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Similarity improvement using angular deviation in multimodel nonlinear system identification

机译:相似性改进在多模型非线性系统识别中的角度偏差

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In this work an unsupervised fuzzy learning method for the identification of nonlinear dynamical systems is designed. Accordingly, the learning process is featured by an incremental fuzzy clustering algorithm involving, in addition to the usual Euclidian distance, a new angular deviation. It turns out that: (i) the domain associated to each local model is better located compared to methods based on only Euclidian distance; (ii) the concentration phenomenon, observed when using standard metric classification, is highly reduced. These futures are confirmed by simulation.
机译:在这项工作中,设计了一种无监督的模糊学习方法,用于识别非线性动力系统。因此,除了通常的欧几里德距离之外,学习过程涉及一种涉及的增量模糊聚类算法,还具有新的欧几里德距离,这是一种新的角度偏差。事实证明:(i)与仅基于Euclidian距离的方法相比,与每个本地模型相关联的域更好; (ii)使用标准度量分类时观察到的浓度现象,高度降低。这些期货通过模拟确认。

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