Han Song, Chen Shanshan, Yan Fengting, Pan Jengshyang, Zhu Yunxiang
School of Electronic and Electric Engineering, Shanghai University of Engineering Science, Shanghai 201620, China.
College of Computer Science and Engineering, Shandong University of Science and Technology, Qingdao 266590, China.
Entropy (Basel). 2023 May 25;25(6):848. doi: 10.3390/e25060848.
The phasmatodea population evolution algorithm (PPE) is a recently proposed meta-heuristic algorithm based on the evolutionary characteristics of the stick insect population. The algorithm simulates the features of convergent evolution, population competition, and population growth in the evolution process of the stick insect population in nature and realizes the above process through the population competition and growth model. Since the algorithm has a slow convergence speed and falls easily into local optimality, in this paper, it is mixed with the equilibrium optimization algorithm to make it easier to avoid the local optimum. Based on the hybrid algorithm, the population is grouped and processed in parallel to accelerate the algorithm's convergence speed and achieve better convergence accuracy. On this basis, we propose the hybrid parallel balanced phasmatodea population evolution algorithm (HP_PPE), and this algorithm is compared and tested on the CEC2017, a novel benchmark function suite. The results show that the performance of HP_PPE is better than that of similar algorithms. Finally, this paper applies HP_PPE to solve the AGV workshop material scheduling problem. Experimental results show that HP_PPE can achieve better scheduling results than other algorithms.
竹节虫种群进化算法(PPE)是一种最近提出的基于竹节虫种群进化特性的元启发式算法。该算法模拟了自然界中竹节虫种群进化过程中的趋同进化、种群竞争和种群增长特征,并通过种群竞争和增长模型实现上述过程。由于该算法收敛速度慢且容易陷入局部最优,本文将其与平衡优化算法混合,使其更容易避免局部最优。基于混合算法,对种群进行分组并行处理,以加快算法的收敛速度并实现更好的收敛精度。在此基础上,我们提出了混合并行平衡竹节虫种群进化算法(HP_PPE),并在CEC2017这一新型基准函数套件上对该算法进行了比较和测试。结果表明,HP_PPE的性能优于同类算法。最后,本文将HP_PPE应用于解决AGV车间物料调度问题。实验结果表明,HP_PPE比其他算法能取得更好的调度结果。