Department of Telecommunications, University Politehnica of Bucharest, 1-3, Iuliu Maniu Blvd., 061071 Bucharest, Romania.
INRS-EMT, University of Quebec, Montreal, QC H5A 1K6, Canada.
Sensors (Basel). 2021 May 20;21(10):3555. doi: 10.3390/s21103555.
The Kalman filter represents a very popular signal processing tool, with a wide range of applications within many fields. Following a Bayesian framework, the Kalman filter recursively provides an optimal estimate of a set of unknown variables based on a set of noisy observations. Therefore, it fits system identification problems very well. Nevertheless, such scenarios become more challenging (in terms of the convergence and accuracy of the solution) when the parameter space becomes larger. In this context, the identification of linearly separable systems can be efficiently addressed by exploiting tensor-based decomposition techniques. Such multilinear forms can be modeled as rank-1 tensors, while the final solution is obtained by solving and combining low-dimension system identification problems related to the individual components of the tensor. Recently, the identification of multilinear forms was addressed based on the Wiener filter and most well-known adaptive algorithms. In this work, we propose a tensorial Kalman filter tailored to the identification of multilinear forms. Furthermore, we also show the connection between the proposed algorithm and other tensor-based adaptive filters. Simulation results support the theoretical findings and show the appealing performance features of the proposed Kalman filter for multilinear forms.
卡尔曼滤波器是一种非常流行的信号处理工具,在许多领域都有广泛的应用。它遵循贝叶斯框架,根据一组噪声观测值递归地提供一组未知变量的最优估计。因此,它非常适合系统辨识问题。然而,当参数空间变大时,这种情况在收敛性和准确性方面变得更加具有挑战性。在这种情况下,可以通过利用基于张量的分解技术有效地解决线性可分系统的辨识问题。这种多线性形式可以建模为秩-1 张量,而最终的解决方案是通过求解和组合与张量各个分量相关的低维系统辨识问题来获得。最近,已经基于维纳滤波器和最著名的自适应算法来解决多线性形式的辨识问题。在这项工作中,我们提出了一种针对多线性形式辨识的张量卡尔曼滤波器。此外,我们还展示了所提出的算法与其他基于张量的自适应滤波器之间的联系。仿真结果支持了理论发现,并展示了所提出的卡尔曼滤波器在多线性形式方面吸引人的性能特点。