RELIABILITY-BASED DESIGN OPTIMIZATION OF UNCERTAIN LINEAR SYSTEMS SUBJECTED TO RANDOM VIBRATIONS

L. E. Ballesteros Martínez, S. Missoum
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Abstract

A reliability-based design optimization (RBDO) approach for uncertain linear systems subjected to random vibrations is presented. The computation of the first-passage failure probability with uncertain system parameters is computed as the total probability, which accounts for both the stochastic excitation and the randomness of the parameters. This quantity, which is dependent on the failure rate, is in general difficult to compute for complex problems involving finite element simulations. This difficulty becomes even more pronounced in the case of RBDO. To mitigate this problem, this work uses surrogate models and a dedicated adaptive sampling scheme to significantly reduce the number of simulations. Gaussian Processes (GPs) are used as surrogates to approximate the failure rate over the extended space that includes design variables and random parameters. The adaptive sampling scheme leverages the availability of the prediction variance while accounting for the joint distribution of the system's random parameters, enabling the scheme to focus on regions of the space with high probabilistic content. The RBDO algorithm is applied to two test problems modeled with finite elements: a cantilever beam with tip mass and a payload adapter.
基于可靠性的受随机振动影响的不确定线性系统的优化设计
本文介绍了一种基于可靠性的设计优化(RBDO)方法,适用于受随机振动影响的不确定线性系统。在系统参数不确定的情况下,首次通过失效概率的计算方法为总概率,其中考虑了随机激励和参数的随机性。总概率取决于故障率,对于涉及有限元模拟的复杂问题,一般很难计算。在 RBDO 的情况下,这一困难变得更加明显。为了缓解这一问题,本研究采用了代用模型和专门的自适应采样方案,从而大大减少了模拟次数。高斯过程(GPs)被用作代用模型,用于近似包括设计变量和随机参数在内的扩展空间中的故障率。自适应采样方案利用了预测方差的可用性,同时考虑了系统随机参数的联合分布,使该方案能够关注具有高概率内容的空间区域。RBDO 算法被应用于两个用有限元建模的测试问题:带顶端质量的悬臂梁和有效载荷适配器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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