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Enhancing particle swarm optimization algorithm using two new strategies for optimizing design of truss structures

机译:使用两种新策略优化桁架结构优化设计的粒子群算法

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摘要

This work develops an augmented particle swarm optimization (AugPSO) algorithm using two new strategies: boundary-shifting and particle-position-resetting. The purpose of the algorithm is to optimize the design of truss structures. Inspired by a heuristic, the boundary-shifting approach forces particles to move to the boundary between feasible and infeasible regions in order to increase the convergence rate in searching. The purpose of the particle-position-resetting approach, motivated by mutation scheme in genetic algorithms (GAs), is to increase the diversity of particles and to prevent the solution of particles from falling into local minima. The performance of the AugPSO algorithm was tested on four benchmark truss design problems involving 10, 25, 72 and 120 bars. The convergence rates and final solutions achieved were compared among the simple PSO, the PSO with passive congregation (PSOPC) and the AugPSO algorithms. The numerical results indicate that the new AugPSO algorithm outperforms the simple PSO and PSOPC algorithms. The AugPSO achieved a new and superior optimal solution to the 120-bar truss design problem. Numerical analyses showed that the AugPSO algorithm is more robust than the PSO and PSOPC algorithms.
机译:这项工作使用两种新策略开发了增强粒子群优化(AugPSO)算法:边界移动和粒子位置重置。该算法的目的是优化桁架结构的设计。受启发式方法启发,边界移动方法迫使粒子移动到可行和不可行区域之间的边界,以提高搜索的收敛速度。由遗传算法(GA)中的突变方案推动的粒子位置重置方法的目的是增加粒子的多样性,并防止粒子的解落入局部极小值。在涉及10、25、72和120巴的四个基准桁架设计问题上测试了AugPSO算法的性能。比较了简单PSO,具有被动会聚的PSO(PSOPC)和AugPSO算法之间的收敛速度和最终解决方案。数值结果表明,新的AugPSO算法优于简单的PSO和PSOPC算法。 AugPSO为120巴桁架设计问题提供了一种新的,卓越的最佳解决方案。数值分析表明,AugPSO算法比PSO和PSOPC算法更健壮。

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