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Two enhanced Differential Evolution variants for solving global optimization problems

机译:两种增强的差分进化变体,用于解决全局优化问题

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Differential Evolution (DE) algorithms are very robust, effective and highly efficient in solving the global optimization problems. Thus, they are usually able to mitigate the drawback of long computation times commonly associated with Evolutionary algorithms. However, in certain cases the performance of DE is observed not to be completely flawless. In this paper we have proposed the two enhanced variants of DE using a modified mutation operator. The DE versions named as EDE-1 and EDE-2 are tested on six benchmark problems and a real time molecular potential energy problem. The simulation results prove the efficiency as well as the effectiveness of the proposed variants.
机译:差分进化(DE)算法在解决全局优化问题方面非常强大,有效且高效。因此,它们通常能够减轻通常与进化算法相关的计算时间长的缺点。但是,在某些情况下,观察到DE的性能并不是完全完美的。在本文中,我们使用修饰的变异算子提出了DE的两个增强变体。在六个基准问题和一个实时分子势能问题上测试了名为EDE-1和EDE-2的DE版本。仿真结果证明了所提出的变体的效率和有效性。

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