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Structural optimization for post-buckling behavior using particle swarms

机译:使用粒子群的屈曲后行为的结构优化

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The aim of this paper is to develop a new algorithm based on the particle swarm optimization (PSO) concept and then to apply it in the solution of some new structural optimization problems for post-buckling behavior. Proposed modifications of the algorithm regard both the PSO kernel and the constraints handling. The “controlled reflection” technique is proposed for dealing with inequality constraints. The values of the objective are calculated for some control points chosen along a move vector. The position for which the objective is the smallest one and the constraints are not violated is selected. For the case of equality constraints, the “particle trap” strategy is proposed. First, equalities are transformed into inequalities forming constraint “zone of influence.” If a particle from a swarm drops into this “zone” it remains trapped there and can move further only inside this subspace. Simultaneously, a penalty term is added to the objective function to force particles to be “captured” and constraints to become active at the optimum. The new PSO algorithm has been successfully applied to problems of structural optimization against instability. The standard maximization of the critical load is performed both for single and double buckling loads. The modified optimization for post-buckling behavior is also performed. A new problem of reconstruction of a predicted post-buckling path is formulated. The sum of squared distances between the control points of a given equilibrium path and the reconstructed one is minimized. Another new problem regards the modification of the slope of nonlinear equilibrium curve. This is obtained by adding a set of post-buckling constraints imposed on derivative values calculated for selected control points at the equilibrium curve.
机译:本文的目的是开发一种基于粒子群优化(PSO)概念的新算法,然后将其应用到一些新的结构优化问题的后屈曲行为解决方案中。该算法的拟议修改涉及PSO内核和约束处理。提出了“可控反射”技术来处理不平等约束。针对沿移动矢量选择的某些控制点计算物镜的值。选择目标最小的位置并且不违反约束的位置。对于相等约束的情况,提出了“粒子陷阱”策略。首先,平等转化为不平等,形成约束“影响区”。如果来自群的粒子掉入该“区域”,则该粒子仍将被困在那里,并且只能在该子空间内进一步移动。同时,将惩罚项添加到目标函数以强制“捕获”粒子,并使约束在最佳状态下变为活动状态。新的PSO算法已成功地应用于针对不稳定性的结构优化问题。对于单屈曲载荷和双屈曲载荷,都执行临界载荷的标准最大化。还对屈曲后行为进行了修改后的优化。提出了重构预测的屈曲后路径的新问题。给定平衡路径的控制点与重建路径的控制点之间的平方距离之和最小。另一个新问题涉及非线性平衡曲线斜率的修改。这是通过在平衡曲线上添加一组后屈曲约束而获得的,这些约束施加于为选定控制点计算的导数值上。

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