A new estimation algorithm for AR signals measured in noise

W. Zheng
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引用次数: 6

Abstract

Albeit several least-squares (LS) based methods have been developed for noisy autoregressive (AR) signal identification, none is "in closed form", in that an iterative procedure is needed for estimating the AR parameters and the measurement noise variance alternately. A new formulation with respect to the measurement noise variance is presented, leading to the development of a new estimation algorithm for noisy AR signals. In addition to the eminent algorithmic difference from its predecessors, the developed algorithm achieves a better estimation accuracy while requiring an almost identical amount of computation.
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一种新的噪声条件下AR信号估计算法
尽管已经开发了几种基于最小二乘(LS)的噪声自回归(AR)信号识别方法,但没有一种方法是“封闭形式”的,因为需要迭代过程来交替估计AR参数和测量噪声方差。提出了一种关于测量噪声方差的新公式,从而开发了一种新的噪声AR信号估计算法。除了与之前的算法显著不同之外,所开发的算法在需要几乎相同的计算量的情况下实现了更好的估计精度。
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