粒子群优化:迭代策略重访

A. Engelbrecht
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引用次数: 21

摘要

粒子群优化(PSO)是一种迭代算法,每次迭代都会更新粒子位置和最佳位置。本文将粒子位置和最佳位置的更新顺序称为迭代策略。PSO有两种主要的迭代策略,即同步更新和异步更新。许多研究已经讨论了这些迭代策略的优缺点。这些研究大多表明,在获得的解的准确性和群体收敛的速度方面,异步更新优于同步更新。本研究从广泛的实证分析中提供了证据,证明当前异步更新导致更快的收敛和更准确的结果的观点是不正确的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Particle Swarm Optimization: Iteration Strategies Revisited
Particle swarm optimization (PSO) is an iterative algorithm, where particle positions and best positions are updated per iteration. The order in which particle positions and best positions are updated is referred to in this paper as an iteration strategy. Two main iteration strategies exist for PSO, namely synchronous updates and asynchronous updates. A number of studies have discussed the advantages and disadvantages of these iteration strategies. Most of these studies indicated that asynchronous updates are better than synchronous updates with respect to accuracy of the solutions obtained and the speed at which swarms converge. This study provides evidence from an extensive empirical analysis that current opinions that asynchronous updates result in faster convergence and more accurate results are not true.
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