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一种用于构建紧凑的基于规则的模糊模型的混合学习方法。

A hybrid learning method for constructing compact rule-based fuzzy models.

出版信息

IEEE Trans Cybern. 2013 Dec;43(6):1807-21. doi: 10.1109/TSMCB.2012.2231068.

Abstract

The Takagi–Sugeno–Kang-type rule-based fuzzy model has found many applications in different fields; a major challenge is, however, to build a compact model with optimized model parameters which leads to satisfactory model performance. To produce a compact model, most existing approaches mainly focus on selecting an appropriate number of fuzzy rules. In contrast, this paper considers not only the selection of fuzzy rules but also the structure of each rule premise and consequent, leading to the development of a novel compact rule-based fuzzy model. Here, each fuzzy rule is associated with two sets of input attributes, in which the first is used for constructing the rule premise and the other is employed in the rule consequent. A new hybrid learning method combining the modified harmony search method with a fast recursive algorithm is hereby proposed to determine the structure and the parameters for the rule premises and consequents. This is a hard mixed-integer nonlinear optimization problem, and the proposed hybrid method solves the problem by employing an embedded framework, leading to a significantly reduced number of model parameters and a small number of fuzzy rules with each being as simple as possible. Results from three examples are presented to demonstrate the compactness (in terms of the number of model parameters and the number of rules) and the performance of the fuzzy models obtained by the proposed hybrid learning method, in comparison with other techniques from the literature.

摘要

基于 Takagi-Sugeno-Kang 型规则的模糊模型在不同领域有很多应用;然而,一个主要的挑战是构建一个具有优化模型参数的紧凑模型,从而得到令人满意的模型性能。为了生成一个紧凑的模型,大多数现有的方法主要集中在选择适当数量的模糊规则上。相比之下,本文不仅考虑了模糊规则的选择,还考虑了每条规则前提和结论的结构,从而提出了一种新的紧凑的基于规则的模糊模型。在这里,每个模糊规则都与两组输入属性相关联,其中第一组用于构建规则前提,另一组用于规则结论。提出了一种新的混合学习方法,将改进的和声搜索方法与快速递归算法相结合,用于确定规则前提和结论的结构和参数。这是一个硬混合整数非线性优化问题,所提出的混合方法通过采用嵌入式框架来解决该问题,从而显著减少了模型参数的数量和每个规则的数量,使每个规则尽可能简单。通过三个示例展示了所提出的混合学习方法获得的模糊模型的紧凑性(在模型参数的数量和规则的数量方面)和性能,并与文献中的其他技术进行了比较。

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