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On Robustness of Kernel-Based Regularized System Identification

机译:基于内核的正规系统识别的鲁棒性

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This paper presents a novel feature of the kernel-based system identification method. We prove that the regularized kernel-based approach for the estimation of a finite impulse response is equivalent to a robust least-squares problem with a particular uncertainty set defined in terms of the kernel matrix, and thus, it is called kernel-based uncertainty set. We provide a theoretical foundation for the robustness of the kernel-based approach to input disturbances. Based on robust and regularized least-squares methods, different formulations of system identification are considered, where the kernel-based uncertainty set is employed in some of them. We apply these methods to a case where the input measurements are subject to disturbances. Subsequently, we perform extensive numerical experiments and compare the results to examine the impact of utilizing kernel-based uncertainty sets in the identification procedure. The numerical experiments confirm that the robust least square identification approach with the kernel-based uncertainty set improves the robustness of the estimation to the input disturbances.
机译:本文介绍了基于内核的系统识别方法的新颖特征。我们证明,估计有限脉冲响应的正常内核的方法等同于具有在内核矩阵方面定义的特定不确定性集的鲁棒最小二乘问题,因此,它被称为基于内核的不确定性集。我们为基于内核的方法的鲁棒性提供了一种理论基础,对输入干扰的鲁棒性。基于鲁棒和正规的最小二乘法,考虑了不同的系统识别制剂,其中基于内核的不确定性集合在其中一些。我们将这些方法应用于输入测量受扰动的情况。随后,我们进行广泛的数值实验,并比较结果来检查利用基于内核的不确定性集的影响。数值实验证实,基于内核的不确定性集的鲁棒最小二乘识别方法提高了对输入干扰的估计的鲁棒性。

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