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首页> 外文期刊>IEEE Transactions on Fuzzy Systems >On Modeling of Data-Driven Monotone Zero-Order TSK Fuzzy Inference Systems Using a System Identification Framework
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On Modeling of Data-Driven Monotone Zero-Order TSK Fuzzy Inference Systems Using a System Identification Framework

机译:基于系统识别框架的数据驱动单调零阶TSK模糊推理系统建模

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摘要

A system identification-based framework is used to develop monotone fuzzy If-Then rules for formulating monotone zero-order Takagi-Sugeno-Kang (TSK) fuzzy inference systems (FISs) in this paper. Convex and normal trapezoidal and triangular fuzzy sets, together with a strong fuzzy partition strategy (either fixed or adaptive), is adopted. By coupling the strong fuzzy partition with a set of complete and monotone fuzzy If-Then rules, a monotone TSK FIS model can be guaranteed. We show that when a clean multiattribute monotone dataset is used, a system identification-based framework does not guarantee the production of monotone fuzzy If-Then rules, which leads to nonmonotone TSK FIS models. This is a newlearning phenomenonthat needs to be scrutinized when we design data-based monotone TSK FIS models. Two solutions are proposed: 1) a new monotone fuzzy rule relabeling-based method and 2) a constrained derivative-based optimization method. A new modeling framework with an adaptive fuzzy partition is evaluated. The results indicate that TSK FIS models with better accuracy (a lower sum square error) and a good degree of monotonicity (measured with a monotonicity test) are achieved. In short, the main contributions of this study are validation of the new learning phenomenon and introduction of useful methods for developing data-based monotone TSK FIS models.
机译:本文基于系统识别的框架,开发了单调模糊If-Then规则,用于制定单调零阶Takagi-Sugeno-Kang(TSK)模糊推理系统(FIS)。采用凸,正梯形和三角形模糊集,以及强模糊划分策略(固定或自适应)。通过将强模糊分区与一组完整的单调模糊If-Then规则结合,可以确保单调TSK FIS模型。我们表明,当使用干净的多属性单调数据集时,基于系统标识的框架不能保证产生单调模糊If-Then规则,从而导致非单调TSK FIS模型。这是一个新的 n <斜体xmlns:mml = “ http://www.w3.org/1998/Math/MathML ” xmlns:xlink = “ http://www.w3.org/1999/xlink “>学习现象 n在设计基于数据的单调TSK FIS模型时需要仔细检查。提出了两种解决方案:1)一种新的基于单调模糊规则重标记的方法,以及2)一种基于约束导数的优化方法。评估了带有自适应模糊分区的新建模框架。结果表明,TSK FIS模型具有更好的准确性(较低的平方和误差)和良好的单调程度(通过单调测试测量)。简而言之,这项研究的主要贡献是验证了新的学习现象,并介绍了开发基于数据的单调TSK FIS模型的有用方法。

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