A Comparison of Computational Efforts between Particle Swarm Optimization and Genetic Algorithm for Identification of Fuzzy Models

A. Khosla, S. Kumar, K.R. Ghosh
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引用次数: 27

Abstract

Fuzzy systems are rule-based systems that provide a framework for representing and processing information in a way that resembles human communication and reasoning process. Fuzzy modeling or fuzzy model identification is an arduous task, demanding the identification of many parameters that can be viewed as an optimization process. Evolutionary algorithms are well suited to the problem of fuzzy modeling because they are able to search complex and high dimensional search space while being able to avoid local minima (or maxima). The particle swarm optimization (PSO) algorithm, like other evolutionary algorithms, is a stochastic technique based on the metaphor of social interaction. PSO is similar to the genetic algorithm (GA) as these two evolutionary heuristics are population-based search methods. The main objective of this paper is to present the tremendous savings in computational efforts that can be achieved through the use of PSO algorithm in comparison to GA, when used for the identification of fuzzy models from the available input-output data. For realistic comparison, the training data, models complexity and some other common parameters that influence the computational efforts considerably are not changed. The real data from the rapid nickel-cadmium (Ni-Cd) battery charger developed has been used for the purpose of illustration and simulation purposes.
粒子群算法与遗传算法在模糊模型识别中的计算量比较
模糊系统是基于规则的系统,它提供了一个框架,以类似于人类交流和推理过程的方式表示和处理信息。模糊建模或模糊模型识别是一项艰巨的任务,需要识别许多可视为优化过程的参数。进化算法非常适合于模糊建模问题,因为它们能够搜索复杂和高维的搜索空间,同时能够避免局部最小(或最大值)。粒子群优化算法(PSO)与其他进化算法一样,是一种基于社会互动隐喻的随机技术。粒子群算法与遗传算法(GA)相似,这两种进化启发式算法都是基于种群的搜索方法。本文的主要目的是介绍在从可用的输入输出数据中识别模糊模型时,与遗传算法相比,通过使用PSO算法可以实现的计算工作量的巨大节省。为了进行实际比较,训练数据、模型复杂性和其他一些影响计算量的常见参数没有改变。本文采用研制的镍镉电池快速充电器的实际数据进行了说明和仿真。
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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