Adaptive guided differential evolution algorithm with novel mutation for numerical optimization

被引:0
作者
Ali Wagdy Mohamed
Ali Khater Mohamed
机构
[1] Cairo University,Operations Research Department, Institute of Statistical Studies and Research
[2] Majmaah University,College of Science and Humanities
来源
International Journal of Machine Learning and Cybernetics | 2019年 / 10卷
关键词
Evolutionary computation; Global optimization; Differential evolution; Novel mutation; Adaptive crossover;
D O I
暂无
中图分类号
学科分类号
摘要
This paper presents adaptive guided differential evolution algorithm (AGDE) for solving global numerical optimization problems over continuous space. In order to utilize the information of good and bad vectors in the DE population, the proposed algorithm introduces a new mutation rule. It uses two random chosen vectors of the top and the bottom 100p% individuals in the current population of size NP while the third vector is selected randomly from the middle [NP-2(100p %)] individuals. This new mutation scheme helps maintain effectively the balance between the global exploration and local exploitation abilities for searching process of the DE. Besides, a novel and effective adaptation scheme is used to update the values of the crossover rate to appropriate values without either extra parameters or prior knowledge of the characteristics of the optimization problem. In order to verify and analyze the performance of AGDE, Numerical experiments on a set of 28 test problems from the CEC2013 benchmark for 10, 30, and 50 dimensions, including a comparison with classical DE schemes and some recent evolutionary algorithms are executed. Experimental results indicate that in terms of robustness, stability and quality of the solution obtained, AGDE is significantly better than, or at least comparable to state-of-the-art approaches.
引用
收藏
页码:253 / 277
页数:24
相关论文
共 95 条
  • [1] Storn R(1997)Differential evolution—a simple and efficient heuristic for global optimization over continuous spaces J Glob Optim 11 341-359
  • [2] Price K(2014)Modified differential evolution with self-adaptive parameters method J Comb Optim 31 546-576
  • [3] Li X(2014)Differential evolution based on covariance matrix learning and bimodal distribution parameter setting Appl Soft Comput 18 232-247
  • [4] Yin M(2011)A fuzzy logic control using a differential evolution algorithm aimed at modeling the financial market dynamics Inf Sci 181 79-91
  • [5] Wang Y(2014)An improved differential evolution and its application to determining feature weights in similarity-based clustering Neurocomputing 146 95-103
  • [6] Li H-X(2015)Anonlinear goal programming model for university admission capacity planning with modified differential evolution algorithm Math Probl Eng 2015 13-7921
  • [7] Huang T(2016)A generalized national planning approach for admission capacity in higher education: a nonlinear integer goal programming model with a novel differential evolution algorithm Comput Intell Neurosci 2016 14-1192
  • [8] Li L(2016)Alarge-scale nonlinear mixedbinary goal programming model to assess candidate locations for solar energy stations: an improved binary differential evolution algorithm with a case study J Comput Theor Nanosci 13 7909-125
  • [9] Hachicha N(2009)Using differential evolution for subclass of graph theory problems IEEE Trans Evol Comput 13 1190-553
  • [10] Jarboui B(2008)Accelerating differential evolution using an adaptive local search IEEE Trans Evol Comput 12 107-31