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Frequency-domain identification of continuous-time ARMA models from sampled data

机译:从采样数据中连续时间ARMA模型的频域识别

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The subject of this paper is the direct identification of continuous-time autoregressive moving average (CARMA) models. The topic is viewed from the frequency domain perspective which then turns the reconstruction of the continuous-time power spectral density (CT-PSD) into a key issue. The first part of the paper therefore concerns the approximate estimation of the CT-PSD from uniformly sampled data under the assumption that the model has a certain relative degree. The approach has its point of origin in the frequency domain Whittle likelihood estimator. The discrete- or continuous-time spectral densities are estimated from equidistant samples of the output. For low sampling rates the discrete-time spectral density is modeled directly by its continuous-time spectral density using the Poisson summation formula. In the case of rapid sampling the continuous-time spectral density is estimated directly by modifying its discrete-time counterpart.
机译:本文的主题是连续时间自回归移动平均(CARMA)模型的直接识别。从频域的角度来看这个主题,然后将连续时间功率谱密度(CT-PSD)的重建变成一个关键问题。因此,本文的第一部分涉及在模型具有一定相对程度的假设下,根据均匀采样的数据对CT-PSD的近似估计。该方法的起点在频域Whittle似然估计器中。离散或连续时间频谱密度是根据输出的等距样本估算的。对于低采样率,离散时间谱密度直接使用泊松求和公式通过其连续时间谱密度建模。在快速采样的情况下,可以通过修改其离散时间对应项直接估算连续时间谱密度。

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