lévy processes, which realizes an importance sampling principle so that very small probability of failure can be accurately estimated with small size of generated samples. First, a random differential equation is formulated for describing random fatigue crack growth by introducing a temporally inhomogeneous compound Poisson process as a driving noise. Next, a probability measure transformation for temporally homogeneous compound Poisson processes is applied to the random fatigue crack growth model by the use of a transformation technique of a time variable, which leads to a Monte Carlo simulation scheme realizing the importance sampling principle. Finally, through some numerical examples, it is clarified that the proposed simulation scheme can give accurate estimations for probability of fatigue failure with quite small sample size.
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