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Fitness Estimation Based Particle Swarm Optimization Algorithm for Layout Design of Truss Structures

机译:基于适应度估计的粒子群优化算法的桁架结构布局设计

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Due to the fact that vastly different variables and constraints are simultaneously considered, truss layout optimization is a typical difficult constrained mixed-integer nonlinear program. Moreover, the computational cost of truss analysis is often quite expensive. In this paper, a novel fitness estimation based particle swarm optimization algorithm with an adaptive penalty function approach (FEPSO-AP) is proposed to handle this problem. FEPSO-AP adopts a special fitness estimate strategy to evaluate the similar particles in the current population, with the purpose to reduce the computational cost. Further more, a laconic adaptive penalty function is employed by FEPSO-AP, which can handle multiple constraints effectively by making good use of historical iteration information. Four benchmark examples with fixed topologies and up to 44 design dimensions were studied to verify the generality and efficiency of the proposed algorithm. Numerical results of the present work compared with results of other state-of-the-art hybrid algorithms shown in the literature demonstrate that the convergence rate and the solution quality of FEPSO-AP are essentially competitive.
机译:由于同时考虑了非常不同的变量和约束,因此桁架布局优化是典型的难于约束的混合整数非线性程序。此外,桁架分析的计算成本通常非常昂贵。本文提出了一种新的基于适应度估计的粒子群优化算法和自适应罚函数法(FEPSO-AP)来解决该问题。 FEPSO-AP采用特殊的适合度估计策略来评估当前总体中的相似粒子,目的是降低计算成本。此外,FEPSO-AP采用了简单的自适应惩罚函数,它可以通过充分利用历史迭代信息来有效处理多个约束。研究了四个具有固定拓扑结构和多达44个设计尺寸的基准示例,以验证所提出算法的一般性和效率。与文献中显示的其他最新混合算法的结果相比,本工作的数值结果表明FEPSO-AP的收敛速度和解质量本质上具有竞争力。

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