Giulio Fattore, Marco Peruzzo, Giacomo Sartori, Mattia Zorzi
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引用次数: 0
摘要
本文通过基于正则化核的预测误差法(PEM)来解决学习前向模型脉冲响应特征的问题。常用的方法是用高阶稳定 ARX 模型来逼近系统。然而,这种选择会在我们想要估计的系统中引起某些不想要的先验信息。为了克服这个问题,我们提出了一种基于核的新范式,它直接根据前向模型的脉冲响应进行表述,从而识别出高阶 MAX 模型。最具挑战性的步骤是优化边际似然的核超参数估计。我们提出了一种评估边际似然的方法,这使得超参数估计成为可能。最后,一些数值结果显示了该方法的有效性。
This paper addresses the problem of learning the impulse responses
characterizing forward models by means of a regularized kernel-based Prediction
Error Method (PEM). The common approach to accomplish that is to approximate
the system with a high-order stable ARX model. However, such choice induces a
certain undesired prior information in the system that we want to estimate. To
overcome this issue, we propose a new kernel-based paradigm which is formulated
directly in terms of the impulse responses of the forward model and leading to
the identification of a high-order MAX model. The most challenging step is the
estimation of the kernel hyperparameters optimizing the marginal likelihood.
The latter, indeed, does not admit a closed form expression. We propose a
method for evaluating the marginal likelihood which makes possible the
hyperparameters estimation. Finally, some numerical results showing the
effectiveness of the method are presented.