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SEQUENTIAL KRIGING OPTIMIZATION FOR TIME-VARIANT RELIABILITY-BASED DESIGN INVOLVING STOCHASTIC PROCESSES

机译:涉及随机过程的基于时变可靠性的顺序克里金优化

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This paper presents a sequential Kriging optimization approach (SKO) for time-variant reliability-based design optimization (tRBDO) with the consideration of stochastic processes. To handle the extremely high dimensionality associated with time-variant uncertainties, stochastic processes are transformed to random parameters through the equivalent stochastic transformation, leading to equivalent time-independent reliability models that are capable of capturing system failures over time. To alleviate computational burden, Kriging-based surrogate modeling is utilized to predict the response of engineered systems. It is further integrated with Monte Carlo simulation (MCS) to approximate the probability of failure. To reduce the epistemic uncertainty due to the lack of data, a maximum confidence enhancement method (MCE) is employed to iteratively identify important points for updating surrogate models. Sensitivities of reliability with respect to design variables are estimated using the first-order score function in the proposed tRBDO framework. Two case studies are introduced to demonstrate the efficiency and accuracy of the proposed approach.
机译:本文提出了一种基于随机过程的时变基于可靠性的设计优化(tRBDO)的顺序Kriging优化方法(SKO)。为了处理与时变不确定性相关的极高维度,通过等效的随机转换将随机过程转换为随机参数,从而形成等效的与时间无关的可靠性模型,该模型能够随时间捕获系统故障。为了减轻计算负担,基于Kriging的替代模型可用来预测工程系统的响应。它进一步与蒙特卡洛模拟(MCS)集成在一起,以估计故障概率。为了减少由于缺乏数据而引起的认知不确定性,采用了最大置信度增强方法(MCE)来迭代地标识要更新代理模型的重要点。使用拟议的tRBDO框架中的一阶得分函数,可以估算关于设计变量的可靠性。介绍了两个案例研究,以证明所提出方法的效率和准确性。

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