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Fuzzy system identification method for cognitive and decision processes

机译:认知决策过程的模糊系统识别方法

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The paper discusses a new fuzzy oriented method for estimating the transfer function of multivariable dynamic systems using creative interpolative fuzzy amplification for poorly informed conflicting data sets. The essential information in fuzzy rule bases, by proper techniques, can be concentrated into smaller ones. The fuzzy rule interpolation method (proposed by Koczy and Hirota (1993)) offers a possibility to obtain conclusion for an observation that does not match any of the rule antecedents, therefore, even sparse rule bases can be allowed. On the basis of the Koczy-Hirota fuzzy interpolation approach we introduce an effective transfer function estimation method using this formula in the regularization of the estimated transfer function for dynamical multivariable systems obtained from noisy, uncertain input/output data.
机译:本文讨论了一种新的面向模糊的方法,该方法针对信息不充分的冲突数据集使用创造性的内插模糊放大来估计多变量动态系统的传递函数。通过适当的技术,模糊规则库中的基本信息可以集中到较小的信息中。模糊规则插值方法(由Koczy和Hirota(1993)提出)为不符合任何规则先例的观察得出结论提供了可能,因此,即使是稀疏的规则库也可以允许。在Koczy-Hirota模糊插值方法的基础上,我们引入了一种有效的传递函数估计方法,该方法用于对从嘈杂,不确定的输入/输出数据获得的动态多变量系统的估计传递函数进行正则化。

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