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Online data-driven fuzzy modeling for nonlinear dynamic systems

机译:非线性动力学系统的在线数据驱动模糊建模

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摘要

In this paper, a new method for online learning of Takagi-Sugeno (T-S) model from input-output data is presented. It is based on a novel learning algorithm that recursively updates T-S model structure and parameters by combining supervised and unsupervised learning. The rule-base and parameters of the T-S model continually evolve by adding new rules with more summarization power and by modifying existing rules and parameters. To reduce the complexity of fuzzy models while keeping good model accuracy, some approximate similarity measures and simplification methods are presented. Using these methods, the redundant fuzzy rules are removed or merged. The simplified rule base is computationally efficient and linguistically interpretable. The consequent parameters of the T-S model are identified and optimized by Kalman filter. The approach has been successfully applied to T-S models of non-linear function approximation and dynamical system modeling.
机译:本文提出了一种从输入输出数据在线学习高木素野(T-S)模型的新方法。它基于一种新颖的学习算法,该算法通过结合有监督和无监督学习来递归更新T-S模型的结构和参数。通过添加具有更强摘要功能的新规则并修改现有规则和参数,T-S模型的规则库和参数将不断发展。为了降低模糊模型的复杂度,同时保持良好的模型精度,提出了一些近似的相似性度量和简化方法。使用这些方法,冗余模糊规则将被删除或合并。简化的规则库具有高效的计算能力和语言上的解释能力。通过卡尔曼滤波器对T-S模型的后续参数进行识别和优化。该方法已成功应用于非线性函数逼近和动态系统建模的T-S模型。

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