Solution of fractional programming problems using PSO algorithm

A. Pal, S. Singh, Kusum Deep
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引用次数: 6

Abstract

This paper presents strategy of particle swarm optimization (PSO) algorithm introduced by Kennedy and Eberhart [1] for solving fractional programming problems. Particle swarm optimization (PSO) is a population-based optimization technique, which is an alternative tool to genetic algorithm (GA) and other evolutionary algorithms (EA) and has gained lot of attention in recent years. PSO is a stochastic search technique with reduced memory requirement, computationally effective and easier to implement as compared to EA. In this paper, possibility of using particle swarm optimization algorithm for solving fractional programming problems has been considered. The particle swarm optimization technique has been tried on a set of 12 test problems taken from the literature whose optimal solutions are known. A penalty function approach [2] is incorporated for handling constraints of the problem. Our experiences has shown that it can be effectively used to solve fractional programming problems also.
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用粒子群算法求解分式规划问题
本文提出了Kennedy和Eberhart[1]提出的粒子群优化算法(particle swarm optimization, PSO)求解分数阶规划问题的策略。粒子群优化(PSO)是一种基于种群的优化技术,是遗传算法(GA)和其他进化算法(EA)的替代工具,近年来受到广泛关注。粒子群优化算法是一种随机搜索技术,与EA相比,它具有内存需求少、计算效率高、易于实现的特点。本文考虑了用粒子群优化算法求解分数阶规划问题的可能性。本文对文献中已知最优解的12个测试问题进行了粒子群优化技术的试验。采用罚函数方法[2]来处理问题的约束条件。我们的经验表明,它也可以有效地用于解决分式规划问题。
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