采用目标导向磷虾群算法优化离散桁架的尺寸和形状

Lixiang Cheng, Yan-Gang Zhao, Pei-Pei Li, Lewei Yan
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摘要

磷虾群(KH)算法无需梯度信息,只需调整少量参数,因此被广泛用于优化桁架结构。然而,当桁架结构变得离散和复杂时,KH 往往会陷入局部最优。因此,本研究提出了一种新颖的目标导向 KH(TOKH)算法来优化离散桁架结构的设计。首先,在 "最佳鸢尾 "和 "次优鸢尾 "之间建立一个交叉算子,以生成用于全局探索的稳健 "交叉鸢尾"。此外,还引入了改进的局部突变和交叉(ILMC)算子,以微调 "食物中心 "和候选解决方案,进行局部开发。考虑到 15 个基准函数,对所提出的方法和其他优化方法进行了实验比较。然后,基于多重载荷条件下的四个离散桁架结构优化问题评估了 TOKH 算法的性能。获得的优化结果表明,与文献中的其他算法不同,所提出的方法在精度方面提出了有竞争力的解决方案,并避免了陷入局部最小值。
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Sizing and Shape Optimization of Discrete Truss Employing a Target-oriented Krill Herd Algorithm
The krill herd (KH) algorithm is widely used for optimizing truss structures as no gradient information is necessary, and only a few parameters require adjustment. However, when the truss structure becomes discrete and complex, KH tends to fall into a local optimum. Therefore, a novel target-oriented KH (TOKH) algorithm is proposed in this study to optimize the design of discrete truss structures. Initially, a crossover operator is established between the "best krill" and "suboptimal krill" to generate a robust "cross krill" for global exploration. Additionally, an improved local mutation and crossover (ILMC) operator is introduced to fine-tune the "center of food" and candidate solutions for local exploitation. The proposed method and other optimization approaches are experimentally compared considering 15 benchmark functions. Then, the performance of the TOKH algorithm is evaluated based on four discrete truss structure optimization problems under multiple loading conditions. The obtained optimization results indicate that the proposed method presents competitive solutions in terms of accuracy, unlike other algorithms in the literature, and avoids falling into a local minimum.
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