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A local adaptive sampling method for reliability-based design optimization using Kriging model

机译:基于Kriging模型的基于可靠性的局部优化设计方法

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摘要

Reliability-based design optimization (RBDO) in practical applications is hindered by its huge computational cost during structure reliability evaluating process. Krigingmodel- based RBDO is an effective method to overcome this difficulty. However, the accuracy of Kriging model depends directly on how to select the sample points. In this paper, the local adaptive sampling (LAS) is proposed to enhance the efficiency of constructing Kriging models for RBDO problems. In LAS, after initialization, new samples for probabilistic constraints are mainly selected within the local region around the current design point from each optimization iteration, and in the local sampling region, sample points are first considered to be located on the limit state constraint boundaries. The size of the LAS region is adaptively defined according to the nonlinearity of the performance functions. The computation capability of the proposed method is demonstrated using three mathematical RBDO problems and a honeycomb crash-worthiness design application. The comparison results show that the proposed method is very efficient.
机译:在实际应用中,基于可靠性的设计优化(RBDO)受结构可靠性评估过程中巨大的计算成本的困扰。基于Krigingmodel的RBDO是克服这一困难的有效方法。但是,克里格模型的准确性直接取决于如何选择采样点。本文提出了局部自适应采样(LAS),以提高针对RBDO问题构造克里格模型的效率。在LAS中,初始化后,主要从每次优化迭代中在当前设计点附近的局部区域内选择概率约束的新样本,并且在局部采样区域中,首先将采样点视为位于极限状态约束边界上。根据性能函数的非线性来自适应地定义LAS区域的大小。利用三个数学RBDO问题和蜂窝抗撞性设计应用论证了该方法的计算能力。比较结果表明,该方法非常有效。

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