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AN AFFINE GAUSSIAN PROCESS APPROACH FOR NONLINEAR SYSTEM IDENTIFICATION

机译:非线性系统识别的仿射高斯过程方法

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摘要

The traditional Gaussian Process model is not analytically invertible. In order to use the Gaussian Process model for Internal Model Control, numerical approaches have to be used to find the inverse of the model. The numerical search for the inverse of each sample increases the already large computational load. To reduce the computation load an Affine Local Gaussian Process Model Network, as a combination of traditional Local Model Network and non-parametrical Gaussian Process Prior approach, is proposed in this paper. A novel algorithm for structure optimisation is introduced and exact inverse of the proposed network is derived. An Affine Local Gaussian Process Model Network and its inverse are illustrated on a simulated example.
机译:传统的高斯过程模型在分析上是不可逆的。为了将高斯过程模型用于内部模型控制,必须使用数值方法来找到模型的逆模型。对每个样本的逆进行数值搜索会增加已经很大的计算量。为了减少计算量,提出了一种仿射局部高斯过程模型网络,该模型网络是传统局部模型网络和非参数高斯过程先验方法的结合。介绍了一种用于结构优化的新算法,并推导了所提出网络的精确逆。在一个仿真示例中说明了一个仿射局部高斯过程模型网络及其逆过程。

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