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Non-parametric stochastic subset optimization for optimal-reliability design problems

机译:最优可靠性设计问题的非参数随机子集优化

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The stochastic subset optimization (SSO) algorithm has been recently proposed for design problems that use the system reliability as objective function. It is based on simulation of samples of the design variables from an auxiliary probability density function, and uses this information to identify subsets for the optimal solution. This paper presents an extension, termed Non-Parametric SSO, that adopts kernel density estimation (KDE) to approximate the objective function through these samples. It then uses this approximation to identify candidate points for the global minimum. To reduce the computational effort an iterative approach is established whereas efficient reflection methodologies are implemented for the KDE.
机译:最近,针对使用系统可靠性作为目标函数的设计问题,提出了随机子集优化(SSO)算法。它基于辅助概率密度函数对设计变量样本的仿真,并使用此信息来标识最佳解决方案的子集。本文提出了一个扩展,称为非参数SSO,它采用核密度估计(KDE)来通过这些样本近似目标函数。然后,使用此近似值来确定全局最小值的候选点。为了减少计算量,建立了一种迭代方法,而针对KDE实施了有效的反射方法。

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