On-line identification with regularised Evolving Gaussian process

M. Stepancic, J. Kocijan
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引用次数: 2

Abstract

The on-line identification of nonlinear dynamical system with the regularised nonparametric regression approach is considered. The model structure is a nonlinear finite impulse response (NFIR) based on a Gaussian process (GP). The online estimation of the tuning parameters of the GP model leads to an Evolving Gaussian process whose structure adapts to the current dynamics of the measured system. The GP regression is a kernel method which requires storing the past measurements. The kernel-based on-line system identification is implementable only with a constraint on the amount of data stored. The on-line identification method combines together the forgetting factor for discounting old data and the moving window which neglects the highly discounted data. As a consequence, the online-identification problem may be ill-posed due to the discounted data. A regularisation approach is introduced for the estimation of the tuning parameters in order to avoid the ill-posed identification problem. The performance of the online identification method is demonstrated with an illustrative example.
正则化演化高斯过程在线辨识
研究了用正则化非参数回归方法在线辨识非线性动力系统的问题。模型结构是基于高斯过程的非线性有限脉冲响应(NFIR)。对GP模型的整定参数进行在线估计,得到一个结构与被测系统当前动态相适应的演化高斯过程。GP回归是一种需要存储过去测量值的核方法。基于内核的在线系统识别只有在存储数据量受限的情况下才能实现。在线识别方法将对旧数据进行折现的遗忘因子与忽略高折现数据的移动窗口相结合。因此,由于数据打折,在线识别问题可能是病态的。引入了一种正则化方法来估计调谐参数,以避免不适定辨识问题。通过实例验证了该方法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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