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A Hybrid Method for Truss Mass Minimization considering Uncertainties

机译:考虑不确定性的桁架质量最小化的混合方法

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In real-world structural problems, a number of factorsmay cause geometric imperfections, load variability, or even uncertainties in material properties. Therefore, a deterministic optimization procedure may fail to account such uncertainties present in the actual system leading to optimum designs that are not reliable; the designed system may show excessive safety or sometimes not sufficient reliability to carry applied load due to uncertainties. In this paper, we introduce a hybrid reliability-based design optimization (RBDO) algorithm based on the genetic operations of Genetic Algorithm, the position and velocity update of the Particle Swarm Algorithm (for global exploration), and the sequential quadratic programming, for local search. The First-Order Reliability Method is used to account uncertainty in design and parameter variables and to evaluate the associated reliability. The hybrid method is analyzed based on RBDO benchmark examples that range from simple to complex truss parametric sizing optimizations with stress, displacements, and frequency deterministic and probabilistic constraints. The proposed final problem, which cannot be handled by single loop RBDO algorithms, highlights the importance of the proposed approach in cases where the discrete design variables are also random variables.
机译:在实际的结构问题中,许多因素可能会导致几何缺陷,载荷变化或什至材料性能不确定。因此,确定性的优化程序可能无法解决实际系统中存在的不确定性,从而导致不可靠的优化设计。由于不确定性,设计的系统可能显示出过高的安全性,有时可靠性不足以承受施加的负载。在本文中,我们介绍了一种基于遗传算法的遗传运算,基于粒子群算法的位置和速度更新(用于全局探索)以及用于局部计算的顺序二次规划的基于混合可靠性的设计优化(RBDO)算法搜索。一阶可靠性方法用于解决设计和参数变量中的不确定性,并评估相关的可靠性。基于RBDO基准示例对混合方法进行了分析,这些示例从简单到复杂的桁架参数化尺寸优化都有应力,位移,频率确定性和概率约束。所提出的最终问题无法通过单循环RBDO算法处理,突出了在离散设计变量也是随机变量的情况下所提出方法的重要性。

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  • 来源
    《Mathematical Problems in Engineering 》 |2017年第6期| 2324316.1-2324316.14| 共14页
  • 作者单位

    Univ Fed Rio Grande do Sul, Ave Sarmento Leite 425,Sala 202,2 Andar, BR-90050170 Porto Alegre, RS, Brazil;

    Univ Caxias do Sul, R Francisco Getulio Vargas 1130, BR-95070560 Caxias Do Sul, RS, Brazil;

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