层次模糊模型的自适应

R. Hammell, T. Sudkamp
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引用次数: 2

摘要

一种用于模糊建模和推理的层次结构已经被开发出来,允许基于系统性能反馈的自适应。提出了一种通用的自适应算法,并对三种类型的自适应行为进行了性能测试:持续学习、渐进变化和剧烈变化。在持续学习中,底层系统不会改变,自适应算法利用实时数据和相关反馈来提高现有模型的准确性。渐进和剧烈的变化代表了被建模系统的根本改变。在这三种类型的行为中,自适应算法已被证明能够重新配置规则库以改进原始近似或适应新系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptivity in a hierarchical fuzzy model
A hierarchical architecture for fuzzy modeling and inference has been developed to allow adaptation based on system performance feedback. A general adaptive algorithm is presented and its performance examined for three types of adaptive behaviour: continued learning, gradual change, and drastic change. In continued learning, the underlying system does not change and the adaptive algorithm utilizes the real time data and associated feedback to improve the accuracy of the existing model. Gradual and drastic change represent fundamental alterations to the system being modeled. In each of the three types of behaviour, the adaptive algorithm has been shown to be able to reconfigure the rule bases to either improve the original approximation or adapt to the new system.
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