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Probabilistic sensitivity analysis for novel second-order reliability method (SORM) using generalized chi-squared distribution

机译:基于广义卡方分布的新型二阶可靠性方法(SORM)的概率敏感性分析

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摘要

Reliability-based design optimization (RBDO) requires evaluation of sensitivities of probabilistic constraints. To develop RBDO utilizing the recently proposed novel second-order reliability method (SORM) that improves conventional SORM approaches in terms of accuracy, the sensitivities of the probabilistic constraints at the most probable point (MPP) are required. Thus, this study presents sensitivity analysis of the novel SORM at MPP for more accurate RBDO. During analytic derivation in this study, it is assumed that the Hessian matrix does not change due to the small change of design variables. The calculation of the sensitivity based on the analytic derivation requires evaluation of probability density function (PDF) of a linear combination of noncentral chi-square variables, which is obtained by utilizing general chi-squared distribution. In terms of accuracy, the proposed probabilistic sensitivity analysis is compared with the finite difference method (FDM) using the Monte Carlo simulation (MCS) through numerical examples. The numerical examples demonstrate that the analytic sensitivity of the novel SORMagrees very well with the sensitivity obtained by FDMusing MCS when a performance function is quadratic in U-space and input variables are normally distributed. It is further shown that the proposed sensitivity is accurate enough compared with FDM results even for a higher order performance function.
机译:基于可靠性的设计优化(RBDO)需要评估概率约束的敏感性。为了利用最近提出的新颖的二阶可靠性方法(SORM)开发RBDO,该方法在准确性方面改进了传统的SORM方法,需要在最可能的点(MPP)上概率约束的敏感性。因此,本研究提出了MPP上新型SORM的敏感性分析,以获取更准确的RBDO。在本研究的分析推导过程中,假设由于设计变量的微小变化,Hessian矩阵不变。基于分析推导的灵敏度计算需要评估非中心卡方变量线性组合的概率密度函数(PDF),这是通过利用一般卡方分布获得的。在准确性方面,通过数值示例,使用蒙特卡洛模拟(MCS)将提出的概率敏感性分析与有限差分法(FDM)进行比较。数值示例表明,当性能函数在U空间中是二次函数且输入变量呈正态分布时,新型SOR的解析灵敏度与FDM使用MCS获得的灵敏度非常吻合。进一步表明,即使对于更高阶的性能函数,所提出的灵敏度与FDM结果相比也足够准确。

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