A Novel Memetic Framework for Enhancing Differential Evolution Algorithms via Combination With Alopex Local Search

被引:0
作者
Miguel Leon
Ning Xiong
Daniel Molina
Francisco Herrera
机构
[1] Mälardalen University,IDT School of Innovation, Design and Engineering
[2] University of Granada,DaSCI Andalusian Institute of Data Science and Computational Intelligence
来源
International Journal of Computational Intelligence Systems | 2019年 / 12卷
关键词
Differential evolution; L-SHADE; Memetic algorithm; Alopex; Local search; Optimization;
D O I
暂无
中图分类号
学科分类号
摘要
Differential evolution (DE) represents a class of population-based optimization techniques that uses differences of vectors to search for optimal solutions in the search space. However, promising solutions/regions are not adequately exploited by a traditional DE algorithm. Memetic computing has been popular in recent years to enhance the exploitation of global algorithms via incorporation of local search. This paper proposes a new memetic framework to enhance DE algorithms using Alopex Local Search (MFDEALS). The novelty of the proposed MFDEALS framework lies in that the behavior of exploitation (by Alopex local search) can be controlled based on the DE global exploration status (population diversity and search stage). Additionally, an adaptive parameter inside the Alopex local search enables smooth transition of its behavior from exploratory to exploitative during the search process. A study of the important components of MFDEALS shows that there is a synergy between them. MFDEALS has been integrated with both the canonical DE method and the adaptive DE algorithm L-SHADE, leading to the MDEALS and ML-SHADEALS algorithms, respectively.Both algorithms were tested on the benchmark functions from the IEEE CEC’2014 Conference. The experiment results show that Memetic Differential Evolution with Alopex Local Search (MDEALS) not only improves the original DE algorithm but also outperforms other memetic DE algorithms by obtaining better quality solutions. Further, the comparison between ML-SHADEALS and L-SHADE demonstrates that applying the MFDEALS framework with Alopex local search can significantly enhance the performance of L-SHADE.
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页码:795 / 808
页数:13
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共 79 条
  • [1] Neri F(2012)Memetic algorithms and memetic computing optimization: a literature review Swarm Evol. Comput. 2 1-14
  • [2] Cotta C(2014)Memetic search in differential evolution algorithm Int. J. Comput. Appl. 90 40-47
  • [3] Kumar S(2010)Memetic algorithms for continuous optimization based on local search chains Evol. Comput. 18 27-63
  • [4] Sharma VK(2016)Recent advances in differential evolution - an updated survey Swarm Evol. Comput. 27 1-30
  • [5] Kumari R(2018)Modeling of a greenhouse prototype using PSO and differential evolution algorithms based on a real-time lab view application Appl. Soft Comput. 62 86-100
  • [6] Molina D(2017)Modified differential evolution algorithm for contrast and brightness enhancement of satellite image Appl. Soft Comput. 61 622-641
  • [7] Lozano M(2008)Accelerating differential evolution using an adaptative local search IEEE Trans. Evol. Comput. 12 107-125
  • [8] Garcia-Martinez C(2016)Adapting differential evolution algorithms for continuous optimization via greedy adjustment of control parameters J. Artif. Intell. Soft Comput. Res. 6 103-118
  • [9] Herrera F(2016)Adaptive differential evolution algorithm with novel mutation strategies in multiple sub-populations Comput. Oper. Res. 67 155-173
  • [10] Mullick SS(2016)A novel hybrid differential evolution algorithm with modified code and jade Appl. Soft Comput. 47 577-599