模糊规则网络中节点识别的布尔矩阵方程

A. Gegov, Nedyalko Petrov, D. Sanders, B. Vatchova
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引用次数: 8

摘要

本文提出了一种利用模糊网络对复杂互联系统进行建模的新方法。这些网络中的节点是相互连接的规则库,其中一些规则库的输出作为输入馈送到其他规则库。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。组合过程利用了模糊网络的形式化模型和模糊网络的基本操作。这些模型和操作被用于定义模糊网络中的几种节点识别案例。在这种情况下,未知节点是通过求解布尔矩阵方程得到的,这种方法保证了网络的预先指定的总体性能。与其他方法相比,所提出的方法的主要优点是它具有更好的透明度,不仅有利于分析,而且有利于复杂互连系统的设计。
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Boolean matrix equations for node identification in fuzzy rule based networks
This paper proposes a novel approach for modelling complex interconnected systems by means of fuzzy networks. The nodes in these networks are interconnected rule bases whereby outputs from some rule bases are fed as inputs to other 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 and basic operations in such networks. These models and operations are used for defining several node identification cases in fuzzy networks. In this case, the unknown nodes are derived by solving Boolean matrix equations in a way that guarantees a pre-specified overall performance of the network. The main advantage of the proposed approach over other approaches is that it has better transparency and facilitates not only the analysis but also the design of complex interconnected systems.
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