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A neighbor-based learning particle swarm optimizer with short-term and long-term memory for dynamic optimization problems

机译:基于邻的学习粒子群优化器,短期和长期内存,用于动态优化问题

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This paper presents a novel Particle Swarm Optimization algorithm to address Dynamic Optimization Problems. The algorithm incorporates a neighbor-based learning strategy into the velocity update of Particle Swarm Optimization, in order to enhance the exploration and exploitation capabilities of particles. Unlike the traditional swarm update scheme, a "worst replacement" strategy is used to update the swarm, whereby the position of the worst particle in the swarm is replaced by a better newly generated position. The short-term memory is employed to store solutions with intermediate fitnesses from the most recent environment, and the long-term memory is to store the historical best solutions found in all previous environments. After an environmental change is detected, some particles' positions in the swarm are replaced by the members of the short-term memory, and the best member in the long-term memory under the current environment is re-introduced to the active swarm along with its Gaussian neighborhood, then the remaining particles' positions are re-initialized. The performance of the proposed algorithm is compared with six state-of-the-art dynamic algorithms over the Moving Peaks Benchmark problems and Dynamic Rotation Peak Benchmark Generator. Experimental results indicate that out algorithm obtains superior performance compared with the competitors. (C) 2018 Elsevier Inc. All rights reserved.
机译:本文提出了一种新的粒子群优化算法,用于解决动态优化问题。该算法将基于邻居的学习策略包含在粒子群优化的速度更新中,以提高粒子的勘探和利用能力。与传统的群更新方案不同,使用“最糟糕的替代”策略来更新群体,从而群中最坏粒子的位置被更好的新产生的位置所取代。短期内存用于将解决方案与来自最近环境的中间健身存储,长期存储器是存储在以前环境中的历史最佳解决方案。在检测到环境变化之后,群中的一些粒子的位置被短期记忆的成员取代,并且在当前环境下的长期存储器中的最佳成员被重新引入到主动群中其高斯邻居,然后重新初始化剩余的粒子的位置。该算法的性能与移动峰值基准问题和动态旋转峰值基准发生器的六个最先进的动态算法进行了比较。实验结果表明,与竞争对手相比,Out算法获得了卓越的性能。 (c)2018年Elsevier Inc.保留所有权利。

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