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具有转换函数的均匀差分进化算法及性能分析
引用本文:赵云涛,王京,宋勇,凌智.具有转换函数的均匀差分进化算法及性能分析[J].控制理论与应用,2009,26(9):1014-1018.
作者姓名:赵云涛  王京  宋勇  凌智
作者单位:北京科技大学,高效轧制国家工程研究中心,北京,100083 
摘    要:对于求解复杂优化问题,差分进化算法存在后期收敛缓慢、易于陷入局部最优等缺点.为此,从充分利用求解信息和同标信息角度提出了具有转换函数的均匀差分进化算法.首先对3个算子进行分布均匀性分析及设计,使其生成的个体能完全表征解空间特征,并增强种群多样性.其次,为简化优化环境,利用一种适应度转换函数使得当前局部极小点及相关区域拉伸一定高度而优于当前极小点的函数部分保持数值不变.最后通过性能指标的定量评价,结果验证了改进算法在有效性、鲁棒性和效率上的优异性能.

关 键 词:差分进化算法  均匀设计  适应度转换函数  函数优化
收稿时间:7/3/2008 12:00:00 AM
修稿时间:2008/12/19 0:00:00

Uniform differential evolution algorithm with transform function and performance analysis
ZHAO Yun-tao,WANG Jing,SONG Yong and LING Zhi.Uniform differential evolution algorithm with transform function and performance analysis[J].Control Theory & Applications,2009,26(9):1014-1018.
Authors:ZHAO Yun-tao  WANG Jing  SONG Yong and LING Zhi
Affiliation:University of Science and Technology Beijing,National Engineer Research Center of Advanced Rolling, University of Science and Technology Beijing,National Engineer Research Center of Advanced Rolling, University of Science and Technology Beijing,National Engineer Research Center of Advanced Rolling, University of Science and Technology Beijing
Abstract:When differential evolution algorithm is applied in complicated optimization problems, it has the shortages of prematurity and stagnation. By efficiently utilizing the information of objective function and solving problems, a uniform differential evolution algorithm with transform function is proposed in this paper. Firstly, three operators are designed to generate individuals which obey uniform distribution. Individuals can fully represent the solution space. So the diversity of populations and capability of global search will be enhanced. Secondly, a transform function used to simplify the objective function is constructed. It stretches the current local minimum and related regions up to a certain height, while keeps the optimized function unchanged under the local minimum. Thus, the number of local minima will be largely decreased with the progress of iterations. Finally, the improved algorithm is quantitatively evaluated by performance indices. The simulation results show that it has perfect property in efficacy and converges faster, and is more stable.
Keywords:differential evolution algorithm  uniform design  transform function  function optimization
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