会议专题

An Empirical Study on Differential Evolution Algorithm and Its Several Variants

Differential Evolution (DE) is a simple and efficient global optimization algorithm. However, DE has indicated its weaknesses, such as the convergence rate. This fact has inspired many computer scientists to improve upon DE by proposing modifications to the original algorithm. This paper presents a survey on DE and its several variants. In this paper, we design two sets of function optimization eiperiments. One is about the five different mutation strategy of the Conventional Differential Evolution (CDE), and the other is the comparison several variants of Differential Evolution algorithm with a new improved DE algorithm (GPBXDE). To evaluate the performance of the algorithm, we selected twelve widely used benchmark functions. The results of the experiment prove that the strategy CDE/rand/1/bin and CDE/randto-best/1/bin are better and the GPBXDE algorithm performs outstanding.

differential evolution global optimization self-adaptive parameter control empirical study

Renhao Zhou Jianliang Hao Hongwu Cao Hongwei Fan

Faculty of Computer Science, China University of Geosciences Wuhan, P.R. China

国际会议

2011 International Conference on Electronic & Mechanical Engineering and Information Technology(EMEIT 2011)(2011年机电工程与信息技术国际会议)

哈尔滨

英文

3266-3271

2011-08-12(万方平台首次上网日期,不代表论文的发表时间)