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Salp swarm algorithm based on particle-best

机译:SALP基于粒子的群算法

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Aiming at the problem of salp swarm algorithm(SSA) that the global exploration and local exploitation ability is difficult to coordinate and it is easy to fall into local optimum, a new algorithm of salp swarm based on particle-best is proposed. According to the leadership function of the leader, the algorithm divides the iteration into two stages: global exploration and local exploitation. In the global exploration stage, the leader conducts wide-area search centering on the particle-best position. In the local exploitation stage, the leader performs a fine search centering on the global optimal position. The follower is between the particle-best position and the individual current position. The experimental results of 23 general benchmark functions show that the algorithm based on particle-best has a great improvement in convergence speed, accuracy and robustness compared with other algorithms.
机译:针对SALP群算法(SSA)的问题,即全球勘探和局部利用能力难以协调,并且提出了一种基于粒子最佳的新的SALP群算法。根据领导的领导函数,该算法将迭代分为两个阶段:全球勘探和本地剥削。在全球勘探阶段,领导者在粒子最佳位置进行广域搜索。在本地开发阶段,领导者在全局最佳位置执行精细搜索居中。从动件在粒子上的位置和各个电流位置之间。与其他算法相比,23普通基准函数的实验结果表明,基于粒子最大的算法具有巨大的改善,与其他算法相比的收敛速度,准确性和鲁棒性。

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