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Dual optimal filters for parameter estimation of a multivariate autoregressive process from noisy observations

机译:从噪声观测值估计多元自回归过程参数的双重最优滤波器

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摘要

This study deals with the estimation of a vector process disturbed by an additive white noise. When this process is modelled by a multivariate autoregressive (M-AR) process, optimal filters such as Kalman or HȡE; filter can be used for prediction or estimation from noisy observations. However, the estimation of the M-AR parameters from noisy observations is a key issue to be addressed. Off-line or iterative approaches have been proposed recently, but their computational costs can be a drawback. Using on-line methods such as extended Kalman filter and sigma-point Kalman filter are of interest, but the size of the state vector to be estimated is quite high. In order to reduce this size and the resulting computational cost, the authors suggest using dual optimal filters. In this study, the authors propose to extend to the multi-channel case the so-called dual Kalman or HȡE; filters-based scheme initially proposed for single-channel applications. The proposed methods are first tested with a synthetic M-AR process and then with an M-AR process corresponding to a mobile fading channel. The comparative simulation study the authors carried out with existing techniques confirms the effectiveness of the proposed methods.
机译:这项研究涉及向量过程的估计,该过程受加性白噪声干扰。当通过多元自回归(M-AR)过程对该过程进行建模时,可以使用最佳滤波器(例如Kalman或H E; 滤波器)从嘈杂的观测结果进行预测或估算。但是,从嘈杂的观测值中估计M-AR参数是一个需要解决的关键问题。最近已经提出了离线或迭代方法,但是它们的计算成本可能是一个缺点。使用诸如扩展卡尔曼滤波器和西格玛点卡尔曼滤波器之类的在线方法很受关注,但是要估计的状态向量的大小相当大。为了减小该大小和由此产生的计算成本,作者建议使用双重最优滤波器。在这项研究中,作者提议将最初针对单通道应用提出的所谓的双卡尔曼或H ȡE; 基于滤波器的方案扩展到多通道情况。首先使用合成的M-AR过程测试提出的方法,然后使用对应于移动衰落信道的M-AR过程进行测试。作者利用现有技术进行的比较仿真研究证实了所提出方法的有效性。

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