引用本文:陈得宝, 赵春霞.基于内分泌调节机制的粒子群算法[J].控制理论与应用,2007,24(6):1005~1009.[点击复制]
CHEN De-bao, ZHAO Chun-xia .Particle swarm optimization based on endocrine regulation mechanism[J].Control Theory and Technology,2007,24(6):1005~1009.[点击复制]
基于内分泌调节机制的粒子群算法
Particle swarm optimization based on endocrine regulation mechanism
摘要点击 1531  全文点击 1176  投稿时间:2005-09-25  修订日期:2006-12-20
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DOI编号  10.7641/j.issn.1000-8152.2007.6.028
  2007,24(6):1005-1009
中文关键词  内分泌系统  神经系统  粒子群算法  函数优化
英文关键词  endocrine system  neural system  particle swarm algorithm(PSO)  function optimization
基金项目  部委跨行业重点预研项目; 安徽省教育厅自然科学基金资助项目(2006KJ090B)
作者单位
陈得宝, 赵春霞 南京理工大学计算机科学与技术学院, 江苏南京210094
淮北煤炭师范学院物理系, 安徽淮北235000 
中文摘要
      借鉴内分泌系统的高级调节机制, 提出一种基于内分泌调节机理的粒子群算法. 首先设计一种结合当前粒子群的最好适应度、平均适应度和局部适应度的情感评价方法, 对下一代粒子群进行情感评价, 然后用神经系统和内分泌系统共同作用, 对粒子群的行为进行更新, 在更新过程中, 引入动量项减少局部收敛的发生. 文中同时分析了算法的收敛性, 并对几个典型函数优化问题和机器人路径规划进行实验, 验证方法的有效性.
英文摘要
      Motivated by high-level regulation principle of endocrine system, a particle swarm optimization based on endocrine regulation mechanism is put forward. First, emotional evaluation method is designed combining with the best fitness, average fitness and local fitness of particles in current generation, and emotion in next generation is evaluated. Then, the behaviors of particles in next generation are updated by interaction of neural and endocrine systems, and momentum factor is used to reduce the probability of local convergence. The convergence of algorithm is analyzed, and the effectiveness is demonstrated by optimization experiments of typical functions and path planning.