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首页> 外文期刊>IEEE Transactions on Ultrasonics, Ferroelectrics, and Frequency Control >A Bayesian method for long AR spectral estimation: a comparative study
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A Bayesian method for long AR spectral estimation: a comparative study

机译:长时间AR光谱估计的贝叶斯方法:对比研究

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摘要

We address the problem of smooth power spectral density estimation of zero-mean stationary Gaussian processes when only a short observation set is available for analysis. The spectra are described by a long autoregressive model whose coefficients are estimated in a Bayesian regularized least squares (RLS) framework accounting the spectral smoothness prior. The critical computation of the tradeoff parameters is addressed using both maximum likelihood (ML) and generalized cross-validation (GCV) criteria in order to automatically tune the spectral smoothness. The practical interest of the method is demonstrated by a computed simulation study in the field of Doppler spectral analysis. In a Monte Carlo simulation study with a known spectral shape, investigation of quantitative indexes such as bias and variance, but also quadratic, logarithmic, and Kullback distances shows interesting improvements with respect to the usual least squares method, whatever the window data length and the signal-to-noise ratio (SNR).
机译:当只有短的观测集可用于分析时,我们解决了零均值平稳高斯过程的平稳功率谱密度估计问题。光谱由一个长的自回归模型描述,该模型的贝叶斯正则最小二乘(RLS)框架在考虑光谱平滑度的前提下估算了系数。权衡参数的关键计算使用最大似然(ML)和广义交叉验证(GCV)标准来解决,以便自动调整频谱平滑度。通过在多普勒频谱分析领域的计算机模拟研究,证明了该方法的实际意义。在具有已知光谱形状的蒙特卡洛模拟研究中,对定量指标(例如偏差和方差)以及二次,对数和库尔巴克距离的研究表明,无论窗口数据长度和长度如何,相对于通常的最小二乘法,该方法都有有趣的改进。信噪比(SNR)。

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