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Psychological model of particle swarm optimization based multiple emotions

机译:基于多种情绪的粒子群优化心理模型

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摘要

This paper proposes a novel approach to swarm particle optimization based on emotional behavior to solve real optimization problems. In the trend of PSO manipulating self-adaptive control to regulate potential parameters, the proposed algorithm involves both a semi-adaptive inertia weight and an emotional factor at the level of the velocity rule. The semi-inertia weight highlights a specific comportment. Thus, due to the few changes occurred in its adaptive "life", it continues to evolve with a significantly smaller constant for the benefit of a finer exploitation. The emotion factor presents an important feature of convergence because it splits up the search space into potential regions that are finely explored by sub-swarm populations with the same emotions. The principle of particles with multiple emotions intended for the categorization of particles into specific emotional classes. The idea behind this principle is to divide to conquer, and due to presence of multiple emotional classes the multidimensional search space is widely explored at the search of the best position. Emotional PSO is evaluated on the test suit of 25 functions designed for the special session on real optimization of CEC 2005, and its performances are compared to the best algorithm the restart CMA-ES.
机译:本文提出了一种基于情绪行为的群体优化算法,以解决实际的优化问题。在PSO操纵自适应控制来调节潜在参数的趋势中,所提出的算法在速度规则的水平上涉及半自适应惯性权重和情感因素。半惯性重量突出了特定的方面。因此,由于其适应性“寿命”中发生的变化很小,它以较小的常数继续发展,以利于更好的利用。情感因素具有收敛性的重要特征,因为它会将搜索空间划分为潜在区域,这些区域可以由具有相同情感的亚群人群进行精细地探索。具有多种情绪的粒子的原理旨在将粒子分类为特定的情感类别。该原则背后的思想是分而治之,并且由于存在多个情感类别,因此在寻找最佳位置时广泛地探索了多维搜索空间。在针对CEC 2005实际优化的特别会议上设计的25个功能的测试套件上评估了情感PSO,并将其性能与重启CMA-ES的最佳算法进行了比较。

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