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Frequency domain identification of ARX models in the presence of additive input-output noise

机译:添加剂输入输出噪声存在下ARX模型的频域识别

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This paper describes a new approach for identifying ARX models from a finite number of measurements, in presence of additive and uncorrelated white noise. The proposed algorithm is based on some theoretical results concerning the so-called dynamic Frisch Scheme. As a major novelty, the proposed approach deals with frequency domain data. In some aspects, the method resembles the characteristics of other identification algorithms, originally developed in the time domain. The proposed method is compared with other techniques by means of Monte Carlo simulations. The benefits of filtering the data and using only part of the frequency domain is highlighted by means of a numerical example.
机译:本文介绍了一种新方法,用于在有限数量的测量中识别ARX模型,在附加的白色噪声存在下存在。所提出的算法基于关于所谓的动态FRISCH方案的一些理论结果。作为一个主要的新颖性,所提出的方法涉及频域数据。在一些方面,该方法类似于在时域中最初开发的其他识别算法的特征。通过蒙特卡罗模拟将所提出的方法与其他技术进行比较。通过数值示例突出显示过滤数据和使用部分频域的频率的好处。

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