Neuro Fuzzy Modeling of Control Systems

E. Gorrostieta, C. Pedraza
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引用次数: 3

Abstract

The analysis of the models is carried out starting from experimental data of a multivariable system MISO (Many Input Single Output). The models’ implementation was made using fuzzy logic. In fuzzy logic, the cluster technique was used to decrease the number of rules to use in the identification. This technique is opposed to the conventional method which requires a considerable number of fuzzy inference rules to approach the model. In the consequence of fuzzy model, different techniques are used to implement Takagi-Sugeno type rules. By other hand, we implemented the Neuro-fuzzy modeling methods, which let represent the non-linear system and at the same time a system with some learning degree using different topologies. By comparison the goodness of each method is obtained.
控制系统的神经模糊建模
从多变量系统MISO(多输入单输出)的实验数据出发,对模型进行了分析。模型的实现采用模糊逻辑。在模糊逻辑中,使用聚类技术来减少用于识别的规则数量。该技术与传统方法相反,传统方法需要大量的模糊推理规则来接近模型。在模糊模型的结果中,采用不同的技术来实现Takagi-Sugeno型规则。另一方面,我们实现了神经模糊建模方法,利用不同的拓扑结构来表示非线性系统,同时表示具有一定学习程度的系统。通过比较,得出了各种方法的优点。
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