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A new kernel-based approach for identification of time-varying linear systems

机译:一种新的基于核的时变线性系统识别方法

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Recently, a new kernel-based approach for identification of time-invariant linear systems has been proposed. Working under a Bayesian framework, the impulse response is modeled as a zero-mean Gaussian vector, with covariance given by the so called stable spline kernel. Such a prior model encodes smoothness and exponential stability information, and depends just on two unknown parameters that can be determined from data via marginal likelihood optimization. It has been shown that this new regularized estimator may outperform classical system identification approaches, such as prediction error methods. This paper extends the stable spline estimator to identification of time-varying linear systems. For this purpose, we include an additional hyperparameter in the model noise, showing that it plays the role of a forgetting factor and can be estimated via marginal likelihood optimization. Numerical experiments show that the new proposed algorithm is able to well track time-varying systems, in particular effectively detecting abrupt changes in the process dynamics.
机译:最近,已经提出了一种用于识别时间不变线性系统的新的基于内核的方法。在贝叶斯框架下工作,脉冲响应被建模为零均值高斯向量,由所谓的稳定样条内核给出的协方差。这样的先前模型对平滑度和指数稳定性信息进行编码,并且恰好依赖于可以通过边缘似然优化从数据确定的两个未知参数。已经表明,这种新的正则化估计器可以优于经典的系统识别方法,例如预测误差方法。本文扩展了稳定的样条估计器,以识别时变线性系统。为此目的,我们在模型噪声中包含一个额外的封面计,显示它扮演遗忘因子的作用,并且可以通过边缘似然优化估计。数值实验表明,新的算法能够良好地跟踪时变系统,特别是有效地检测过程动态的突然变化。

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