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A general frame for uncertainty propagation under multimodally distributed random variables

机译:多数组分布式随机变量下的不确定传播的一般帧

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摘要

Uncertainty propagation under multimodally distributed random variables, called multimodal distribution propagation for short, is a challenging problem due to the complicate probability density function of the random variables. In this paper, a general frame based on a new finite mixture model (lambda MM) constructed by derivative lambda probability density function and polynomial chaos expansion method is put forward to efficiently solve the multimodal distribution propagation problem. First, lambda MM with high accuracy and extensive applicability is proposed to represent the arbitrary unimodal distributions and multimodal distributions. Second, a pseudo EM method proved strictly is proposed to estimate the parameters of this lambda MM. Third, the statistical moments of the response by polynomial chaos expansion method is derived mathematically. Since the new mixture model can be decomposed into several unimodal probability distributions, the multimodal distribution propagation can be successfully converted into several unimodal distribution propagations, which further can be easily solved by polynomial chaos expansion method. Finally, the maximum entropy principle is adopted to evaluate the probability density function of the result of every unimodal distribution propagation, which is then superimposed into the final probability density function of the system response. The proposed frame only requires the first four statistical moments to evaluate the probability density function and avoid calculating the higher statistical moments, especially for the situation that the probability distribution of the system response is multimodal. Four examples are presented to verify the high accuracy and efficiency of the proposed general frame for uncertainty propagation. (C) 2020 Elsevier B.V. All rights reserved.
机译:由于随机变量的复杂概率密度函数,在多数据分布式随机变量下称为多模级分布传播的多数组分布传播的不确定性传播是一个具有挑战性的问题。本文提出了一种基于通过衍生λ概率密度函数和多项式混沌扩展方法构建的新的有限混合物模型(Lambda mm)的一般帧,以有效地解决了多模式分布传播问题。首先,提出了具有高精度和广泛适用性的Lambda mm,以代表任意单峰分布和多模式分布。其次,严格提出了伪EM方法,以估计该λmm的参数。第三,多项式混沌扩展方法的响应统计时刻是在数学上得出的。由于新的混合物模型可以分解成几种单峰概率分布,因此可以成功地转换为多峰分布传播,以通过多项式混沌膨胀方法容易地解决几种单向分布传播。最后,采用最大熵原理来评估每个单峰分布传播的结果的概率密度函数,然后叠加到系统响应的最终概率密度函数中。所提出的帧仅需要前四个统计时刻来评估概率密度函数并避免计算更高的统计瞬间,特别是对于系统响应的概率分布是多模式的情况。提出了四个例子以验证所提出的总帧的高精度和效率,以便不确定传播。 (c)2020 Elsevier B.v.保留所有权利。

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