Discussion on Accuracy of Approximation with Smooth Fuzzy Models

E. N. Sadjadi, M. Ebrahimi, Zahra Gachloo
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引用次数: 6

Abstract

The structure of fuzzy model impacts how well it approximates the nonlinear function, and how many rules are required to gain the desired accuracy. The most of the earlier works rely on diminishing the higher derivation of the fuzzy model in front of the higher derivatives of the real system. However, the smooth compositions are m-time differentiable and will not diminish. This has motivated to derive the relation of required fuzzy rules with the arbitrary accuracy for function approximation through the smooth fuzzy model. The originality of the work is that the approximation error and the number of required fuzzy rules in this paper, rely on the structure of the fuzzy model and the involved s-t compositions, beside the nonlinear properties of the real plant, through a reliable mathematical formulation. Hence, we have presented a prediction-correction algorithm to include all the main factors. It is proved that number of the required rules are lower than those of the earlier works to gain the same level of model accuracy.
光滑模糊模型逼近精度的探讨
模糊模型的结构影响着它对非线性函数的逼近程度,以及需要多少条规则才能获得期望的精度。早期的工作大多依赖于在实际系统的高阶导数之前减小模糊模型的高阶导数。然而,光滑组合是m-时间可微的,不会减少。这促使我们通过光滑模糊模型推导出函数逼近所需的模糊规则与任意精度的关系。该工作的独创性在于,本文所要求的近似误差和模糊规则的数量,依赖于模糊模型的结构和所涉及的s-t组成,除了真实植物的非线性特性,通过一个可靠的数学公式。因此,我们提出了一种包括所有主要因素的预测校正算法。结果表明,要获得相同的模型精度,所需规则的数量比以往的工作要少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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