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A two phase approach based on skeleton convergence and geometric variables for topology optimization using genetic algorithm

机译:基于骨架收敛和几何变量的基于遗传算法的拓扑优化两阶段方法

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摘要

This paper introduces a set of skeleton operators for characterizing topologies evolving in a bit-array represented structural topology optimization problem. It is shown that the design generally converges to a stable skeleton fairly early in the optimization process. It is observed that further optimization ismore about finding optimal gross shape for the various branches of the converged skeleton and the bit-array representation is not appropriate. A two-phase approach to topology optimization is proposed in which the first phase, where bit-array is used to represent the topology, ends with the detection of stabilization of skeleton, and the second phase proceeds further with the geometry based representation that directly addresses gross variation in shape of the branches of the converged skeleton. Genetic Algorithm has been used for optimization in both the phases. The efficiency and effectiveness of the use of skeleton operators and geometric variables for identification of convergence in the first phase and optimization in the second phase respectively is demonstrated.
机译:本文介绍了一组骨架运算符,用于描述以位数组表示的结构拓扑优化问题中演化的拓扑。结果表明,设计通常在优化过程的早期就收敛到稳定的骨架。可以看出,进一步的优化更多地是针对收敛骨架的各个分支找到最佳的总体形状,并且位阵列表示不合适。提出了一种两阶段的拓扑优化方法,其中第一阶段(其中使用位数组表示拓扑)以检测骨骼的稳定性结束,第二阶段以基于几何的表示进一步进行下去聚合骨架分支形状的总体变化。遗传算法已用于两个阶段的优化。证明了使用骨架算子和几何变量分别识别第一阶段的收敛性和第二阶段的优化的效率和有效性。

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