Multi-phase evolutionary algorithm for non-linear programming problems with multiple solutions

Guangming Lin, Jihong Zhang, Yongsheng Liang, Lishan Kang
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引用次数: 1

Abstract

In this paper a multi-phase evolutionary algorithm (MPEA) for solving general non-linear programming problems (NLP) is proposed. It uses population decomposition, elite multi-parent crossover, better of Gauss and Cauchy mutation and population hill-climbing strategies for adaptive search and particle swarm optimization (PSO). Comparing with other algorithms, it has the following advantages. (1) It can be used for solving non-linear optimization problems with or without constraints, real NLP, integer NLP (including 0-1 NLP) and real-integer mixed NLP. (2) It can be used for solving multi-modal function optimization problems. It means that it can be used to get multiple solutions in one run if the NLP has many global optimal solutions. (3) It is not needed to continuity, convexity and derivative information. In this paper, numerical experiment results show that this evolutionary algorithm is very effective in generality, reliability, precision, robustness and intelligence.
多解非线性规划问题的多阶段进化算法
本文提出了一种求解一般非线性规划问题的多阶段进化算法。该算法采用种群分解、精英多亲本交叉、高斯和柯西变异和种群爬坡策略进行自适应搜索和粒子群优化。与其他算法相比,它具有以下优点:(1)可用于求解有约束或无约束的非线性优化问题、实NLP、整数NLP(包括0-1 NLP)和实整数混合NLP。(2)可用于求解多模态函数优化问题。这意味着如果NLP有许多全局最优解,则可以使用它在一次运行中获得多个解。(3)不需要连续性、凸性和导数信息。数值实验结果表明,该进化算法在通用性、可靠性、精度、鲁棒性和智能性等方面都有较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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