Rare event probability estimation is an important topic in reliability analysis. Stochastic methods, such as importance sampling, have been developed to estimate such probabilities but they often fail in high dimension. In this paper, we propose a new cross-entropy-based importance sampling algorithm to improve rare event probability estimation in high dimension. We focus on the cross-entropy method with Gaussian auxiliary distributions and we suggest to update the Gaussian covariance matrix only in a one-dimensional subspace. For that purpose, the main idea is to consider the projection in the one-dimensional subspace spanned by the sample mean vector, which gives an influential direction for the variance estimation. This approach does not require any additional simulation budget compared to the basic cross-entropy algorithm and we show on different numerical test cases that it greatly improves its performance in high dimension.
翻译:稀有事件概率估计是可靠性分析的一个重要专题。 重要取样等存储方法已经开发出来,用来估计这种概率,但往往在高维方面失灵。 在本文中,我们提议采用新的跨热带重要取样算法,以改进高维的稀有事件概率估计。我们侧重于与高斯辅助分布器的交叉热带方法,我们建议仅在一个维次空间更新高斯共变矩阵。为此,主要想法是考虑在由中试媒介覆盖的一维次空间的预测,为差异估计提供有影响力的方向。这个方法不需要与基本跨热带算法相比,再追加任何模拟预算,我们还要展示不同的数字测试案例,表明它大大改进了高斯次空间的性能。