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An adaptive scheme for reliability-based global design optimization: A Markov chain Monte Carlo approach

机译:基于可靠性的全球设计优化的自适应方案:马尔可夫链蒙特卡罗方法

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摘要

The reliability-based design of structural dynamic systems under stochastic excitation is presented. The design problem is formulated in terms of the global minimization of the system failure probability. The corresponding optimization problem is solved by an effective stochastic simulation scheme based on the transitional Markov chain Monte Carlo method. Although the scheme is quite general, is computationally very demanding due to the large number of reliability analyses required during the design process. To cope with this difficulty, an advanced simulation technique is combined with an adaptive surrogate model for estimating the failure probabilities. In particular, a kriging meta-model is selected in the present formulation. The algorithm generates a set of nearly optimal solutions uniformly distributed over a neighborhood of the optimal solution set. Such set can be used for exploration of the global sensitivity of the system reliability. Several illustrative examples are presented to investigate the applicability and effectiveness of the proposed design scheme.
机译:介绍了随机激励下结构动态系统的基于可靠性的设计。在整个系统故障概率的全局最小化方面配制了设计问题。基于过渡马尔可夫链蒙特卡罗方法的有效随机仿真方案解决了相应的优化问题。虽然该方案相当普遍,但由于在设计过程中所需的大量可靠性分析,因此在计算上是非常苛刻的。为了应对这种困难,先进的仿真技术与自适应替代模型相结合,用于估计失效概率。特别地,在本制定中选择克里格化元模型。该算法生成一组均匀的近最佳解决方案,均匀地分布在最佳解决方案集的附近。这样的集合可用于探索系统可靠性的全局敏感性。提出了几个说明性示例以研究所提出的设计方案的适用性和有效性。

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