Fuzzy networks with feedback rule bases for complex systems modelling

A. Gegov, Farzad Arabikhan, D. Sanders, B. Vatchova, M. Vasileva
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引用次数: 13

Abstract

This paper proposes a novel approach for modelling complex interconnected systems by means of fuzzy networks with feedback rule bases. The nodes in these networks are rule bases connected in a feedback manner whereby outputs from some rule bases are fed as inputs to the same or preceding rule bases. The approach allows any fuzzy network of this type to be presented as an equivalent fuzzy system by linguistic composition of its nodes. The composition process makes use of formal models for fuzzy networks, basic operations in such networks, their properties and advanced operations. These models, operations and properties are used for defining several types of networks with single or multiple local and global feedback. The proposed approach facilitates the understanding of complex interconnected systems by improving the transparency of their models.
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具有反馈规则基础的模糊网络用于复杂系统建模
本文提出了一种利用带有反馈规则库的模糊网络对复杂互联系统建模的新方法。这些网络中的节点是以反馈方式连接的规则库,其中一些规则库的输出作为输入馈送到相同或先前的规则库。该方法允许任何这种类型的模糊网络通过其节点的语言组成来表示为等效模糊系统。合成过程利用了模糊网络的形式化模型、模糊网络的基本运算、模糊网络的性质和高级运算。这些模型、操作和属性用于定义具有单个或多个局部和全局反馈的几种类型的网络。所提出的方法通过提高模型的透明度来促进对复杂互联系统的理解。
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