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Frequency domain identification of autoregressive models in the presence of additive noise

机译:存在加性噪声时自回归模型的频域识别

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摘要

This paper describes a new approach for identifying autoregressive models from a finite number of measurements, in presence of additive and uncorrelated white noise. As a major novelty, the proposed approach deals with frequency domain data. In particular, two different frequency domain algorithms are proposed. The first algorithm is based on some theoretical results concerning the so-called dynamic Frisch Scheme. The second algorithm maps the AR identification problem into a quadratic eigenvalue problem. Both methods resemble in many aspects some other identification algorithms, originally developed in the time domain. The features of the proposed methods are compared each other and with those of other time domain algorithms by means of Monte Carlo simulations.
机译:本文介绍了一种在存在加性和不相关白噪声的情况下从有限数量的测量中识别自回归模型的新方法。作为一个主要的新颖性,提出的方法处理频域数据。特别地,提出了两种不同的频域算法。第一种算法基于与所谓的动态弗里施方案有关的一些理论结果。第二种算法将AR识别问题映射为二次特征值问题。两种方法在很多方面都与最初在时域中开发的某些其他识别算法相似。所提出的方法的特征相互比较,并通过蒙特卡洛模拟与其他时域算法进行比较。

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