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Methods for estimating the autocorrelation and power spectral density functions when there are many missing data values

机译:缺少许多数据值时估算自相关和功率谱密度函数的方法

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A new method for estimating the autocorrelation and the crosscorrelation has been developed. The resulting estimates are usually more accurate than the classical values. The method is particularly useful when there are many missing data values. For the case when there are many missing data values, it is suggested that a power spectral density (PSD) of the autocorrelation function can be developed. The resulting PSD can easily be mapped into the PSD of the original data. Towards this end, Burg's technique has been applied to the autocorrelation and the results of the application are presented.
机译:已经开发了一种用于估计自相关和互相关的新方法。所得的估计值通常比经典值更准确。当缺少许多数据值时,该方法特别有用。对于缺少许多数据值的情况,建议可以开发自相关函数的功率谱密度(PSD)。生成的PSD可以轻松地映射到原始数据的PSD中。为此,将Burg的技术应用于自相关,并给出了应用结果。

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