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A Self-adaptive Mutations with Multi-parent Crossover Evolutionary Algorithm for Solving Function Optimization Problems

机译:求解函数优化问题的具有多父级交叉进化算法的自适应变异

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In this paper, we introduce a new self-adaptive evolutionary algorithm for solving function optimization problems. The capabilities of the new algorithm include: a) self-adaptive choice of Gaussian or Cauchy mutation to balance the local and global search on the variable subspace, b) using multi-parent crossover to exchange global search information, c) using the best individual to take place the worst individual selection strategy to reduce the selection pressure and ensure to find a global optimization. These enhancements increase the capabilities of the algorithm to solve Shekel problems in a more robust and universal way. This paper will present some results of numerical experiments which show that the new algorithm is more robust and universal than its competitors.
机译:在本文中,我们引入了一种新的自适应进化算法来解决函数优化问题。新算法的功能包括:a)自适应选择高斯或柯西突变,以平衡变量子空间上的局部搜索和全局搜索; b)使用多父代交叉交换全局搜索信息; c)使用最佳个体采取最差的个人选择策略来降低选择压力并确保找到全局最优化。这些增强功能提高了算法以更健壮和通用的方式解决Shekel问题的能力。本文将提供一些数值实验的结果,这些结果表明新算法比其竞争对手更健壮和通用。

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