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Fuzzy systems identification

机译:模糊系统识别

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摘要

A general identification approach for discrete-time multi-input/single-output fuzzy systems is presented, which includes structure identification, parameter (fuzzy relation) estimation, and the associated self-learning algorithm. Zadeh's possibility distribution plays an important role in identification and the use of fuzzy models thus constructed. Numerical examples are provided which show the advantages of the proposed identification algorithm and the effectiveness of the self-learning algorithm. Comparison shows that the proposed method can produce the fuzzy model with higher accuracy than previously achieved in other work. In the application example, the proposed identification approach has been used to construct fuzzy models for a fluidised catalytic cracking unit in a big refinery. The resultant fuzzy models are accurate enough for industrial application purpose.
机译:提出了一种离散时间多输入/单输出模糊系统的通用辨识方法,该方法包括结构辨识,参数(模糊关系)估计以及相关的自学习算法。 Zadeh的可能性分布在识别和使用由此构建的模糊模型中起着重要作用。数值算例表明了所提出的识别算法的优点和自学习算法的有效性。比较表明,所提出的方法可以比以前在其他工作中获得的精度更高地生成模糊模型。在应用示例中,所提出的识别方法已用于为大型炼油厂的流化催化裂化装置构建模糊模型。所得的模糊模型足够精确,可用于工业应用。

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