期刊文献+

局部抽象凸区域剖分差分进化算法 被引量:13

Differential Evolution Algorithm with Local Abstract Convex Region Partition
下载PDF
导出
摘要 在差分进化算法框架下,结合抽象凸理论,提出一种局部抽象凸区域剖分差分进化算法(Local partition based differential evolution,LPDE).首先,通过对新个体的邻近个体构建分段线性下界支撑面,实现搜索区域的动态剖分;然后,利用区域剖分特性逐步缩小搜索空间,同时根据下界估计信息指导种群更新,并筛选出较差个体;其次,借助下界支撑面的广义下降方向作局部增强,并根据进化信息对搜索区域进行二次剖分;最后,根据个体的局部邻域下降方向对部分较差个体作增强处理.数值实验结果表明了所提算法的有效性. Within the framework of differential evolution algorithm, a differential evolution algorithm with local abstract convex region partition is proposed in this paper incorporating the abstract convexity theory. Firstly, the partition of the search domain is performed dynamically by building piecewise linear abstract convex lower supporting hyperplanes for the neighboring individuals of new individuals. Secondly, the search domain narrows gradually by using properties of the region partition. Meanwhile, the process of population updating is guided according to the information of underestimate, and poor individuals are identified effectively. Additionally, the generalized descent directions of the lower supporting hyperpalens are used for local enhancement, and the search domain is partitioned again according to the evolutionary information. Finally, some poor individuals get enhanced according to descent directions of their local neighbourhood. Numerical experiment results have verified the effectiveness of the proposed algorithm.
出处 《自动化学报》 EI CSCD 北大核心 2015年第7期1315-1327,共13页 Acta Automatica Sinica
基金 国家自然科学基金(61075062) 浙江省自然科学基金(LY13F030008) 浙江省科技厅公益项目(2014C33088) 浙江省重中之重学科开放基金(20120811) 杭州市产学研合作项目(20131631E31)资助~~
关键词 差分进化 区域剖分 全局优化 下界估计 抽象凸 Differention evolution region partition global optimization underestimate abstract convex
  • 相关文献

参考文献27

  • 1Walsh G R. Methods of Optimization. London: Wiley Press, 1975.
  • 2Nelder J A, Mead R. A simplex method for function mini- mization. The Computer Journal, 1965, T(4): 308-313.
  • 3Adjiman C S, Dallwig S, Floudas C A, Neumaier A. A global optimization method, aBB, for general twice-differentiable constrained NLPs: Ⅰ. Theoretical advances. Computers & Chemistry Engineering, 1998, 22(9): 1137-1158.
  • 4Adjiman C S, Androulakis I P, Floudas C A. A global opti- mization method, aBB, for general twice-differentiable con- strained NLPs: Ⅱ. Implementation and computational re- suits. Computers & Chemistry Engineering, 1998, 22(9): 1159-1179.
  • 5Skaal A, Westerlund T, Misener R, Floudas C A. A gener- alization of the classical aBB convex underestimation via diagonal and nondiagonal quadratic terms. Journal of Opti- mization Theory and Applications, 2012, 154(2): 462-490.
  • 6Beliakov G. Cutting angle method - a tool for constrained global optimization. Optimization Methods and Software, 2004, 19(2): 137-151.
  • 7Bagirov A M, Rubinov A M. Cutting angle method and a lo- cal search. Journal of Global Optimization, 2003, 27(2-3): 193-213.
  • 8Beliakov G. Geometry and combinatorics of the cutting an- gle method. Optimization, 2003, 52(4-5): 379-394.
  • 9Floudas C A, Gounaris C E. A review of recent advances in global optimization. Journal of Global Optimization, 2009, 45(1): 3-38.
  • 10Das S, Suganthan P N. Differential evolution: a survey of the state-of-the-art. IEEE Transactions on Evolutionary Com- putation, 2011, 15(1): 4-31.

二级参考文献49

  • 1钟伟才,刘静,焦李成.多智能体遗传算法用于线性系统逼近[J].自动化学报,2004,30(6):933-938. 被引量:25
  • 2Chun-Hung CHEN.INTELLIGENT SIMULATION FOR ALTERNATIVES COMPARISON AND APPLICATION TO AIR TRAFFIC MANAGEMENT[J].Journal of Systems Science and Systems Engineering,2005,14(1):37-51. 被引量:2
  • 3周艳平,顾幸生.差分进化算法研究进展[J].化工自动化及仪表,2007,34(3):1-6. 被引量:72
  • 4DAS S, SUGANTHAN P N. Differential evolution-a survey of the state-of-theart [J]. IEEE Transactions on Evolutionary Computation, 2011, 15(1): 4-31.
  • 5DAS S, MALTY S, QU B Y, et al. Real-parameter evolutionary multi- modal optimization - a survey of the state-of-the-art [J]. Swarm and Evolutionary Computation, 2011, 1(2): 71 - 88.
  • 6FLOUDAS C A, GOUNARIS C E. A review of recent advances in global optimization [J]. Journal of Global Optimization, 2009, 45(1 ): 3 -38.
  • 7BEASLEY D, BULL D R, MARTIN R D. A sequential niche tech-nique for multimodal function optimization [J]. Evolutionary Com- putation, 1993, 1(2): 101 - 125.
  • 8BRADLEY P, MISURA K M S, BAKER D. Toward high-resolution de novo structure prediction for small proteins [J]. Science, 2005, 309(4742): 1868- 1871.
  • 9GOLDBERG D E. Genetic Algorithms in Search, Optimization, and Machine Learning [M]. New York: Addison-Wesley, 1989.
  • 10STORN R, PRICE K V. Differential evolution: a simple and efficient heuristic for global optimization over continuous spaces [J]. Journal of Global Optimization, 1995, 11(4): 341 - 359.

共引文献44

同被引文献76

引证文献13

二级引证文献127

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部