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Improved Particle Swarm Optimization By Means of Manipulation of the Inertia Weighting Factor Based on Albert Einstein Theory of Photoelectric Effect

机译:通过基于Albert Einstein的光电效应理论的惯性加权因子的操纵改进了粒子群优化

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Particle Swarm Optimization (PSO) has been praised by many researchers in the field of Engineering and computer science since its introduction in 1995.This is due to its fast convergence and ability to reach optimal solutions during problem optimization. However, like any other Evolutionary algorithms it has its own drawbacks. PSO suffers premature convergence and getting stuck on local minima sometimes. This paper proposes an improved PSO based on the theory of photoelectric effect by Albert Einstein. The constrained and unconstrained benchmark functions have been used to validate the optimization performance of the proposed method. The statistical results showed that the proposed method is able to explore best solutions faster and effective during optimization for both constrained and unconstrained problems compared to the traditional method.
机译:粒子群优化(PSO)已被工程和计算机科学领域的许多研究人员称赞,自1995年以来。这是由于其在问题优化期间达到最佳解决方案的快速收敛性和能力。 然而,与任何其他进化算法一样,它具有自己的缺点。 PSO有时会遭受过早的收敛并陷入局部最小值。 本文提出了一种基于Albert Einstein的光电效应理论改进的PSO。 已使用受限制和无约束的基准函数来验证所提出的方法的优化性能。 统计结果表明,与传统方法相比,该方法能够在优化期间探讨最佳解决方案,并在优化期间优化而有效。

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