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A multi-swarm particle swarm optimization algorithm based on dynamical topology and purposeful detecting

机译:基于动态拓扑和有目的检测的多群粒子群优化算法

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This paper proposes a multi-swarm particle swarm optimization (MSPSO) that consists of three novel strategies to balance the exploration and exploitation abilities. The new proposed MSPSO in this work is based on multiple swarms framework cooperating with the dynamic sub-swarm number strategy (DNS), sub-swarm regrouping strategy (SRS), and purposeful detecting strategy (PDS). Firstly, the DNS divides the entire population into many sub-swarms in the early stage and periodically reduces the number of sub-swarms (i.e., increase the size of each sub-swarm) along with the evolutionary process. This is helpful for balancing the exploration ability early and the exploitation ability late, respectively. Secondly, in each DNS period with special number of sub-swarms, the SRS is to regroup these sub-swarms based on the stagnancy information of the global best position. This is helpful for diffusing and sharing the search information among different sub-swarms to enhance the exploitation ability. Thirdly, the PDS is relying on some historical information of the search process to detect whether the population has been trapped into a potential local optimum, so as to help the population jump out of the current local optimum for better exploration ability. The comparisons among MSPSO and other 13 peer algorithms on the CEC2013 test suite and 4 real applications suggest that MSPSO is a very reliable and highly competitive optimization algorithm for solving different types of functions. Furthermore, the extensive experimental results illustrate the effectiveness and efficiency of the three proposed strategies used in MSPSO. (C) 2018 The Author(s). Published by Elsevier B.V. This is an open access article under the CC BY-NC-ND license.
机译:本文提出了一种多群粒子群优化(MSPSO),由三种新颖的策略组成,以平衡勘探和开发能力。本工作中的新提议的MSPSO基于与动态子群号码策略(DNS),子群重组策略(SRS)和有目的检测策略(PDS)协作的多个群体框架。首先,DNS在早期阶段将整个人口分成许多子群,并定期减少子群的数量(即,增加每个子群的大小)以及进化过程。这有助于分别为平衡勘探能力以及延迟剥削能力。其次,在每个DNS期间具有特殊数量的子群,SRS基于全球最佳位置的停滞信息重新组合这些子群。这有助于扩散和共享不同子群之间的搜索信息,以增强利用能力。第三,PDS是依赖于搜索过程的一些历史信息来检测人口是否被困在潜在的局部最优,以帮助人口跳出当前局部最佳,以便更好地探索能力。 MSPSO和其他13个对等算法的比较在CEC2013测试套件和4个真实应用程序上表明MSPSO是一种非常可靠且非常竞争的优化算法,用于解决不同类型的功能。此外,广泛的实验结果说明了MSPSO的三种拟议策略的有效性和效率。 (c)2018提交人。由elsevier b.v发布。这是CC By-NC-ND许可下的一个开放式访问文章。

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