Tuning complex fuzzy systems by supervised learning algorithms

F. J. Moreno-Velo, I. Baturone, R. Senhadji, S. Sánchez-Solano
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引用次数: 18

Abstract

Tuning a fuzzy system to meet a given set of input/output patterns is usually a difficult task that involves many parameters. This paper presents an study of different approaches that can be applied to perform this tuning process automatically, and describes a CAD tool, named xfsl, which allows applying a wide set of these approaches: (a) a large number of supervised learning algorithms; (b) different processes to simplify the learned system; (c) tuning only specific parameters of the system; (d) the ability to tune hierarchical fuzzy systems, systems with continuous output (like fuzzy controller) as well as with categorical output (like fuzzy classifiers), and even systems that employ user-defined fuzzy functions; and, finally, (e) the ability to employ this tuning within the design flow of a fuzzy system, because xfsl is integrated into the fuzzy system development environment Xfuzzy 3.0.
用监督学习算法调整复杂模糊系统
调整模糊系统以满足给定的一组输入/输出模式通常是一项涉及许多参数的困难任务。本文介绍了可用于自动执行此调优过程的不同方法的研究,并描述了一个名为xfsl的CAD工具,该工具允许应用广泛的这些方法:(a)大量监督学习算法;(b)不同的过程来简化学习系统;(c)只调整系统的特定参数;(d)调整层次模糊系统的能力,具有连续输出(如模糊控制器)和分类输出(如模糊分类器)的系统,甚至使用用户定义的模糊函数的系统;最后,(e)在模糊系统的设计流程中使用这种调优的能力,因为xfsl集成到模糊系统开发环境Xfuzzy 3.0中。
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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