An Adaptive Velocity Particle Swarm Optimization for high-dimensional function optimization

A. A. Martins, A. Adewumi
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引用次数: 28

Abstract

Researchers have achieved varying levels of successes in proposing different methods to modify the particle's velocity updating formula for better performance of Particle Swarm Optimization (PSO). Variants of PSO that solved high-dimensional optimization problems up to 1,000 dimensions without losing superiority to its competitor(s) are rare. Meanwhile, high-dimensional real-world optimization problems are becoming realities hence PSO algorithm therefore needs some reworking to enhance it for better performance in handling such problems. This paper proposes a new PSO variant called Adaptive Velocity PSO (AV-PSO), which adaptively adjusts the velocity of particles based on Euclidean distance between the position of each particle and the position of the global best particle. To avoid getting trapped in local optimal, chaotic characteristics was introduced into the particle position updating formula. In all experiments, it is shown that AV-PSO is very efficient for solving low and high-dimensional global optimization problems. Empirical results show that AV-PSO outperformed AIWPSO, PSOrank, CRIW-PSO, def-PSO, e1-PSO and APSO. It also performed better than LSRS in many of the tested high-dimensional problems. AV-PSO was also used to optimize some high-dimensional problems with 4,000 dimensions with very good results.
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高维函数优化的自适应速度粒子群算法
为了提高粒子群优化算法的性能,研究人员提出了不同的方法来修改粒子的速度更新公式,并取得了不同程度的成功。在解决高达1000维的高维优化问题的同时又不失去其竞争对手的优势的粒子群算法的变体很少。同时,现实世界中的高维优化问题正在成为现实,因此粒子群算法需要进行一些改进以提高其处理此类问题的性能。本文提出了一种新的粒子群算法,称为自适应速度粒子群算法(AV-PSO),它基于粒子位置与全局最优粒子位置之间的欧氏距离自适应调整粒子的速度。为避免陷入局部最优状态,在粒子位置更新公式中引入混沌特性。实验结果表明,AV-PSO算法对于求解高维和低维全局优化问题都是非常有效的。实证结果表明,AV-PSO优于AIWPSO、PSOrank、CRIW-PSO、def-PSO、e1-PSO和APSO。在许多测试的高维问题上,它也比LSRS表现得更好。AV-PSO也被用于一些4000维的高维问题的优化,得到了很好的结果。
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