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Fuzzy local linearization and local basis function expansion in nonlinear system modeling

机译:非线性系统建模中的模糊局部线性化和局部基函数展开

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摘要

Fuzzy local linearization is compared with local basis function expansion for modeling unknown nonlinear processes. First-order Takagi-Sugeno fuzzy model and the analysis of variance (ANOVA) decomposition are combined for the fuzzy local linearization of nonlinear systems, in which B-splines are used as membership functions of the fuzzy sets for input space partition. A modified algorithm for adaptive spline modeling of observation data (MASMOD) is developed for determining the number of necessary B-splines and their knot positions to achieve parsimonious models. This paper illustrates that fuzzy local linearization models have several advantages over local basis function expansion based models in nonlinear system modeling.
机译:将模糊局部线性化与局部基函数展开进行比较,以对未知的非线性过程进行建模。一阶Takagi-Sugeno模糊模型与方差分析(ANOVA)分解相结合,用于非线性系统的模糊局部线性化,其中B样条用作输入空间划分的模糊集的隶属函数。开发了一种用于观测数据的自适应样条建模的改进算法(MASMOD),用于确定必要的B样条的数量及其结位置,以实现简约模型。本文表明,在非线性系统建模中,模糊局部线性化模型比基于局部基函数展开的模型具有多个优势。

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