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Adaptive reduction of random variables using global sensitivity in reliability-based optimisation

机译:在基于可靠性的优化中使用全局灵敏度自适应减少随机变量

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This paper presents an efficient shape optimisation technique based on Stochastic Response Surfaces (SRS) and adaptive reduction of random variables using global sensitivity information. The SRS is a polynomial chaos expansion that uses Hermite polynomial bases and provides a closed form solution of the model output from a significantly lower number of model simulations than those required by conventional methods such as the Monte Carlo simulations and Latin Hypercube sampling. Random variables are adaptively fixed before constructing the SRS if their corresponding Global Sensitivity Indices (GSI) calculated using the low-order SRS are below a certain threshold. It has been shown that the GSI can be calculated analytically because the SRS employs the Hermite polynomials as bases. Using SRS and adaptive reduction of random variables, reliability-based optimisation problems are solved with a significant reduction in computational cost. The efficiency and convergence of the proposed approach is demonstrated using a benchmark case and an industrial Reliability-Based Design Optimisation (RBDO) problem.
机译:本文提出了一种有效的形状优化技术,该技术基于随机响应表面(SRS)和使用全局敏感度信息的自适应随机变量归约。 SRS是一种使用Hermite多项式基数的多项式混沌扩展,它为模型输出提供的闭式解决方案,其数量远少于传统方法(如蒙特卡洛模拟和Latin Hypercube采样)所需的模型模拟。如果使用低阶SRS计算的随机变量相应的全局敏感度指数(GSI)低于某个阈值,则在构建SRS之前将其自适应地固定。结果表明,由于SRS使用Hermite多项式作为基础,因此可以解析地计算GSI。使用SRS和自适应减少随机变量,可以显着降低计算成本来解决基于可靠性的优化问题。使用一个基准案例和一个基于工业可靠性的设计优化(RBDO)问题,证明了该方法的效率和收敛性。

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