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Gaussian process approach for modelling of nonlinear systems

机译:非线性系统建模的高斯过程方法

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Parametric modelling principals such as neural networks, fuzzy models and multiple model techniques have been proposed for modelling of nonlinear systems. Research effort has focused on issues such as the selection of the structure, constructive learning techniques, computational issues, the curse of dimensionality, off-equilibrium behaviour, etc. To reduce these problems, the use of non-parametrical modelling approaches have been proposed. This paper introduces the Gaussian process (GP) prior approach for the modelling of nonlinear dynamic systems. The relationship between the GP model and the radial basis function neural network is explained. Issues such as selection of the dimension of the input space and the computation load are also discussed. The GP modelling technique is demonstrated on an example of the nonlinear hydraulic positioning system.
机译:已经提出了参数建模原理,例如神经网络,模糊模型和多模型技术,用于非线性系统的建模。研究工作集中在诸如结构选择,建设性学习技术,计算问题,维数诅咒,非平衡行为等问题上。为减少这些问题,已提出使用非参数建模方法。本文介绍了用于非线性动力学系统建模的高斯过程(GP)先验方法。解释了GP模型与径向基函数神经网络之间的关系。还讨论了输入空间的尺寸选择和计算负荷之类的问题。在非线性液压定位系统的示例中演示了GP建模技术。

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