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Improved Differential Evolution Algorithm and its Application in Complex Function Optimization

机译:改进的差分演进算法及其在复杂功能优化中的应用

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When solving complex function optimization problem, Differential evolution (DE) algorithms may suffer from low convergence rate. In this paper, we propose an improved differential evolution algorithm named n-IDE. Our algorithm uses Gaussian sequence to dynamically generate zoom factors and applies an improved hybrid mutation strategy to individuals in order to improve the overall performance. We compare n-IDE with existing DE approaches using benchmark functions and the experimental result shows that n-IDE has significant improvement on the convergence rate.
机译:当求解复杂功能优化问题时,差分演进(DE)算法可能遭受低收敛速率。在本文中,我们提出了一种名为N-IDE的改进的差分演进算法。我们的算法使用高斯序列动态地产生缩放因子,并将改进的混合突变策略应用于个人,以提高整体性能。我们将N-IDE与现有的使用基准功能的方法进行比较,实验结果表明,N-IDE对收敛速度显着提高。

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