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首页> 外文期刊>Reliability Engineering & System Safety >A system active learning Kriging method for system reliability-based design optimization with a multiple response model
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A system active learning Kriging method for system reliability-based design optimization with a multiple response model

机译:一种用于基于系统可靠性的设计优化的系统主动学习kriging方法,具有多响应模型

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摘要

This paper proposes a system active learning Kriging (SALK) method to handle system reliability-based design optimization (SRBDO) problems, where responses of all constraints at an input can be obtained simultaneously by running a multiple response model. In SALK, to select update points around the limit-state surfaces, three new system active learning functions are respectively defined for parallel, series and combined systems. The confidence interval of estimation of system failure probability at intermediate SRBDO solutions is considered in the stopping condition of Kriging update to reduce unnecessary update points used for refining the region far from the final SRBDO solution. Based on updated Kriging models, system failure probability is estimated by Monte Carlo simulation (MCS), and its partial derivative with respect to random variables is calculated by stochastic sensitivity analysis. The efficiency of the proposed SALK method for SRBDO is validated by four examples, including a power harvester design. The results indicate that SALK can locally approximate the limit-state surfaces around the final SRBDO solution and efficiently reduce the computational cost on the refinement of the region far from the final SRBDO solution.
机译:本文提出了一种系统主动学习Kriging(Salk)方法来处理基于系统可靠性的设计优化(SRBDO)问题,其中通过运行多个响应模型可以同时获得输入的所有约束的响应。在Salk中,要在限制状态曲面周围选择更新点,则分别为并行,系列和组合系统定义三个新的系统主动学习功能。在Kriging更新的停止条件下考虑了中间SRBDO解决方案在中间SRBDO解决方案中估计系统失效概率的置信区间,以减少用于精炼远离最终SRBDO解决方案的区域的不必要的更新点。基于更新的Kriging模型,通过Monte Carlo仿真(MCS)估计系统故障概率,并且通过随机敏感性分析来计算其相对于随机变量的部分衍生物。所提出的SRBDO方法的效率由四个例子验证,包括动力收割机设计。结果表明,Salk可以在最终SRBDO解决方案周围局部地近似于极限状态表面,并有效地降低远离最终SRBDO解决方案的区域的改进计算成本。

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