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Accuracy analysis of time domain maximum likelihood method and sample maximum likelihood method for errors-in-variables and output error identification

机译:变量误差和输出误差识别的时域最大似然法和样本最大似然法的精度分析

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摘要

For identifying errors-in-variables models, the time domain maximum likelihood (TML) method and the sample maximum likelihood (SML) method are two approaches. Both methods give optimal estimation accuracy but under different assumptions. In the TML method, an important assumption is that the noise-free input signal is modelled as a stationary process with rational spectrum. For SML, the noise-free input needs to be periodic. It is interesting to know which of these assumptions contain more information to boost the estimation performance. In this paper, the estimation accuracy of the two methods is analyzed statistically for both errors-in-variables (EIV) and output error models (OEM). Numerical comparisons between these two estimates are also done under different signal-to-noise ratios (SNRs). The results suggest that TML and SML have similar estimation accuracy at moderate or high SNR for EIV. For OEM identification, these two methods have the same accuracy at any SNR.
机译:为了识别变量误差模型,时域最大似然(TML)方法和样本最大似然(SML)方法是两种方法。两种方法均提供了最佳的估计精度,但假设不同。在TML方法中,一个重要的假设是将无噪声输入信号建模为具有合理频谱的平稳过程。对于SML,无噪声输入需要是周期性的。有趣的是,这些假设中的哪些包含更多信息以提高估计性能。在本文中,对变量误差(EIV)和输出误差模型(OEM)两种方法的估计准确性进行了统计分析。在不同的信噪比(SNR)下,这两个估计之间的数值比较也可以完成。结果表明,对于EIV,TML和SML在中等或高SNR时具有相似的估计精度。对于OEM识别,这两种方法在任何SNR下都具有相同的精度。

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