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Fast greedy optimization of sensor selection in measurement with correlated noise

机译:相关噪声测量中的传感器选择快速贪婪优化

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摘要

A greedy algorithm is proposed for sparse-sensor selection in reduced-order sensing that contains correlated noise in measurement. The sensor selection is carried out by maximizing the determinant of the Fisher information matrix in a Bayesian estimation operator. The Bayesian estimation with a covariance matrix of the measurement noise and a prior probability distribution of estimating parameters, which are given by the modal decomposition of high dimensional data, robustly works even in the presence of the correlated noise. After computational efficiency of the algorithm is improved by a low-rank approximation of the noise covariance matrix, the proposed algorithms are applied to various problems. The proposed method yields more accurate reconstruction than the previously presented method with the determinant-based greedy algorithm, with reasonable increase in computational time.
机译:提出了一种贪婪的算法,用于在减少阶的感测中稀疏传感器选择,其包含测量中的相关噪声。 传感器选择是通过在贝叶斯估计运算符中最大化Fisher信息矩阵的确定性来执行。 通过测量噪声的协方差矩阵和估计参数的现有概率分布的贝叶斯估计,由高维数据的模态分解给出,即使在存在相关噪声的情况下也可以鲁棒地工作。 在通过噪声协方差矩阵的低秩近似提高算法的计算效率之后,所提出的算法应用于各种问题。 该方法的重建比先前呈现的方法更精确地重建,具有基于决定因素的贪婪算法,可以合理地增加计算时间。

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