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Multinormal probability by sequential conditioned importance sampling: theory and application

机译:顺序条件重要性抽样的多正态概率:理论与应用

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摘要

An efficient Monte Carlo simulation algorithm is developed for estimating the probability content of rectangular domains in the multinormal probability space. The algorithm makes use of the properties of the multinormal distribution, as well as the concept of importance sampling. Accurate estimates of the probability are obtained with a relatively small number of simulations, regardless of its magnitude. The algorithm also allows easy computation of the sensitivities, of the probability with respect to distribution parameters or the boundaries of the domain. Application of the algorithm to structural system reliability is demonstrated through a simple example.
机译:开发了一种有效的蒙特卡罗模拟算法,用于估计多范数概率空间中矩形域的概率内容。该算法利用了多重正态分布的属性以及重要性抽样的概念。不管概率大小如何,都可以通过相对较少的模拟次数来获得概率的准确估计。该算法还允许轻松地计算灵敏度,相对于分布参数或域边界的概率。通过一个简单的例子证明了该算法在结构系统可靠性中的应用。

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