School of Aeronautics, Northwestern Polytechnical University, Xi'an, Shaanxi, China.
School of Mechanics and Civil & Architecture, Northwestern Polytechnical University, Xi'an, Shaanxi, China.
Risk Anal. 2018 Dec;38(12):2703-2721. doi: 10.1111/risa.13133. Epub 2018 Jul 5.
In this article, a new set of multivariate global sensitivity indices based on distance components decomposition is proposed. The proposed sensitivity indices can be considered as an extension of the traditional variance-based sensitivity indices and the covariance decomposition-based sensitivity indices, and they have similar forms. The advantage of the proposed sensitivity indices is that they can measure the effects of an input variable on the whole probability distribution of multivariate model output when the power of distance . When , the proposed sensitivity indices are equivalent to the covariance decomposition-based sensitivity indices. To calculate the proposed sensitivity indices, an efficient Monte Carlo method is proposed, which can also be used to calculate the covariance decomposition-based sensitivity indices at the same time. The examples show the reasonability of the proposed sensitivity indices and the stability of the proposed Monte Carlo method.
本文提出了一套新的基于距离分量分解的多元全局灵敏度指标。所提出的灵敏度指标可以被视为传统基于方差的灵敏度指标和基于协方差分解的灵敏度指标的扩展,它们具有相似的形式。所提出的灵敏度指标的优点是,当距离幂次为. 时,它们可以度量输入变量对多元模型输出的整个概率分布的影响。当 时,所提出的灵敏度指标等同于基于协方差分解的灵敏度指标。为了计算所提出的灵敏度指标,提出了一种有效的蒙特卡罗方法,该方法也可以同时用于计算基于协方差分解的灵敏度指标。实例表明了所提出的灵敏度指标的合理性和所提出的蒙特卡罗方法的稳定性。