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An Adaptive Multipopulation Framework for Locating and Tracking Multiple Optima

机译:用于定位和跟踪多个最优值的自适应多人口框架

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摘要

Multipopulation methods are effective in solving dynamic optimization problems. However, to efficiently track multiple optima, algorithm designers need to address a key issue: how to adapt the number of populations. In this paper, an adaptive multipopulation framework is proposed to address this issue. A database is designed to collect heuristic information of algorithm behavior changes. The number of populations is adjusted according to statistical information related to the current evolving status in the database and a heuristic value. Several other techniques are also introduced, including a heuristic clustering method, a population exclusion scheme, a population hibernation scheme, two movement schemes, and a peak hiding method. The particle swarm optimization and differential evolution algorithms are implemented into the framework, respectively. A set of multipopulation-based algorithms are chosen to compare with the proposed algorithms on the moving peaks benchmark using four different performance measures. The effect of the components of the framework is also investigated based on a set of multimodal problems in static environments. Experimental results show that the proposed algorithms outperform the other algorithms in most scenarios.
机译:多人口方法可以有效解决动态优化问题。但是,为了有效地跟踪多个最优值,算法设计人员需要解决一个关键问题:如何调整总体数量。在本文中,提出了一种自适应多种群框架来解决这个问题。设计一个数据库来收集算法行为更改的启发式信息。根据与数据库中当前正在发展的状态有关的统计信息和启发式值来调整人口数量。还介绍了其他几种技术,包括启发式聚类方法,种群排除方案,种群休眠方案,两个移动方案和峰值隐藏方法。该框架分别实现了粒子群算法和差分进化算法。选择了一组基于人口的算法,以使用四种不同的性能指标与移动峰基准上的拟议算法进行比较。还基于静态环境中的一组多模式问题,研究了框架组件的作用。实验结果表明,该算法在大多数情况下均优于其他算法。

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