具有彩色输出噪声的系统的正则化脉冲响应估计

E. Boeira, D. Eckhard
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引用次数: 1

摘要

本文探讨了正则化特征在具有彩色输出噪声的系统脉冲响应估计中的应用。首先,本文证明了这种情况下的最优正则化矩阵与白噪声情况下的最优正则化矩阵截然不同,而且正则化加权最小二乘法与贝叶斯视角下的识别问题之间存在直接关系。此外,还介绍了一种基于贝叶斯视角的新经验贝叶斯方法,用于从数据中估计正则化和噪声协方差矩阵。最后,一个数值示例表明,这种新方法优于传统的正则化最小二乘法,能产生更好的统计特性和更好的模型拟合度量结果。
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Regularized impulse response estimation for systems with colored output noise
This paper addresses the use of the regularization feature on impulse response estimation for systems with colored output noise. Firstly, it is shown that the optimal regularization matrix for this scenario is quite different than the optimal for the white noise case and that there is a direct relationship between the Regularized Weighted Least-Squares with a Bayesian perspective of the identification problem for such case. Also, a new Empirical Bayes method, based on the Bayesian perspective, is introduced to estimate the regularization and noise covariance matrices from data. Finally, a numerical example demonstrates that this new methodology outperforms the traditional Regularized Least-Squares, producing better statistical properties and better results for a model fit measure.
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