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Identification of Quasi-ARX neurofuzzy model by using SVR-based approach with input selection

机译:用基于SVR的输入选择来识别Quasi-Arx神经舒张模型

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Quasi-ARX neurofuzzy (Q-ARX-NF) models have shown great approximation ability and usefulness in nonlinear system identification and control. However, the incorporated neurofuzzy networks suffer from the curse-of-dimensionality problem, which may result in high computational complexity and over-fitting. In this paper, support vector regressor (SVR) based identification approach is used to reduce computational complexity with the help of transforming the original problem into Lagrange space, which is only sensitive to the number of data samples. Furthermore, to improve the generalization capability, a parsimonious model structure is obtained by eliminating insignificant input variables for the incorporated neurofuzzy network, which is implemented by genetic algorithm (GA) based input selection method with a novel fitness evaluation function. Two numerical simulations are tested to show the effectiveness of the proposed method.
机译:准arx神经纤维(Q-ARX-NF)模型在非线性系统识别和控制中显示出很大的近似能力和有用性。然而,已加入的神经循环网络遭受诅咒问题,这可能导致高计算复杂性和过度拟合。在本文中,基于支持向量回归(SVR)的识别方法用于减少计算复杂性,以帮助将原始问题转换为拉格朗日空间,这仅对数据样本的数量敏感。此外,为了提高泛化能力,通过消除具有新的神经舒张网络的无关联输入变量来获得分析模型结构,其由基于遗传算法(GA)的输入选择方法利用新颖的适应性评估功能来实现。测试了两个数值模拟以显示所提出的方法的有效性。

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