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A novel worst case approach for robust optimization of large scale structures

机译:大规模结构强大优化的新型最坏情况方法

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摘要

In robust optimization, an optimum solution of a system is obtained when some uncertainties exist in the system. The uncertainty can be defined by probabilistic characteristics or deterministic intervals (uncertainty ranges or tolerances) that are the main concern in this study. An insensitive objective function is obtained with regard to the uncertainties or the worst case is considered for the objective function within the intervals in robust optimization. A supreme value within the uncertainty interval is minimized. The worst case approach has been extensively utilized in the linear programming (LP) community. However, the method solved only small scale problems of structural optimization where nonlinear programming (NLP) is employed. In this research, a novel worst case approach is proposed to solve large scale problems of structural optimization. An uncertainty interval is defined by a tolerance range of a design variable or problem parameter. A supreme value is obtained by optimization of the objective function subject to the intervals, and this process yields an inner loop. The supremum is minimized in the outer loop. Linearization of the inner loop is proposed to save the computational time for optimization. This technique can be easily extended for constraints with uncertainty intervals because the worst case of a constraint should be satisfied. The optimum sensitivity is utilized for the sensitivity of a supremum in the outer loop. Three examples including a mathematical example and two structural applications are presented to validate the proposed idea.
机译:在鲁棒优化中,当系统中存在一些不确定性时,可以得到系统的最优解。不确定性可以通过概率特征或确定性区间(不确定性范围或公差)来定义,这是本研究的主要关注点。在鲁棒优化中,对不确定性或区间内的目标函数考虑最坏情况,得到一个不敏感的目标函数。不确定区间内的最大值被最小化。最坏情况方法在线性规划(LP)领域得到了广泛应用。然而,该方法只解决了采用非线性规划(NLP)的小规模结构优化问题。本研究提出了一种新的最坏情况方法来解决大规模结构优化问题。不确定性区间由设计变量或问题参数的公差范围定义。根据区间对目标函数进行优化,得到一个最大值,这个过程产生一个内环。上确界在外环中最小化。为了节省优化计算时间,提出了内环线性化的方法。这种技术可以很容易地扩展到具有不确定性区间的约束,因为应该满足约束的最坏情况。最佳灵敏度用于外环上确界的灵敏度。文中给出了三个算例,包括一个数学算例和两个结构应用,以验证所提出的思想。

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