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首页> 外文期刊>IEEE Transactions on Signal Processing >Fast adaptive algorithms for AR parameters estimation using higher order statistics
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Fast adaptive algorithms for AR parameters estimation using higher order statistics

机译:使用高阶统计量的AR参数估计的快速自适应算法

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Time-varying statistics in linear filtering and linear estimation problems necessitate the use of adaptive or time-varying filters in the solution. With the rapid availability of vast and inexpensive computation power, models which are non-Gaussian even nonstationary are being investigated at increasing intensity. Statistical tools used in such investigations usually involve higher order statistics (HOS). The classical instrumental variable (IV) principle has been widely used to develop adaptive algorithms for the estimation of ARMA processes. Despite, the great number of IV methods developed in the literature, the cumulant-based procedures for pure autoregressive (AR) processes are almost nonexistent, except lattice versions of IV algorithms. This paper deals with the derivation and the properties of fast transversal algorithms. Hence, by establishing a relationship between classical (IV) methods and cumulant-based AR estimation problems, new fast adaptive algorithms, (fast transversal recursive instrumental variable-FTRIV) and (generalized least mean squares-GLMS), are proposed for the estimation of AR processes. The algorithms are seen to have better performance in terms of convergence speed and misadjustment even in low SNR. The extra computational complexity is negligible. The performance of the algorithms, as well as some illustrative tracking comparisons with the existing adaptive ones in the literature, are verified via simulations. The conditions of convergence are investigated for the GLMS.
机译:线性滤波和线性估计问题中的时变统计需要在解决方案中使用自适应或时变滤波器。随着巨大而廉价的计算能力的迅速可用性,非高斯甚至非平稳的模型正在以越来越高的强度进行研究。在此类调查中使用的统计工具通常涉及高阶统计(HOS)。经典的工具变量(IV)原理已被广泛用于开发用于估计ARMA过程的自适应算法。尽管文献中开发了大量的IV方法,但是除了IV算法的点阵形式之外,几乎不存在用于纯自回归(AR)过程的基于累积量的过程。本文讨论了快速横向算法的推导和性质。因此,通过建立经典(IV)方法和基于累积量的AR估计问题之间的关系,提出了新的快速自适应算法(快速横向递归工具变量-FTRIV)和(广义最小均方-GLMS)来估计AR流程。即使在低SNR下,该算法在收敛速度和误调整方面也具有更好的性能。额外的计算复杂度可以忽略不计。通过仿真验证了算法的性能以及与文献中已有的自适应跟踪算法的一些示例性跟踪比较。研究了GLMS的收敛条件。

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