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Ensemble Differential Evolution Algorithm for CEC2011 Problems

机译:CEC2011问题的集合差分演进算法

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Differential Evolution (DE) is a simple yet efficient stochastic algorithm for solving real world problems. To achieve optimal performance with DE, time consuming parameter tuning is essential as its performance is sensitive to the choice of the mutation and crossover strategies and their associated control parameters. During different stages of DE's evolution, different combinations of mutation and crossover strategies with different parameter settings can be appropriate. Based on this observation different adaptive and self-adaptive techniques have been proposed. In this paper, we employ a DE with an ensemble of mutation and crossover strategies and their associated control parameters known as EPSDE. In EPSDE, a pool of distinct mutation and crossover strategies along with a pool of values for each control parameter coexists throughout the evolution process and competes to produce offspring. The performance of EPSDE is evaluated on a set of real world problems taken from different fields of engineering and presented in the technical report of Conference on Evolutionary Computation (CEC) 2011.
机译:差分演进(de)是一种简单而有效的随机算法,用于解决现实世界问题。为了通过DE实现最佳性能,耗时的参数调整是必不可少的,因为它的性能对突变和交叉策略的选择及其相关的控制参数敏感。在DE进化的不同阶段,不同参数设置的突变和交叉策略的不同组合可以适当。基于该观察结果,已经提出了不同的自适应和自适应技术。在本文中,我们使用突变和交叉策略的集合以及其相关的对照参数称为EPSDE。在EPSDE中,一系列不同的突变和交叉策略以及每个控制参数在整个演进过程中共存的值池,并竞争以产生后代。 EPSDE的表现是在不同工程领域采取的一套现实世界问题评估,并在2011年进化计算(CEC)会议技术报告中提出。

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