求解约束函数优化问题几种方法的比较

Kangxiu Hu, Bingxian Wang
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引用次数: 1

摘要

本文讨论了求解约束函数优化问题的几种方法,包括精英子空间进化算法(ESEA)、多父交叉进化算法(MPCEA)、基于光滑方案和线搜索的粒子群优化算法(SLPSO)和约束差分进化算法(CDEA)。数值模拟实验表明,CDEA是最佳的方法。该方法能保持种群多样性和参数设置简单,使我们能在较短的时间内找到最优解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of several types of methods for solving constrained function optimization problems
Several types of methods for solving constrained function optimization problems are discussed in this paper including elite-subspace evolutionary algorithm (ESEA), multi-parent crossover evolutionary algorithm (MPCEA), smooth scheme and line search based particle swarm optimization (SLPSO) and Constrained Differential evolutionary algorithm (CDEA). Numerical simulation experiments show that CDEA is the best method. The approach can maintain population diversity and simple parameter setting and enable us to find the optimal solution within a fairly short period of time.
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