Super-fit control adaptation in memetic differential evolution frameworks

被引:19
作者
Andrea Caponio
Ferrante Neri
Ville Tirronen
机构
[1] Technical University of Bari,Department of Electrotechnics and Electronics
[2] University of Jyväskylä,Department of Mathematical Information Technology, Agora
来源
Soft Computing | 2009年 / 13卷
关键词
Differential Evolution; Memetic Algorithm; Differential Evolution Algorithm; Direct Current Motor; Hybrid Differential Evolution;
D O I
暂无
中图分类号
学科分类号
摘要
This paper proposes the super-fit memetic differential evolution (SFMDE). This algorithm employs a differential evolution (DE) framework hybridized with three meta-heuristics, each having different roles and features. Particle Swarm Optimization assists the DE in the beginning of the optimization process by helping to generate a super-fit individual. The two other meta-heuristics are local searchers adaptively coordinated by means of an index measuring quality of the super-fit individual with respect to the rest of the population. The choice of the local searcher and its application is then executed by means of a probabilistic scheme which makes use of the generalized beta distribution. These two local searchers are the Nelder mead algorithm and the Rosenbrock Algorithm. The SFMDE has been tested on two engineering problems; the first application is the optimal control drive design for a direct current (DC) motor, the second is the design of a digital filter for image processing purposes. Numerical results show that the SFMDE is a flexible and promising approach which has a high performance standard in terms of both final solutions detected and convergence speed.
引用
收藏
页码:811 / 831
页数:20
相关论文
共 62 条
[1]
Brest BBMMJ(2006)Self-adapting control parameters in differential evolution: a comparative study on numerical benchmark problems IEEE Trans Evolut Comput 10 646-657
[2]
Greiner S(2007)A fast adaptive memetic algorithm for on-line and off-line control design of pmsm drives IEEE Trans Syst Man Cybern B (special issue on Memetic Algorithms) 37 28-41
[3]
Žumer V.(1999)Hybrid method of evolutionary algorithms for static and dynamic optimization problems with application to a fed-batch fermentation process Comp Chem Eng 23 1277-1291
[4]
Caponio A(2004)Ant direction hybrid differential evolution for solving large capacitor placement problems IEEE Trans Power Syst 19 1794-1800
[5]
Cascella GL(1985)Uncertainty relation for resolution in space, spatial frequency, and orientation optimized by two-dimensional visual cortical filters J Opt Soc Am 2 1160-1169
[6]
Neri F(1995)Optimal Gabor filters for texture segmentation IEEE Trans Image Process 4 947-964
[7]
Salvatore N(1946)Theory of communication J IEE (London) 93 429-457
[8]
Sumner M(2007)Differential evolution algorithms using hybrid mutation Comput Optim Appl 37 231-246
[9]
Chiou J-P(1983)Optimization by simulated annealing Science 220 671-680
[10]
Wang F-S(1998)Convergence properties of the nelder-mead simplex method in low dimensions SIAM J Optim 9 112-147