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A random search for discrete robust design optimization of linear-elastic steel frames under interval parametric uncertainty

机译:间隔参数不确定性下线性弹性钢框的离散鲁棒设计优化的随机搜索

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This study presents a new random search method for solving discrete robust design optimization (RDO) problem of planar linear-elastic steel frames. The optimization problem is formulated with an explicit objective function of discrete design variables, unknown-but-bounded uncertainty in material properties and external loads, and black-box constraint functions of the structural responses. Radial basis function (RBF) models serve as approximations of structural responses. The anti-optimization problem is approximated by an RBF-based optimization problem that is solved using an adaptive strategy coupled with a difference-of-convex functions algorithm. The adaptive strategy is embedded in an iterative process for solving the upper-level optimization problem. This process starts with a set of candidate solutions and iterates through selecting the best candidate among the available candidates and generating new promising candidates by performing a small random perturbation around the best solution found so far to refine the RBF approximations. It terminates when the number of iterations reaches an upper bound, and outputs the optimal solution that is the best solution obtained through the optimization process. Two test problems and two design examples demonstrate that the exact optimal or a good approximate solution can be found by the proposed method with a few trials of the algorithm. (C) 2021 Elsevier Ltd. All rights reserved.
机译:本研究提出了一种新的随机搜索方法,用于解决平面线性弹性钢框架的离散鲁棒设计优化(RDO)问题。优化问题是具有离散设计变量的显式客观函数,材料属性和外部负载中未知的,界限的不确定性,以及结构响应的黑盒约束函数。径向基函数(RBF)模型用作结构响应的近似。通过基于RBF的优化问题来近似于使用与凸起函数算法差异的自适应策略来求解的反优化问题。自适应策略嵌入在迭代过程中,用于解决上层优化问题。此过程从一组候选解决方案开始,并通过选择可用候选者中的最佳候选者并通过在迄今为止发现的最佳解决方案周围进行小型随机扰动来生成新的有希望的候选人来优化RBF近似。当迭代的数量达到上限时,它终止,并输出是通过优化过程获得的最佳解决方案的最佳解决方案。两个测试问题和两个设计示例表明,通过算法的一些试验,所提出的方法可以找到精确的最佳或良好的近似解决方案。 (c)2021 elestvier有限公司保留所有权利。

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