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A novel improved hybrid particle swarm optimisation based genetic algorithm for the solution to layout problems

机译:一种新型改进的杂交粒子群优化基于遗传算法的布局问题

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Layout problems belong to NP(non-deterministic polynomial)-Complete problems theoretically. They are paid more and more attention in recent years and arise in a variety of application fields such as the layout design of spacecraft modules, shipping, vehicle and robots, plant equipments, platforms of marine drilling well. The algorithms based on swarm intelligence are relatively effective to solve this kind of problems. But usually there still exist two main defects of them, i.e. premature convergence and slow convergence rate. To overcome them, a novel improved hybrid PSO-based genetic algorithm (HPSO-GA) is proposed on the basis of parallel genetic algorithms (PGA). In this algorithm, chaos initialization and multi-subpopulation evolution based on improved adaptive crossover and mutation are adopted. And more importantly, in accordance with characteristics of different classes of subpopulations, different modes of PSO update operator are introduced. It aims at making full use of the fast convergence property of particle swarm optimization (PSO). The proposed adjustable arithmetic-progression rank-based selection can prevent the algorithm from premature in the early stage and benefit accelerating convergence in the late stage as well. An example of layout problems shows that HPSO-GA is feasible and effective.
机译:理论上,布局问题属于NP(非确定性多项式) - 理论上的问题。近年来,它们越来越多地关注,并在各种应用领域出现,例如航天器模块的布局设计,运输,车辆和机器人,植物设备,船舶钻井平台。基于群体智能的算法相对有效地解决了这种问题。但通常仍然存在两个主要缺陷,即,过早的收敛和慢收敛速度。为了克服它们,基于平行遗传算法(PGA)提出了一种新颖的改进的杂合PSO基遗传算法(HPSO-GA)。在该算法中,采用基于改进的自适应交叉和突变的混沌初始化和多亚群化演化。更重要的是,根据不同类别的亚步骤的特征,引入了PSO更新操作员的不同模式。它旨在充分利用粒子群优化(PSO)的快速收敛性。所提出的可调节算术进展秩的选择可以防止算法在早期阶段的早产,并且也有利于晚期的加速收敛。布局问题的一个例子表明,HPSO-GA是可行和有效的。

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