A correlation domain algorithm for autoregressive system identification from noisy observations

S. Fattah, W. Zhu, M. Ahmad
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引用次数: 1

Abstract

This paper presents an identification technique for minimum-phase autoregressive (AR) systems using noise-corrupted observations. In order to reduce the effect of noise in the correlation domain, instead of using the conventional autocorrelation function (ACF), a once-repeated ACF (ORACF) of noisy observations has been employed. Based on characteristics of the ORACF under a noisy condition, a set of equations has been developed. The AR parameters are estimated by solving these equations in the form of a quadratic eigenvalue problem. Computer simulations are carried out for AR systems of different orders under noisy environments showing a superior identification performance in terms of estimation accuracy and consistency.
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基于噪声观测的自回归系统辨识的相关域算法
本文提出了一种基于噪声破坏观测值的最小相位自回归(AR)系统辨识技术。为了降低相关域内噪声的影响,采用一次重复的自相关函数(ORACF)代替传统的自相关函数(ACF)。根据噪声条件下ORACF的特性,建立了一组方程。以二次特征值问题的形式求解这些方程来估计AR参数。对不同阶次的AR系统在噪声环境下进行了计算机仿真,结果表明,在估计精度和一致性方面具有较好的识别性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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