2021
DOI: 10.1109/tbdata.2019.2920350
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A New Approach of Exploiting Self-Adjoint Matrix Polynomials of Large Random Matrices for Anomaly Detection and Fault Location

Abstract: Synchronized measurements of a large power grid enable an unprecedented opportunity to study the spatialtemporal correlations. Statistical analytics for those massive datasets start with high-dimensional data matrices. Uncertainty is ubiquitous in a future's power grid. These data matrices are recognized as random matrices. This new point of view is fundamental in our theoretical analysis since true covariance matrices cannot be estimated accurately in a high-dimensional regime. As an alternative, we consider … Show more

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Cited by 22 publications
(5 citation statements)
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References 29 publications
(69 reference statements)
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“…In statistical analysis of high-dimensional data, when the amount of data is large enough, the data as a whole will show certain random statistical characteristics after corresponding processing, such as the single ring theorem and the M-P law (Ling et al, 2018;Jain et al, 2019;Deepa et al, 2020;Xiong et al, 2020;Yang et al, 2020b;Li et al, 2021b;Li et al, 2021c;Yang et al, 2021c;Li et al, 2021d;Ye et al, 2021;Dong and Li, 2021;Liu et al, 2021;Mousavizadeh et al, 2021;Ouyang and Xu, 2021;Zhu et al, 2021). In the statistical analysis of highdimensional power data, the corresponding linear eigenvalue statistics (LES) are constructed, such as MSR, high-order moment, etc., which can effectively represent the state of the distribution network.…”
Section: Distribution Network State Estimation Methods Based On Fpt Data Pre-processingmentioning
confidence: 99%
“…In statistical analysis of high-dimensional data, when the amount of data is large enough, the data as a whole will show certain random statistical characteristics after corresponding processing, such as the single ring theorem and the M-P law (Ling et al, 2018;Jain et al, 2019;Deepa et al, 2020;Xiong et al, 2020;Yang et al, 2020b;Li et al, 2021b;Li et al, 2021c;Yang et al, 2021c;Li et al, 2021d;Ye et al, 2021;Dong and Li, 2021;Liu et al, 2021;Mousavizadeh et al, 2021;Ouyang and Xu, 2021;Zhu et al, 2021). In the statistical analysis of highdimensional power data, the corresponding linear eigenvalue statistics (LES) are constructed, such as MSR, high-order moment, etc., which can effectively represent the state of the distribution network.…”
Section: Distribution Network State Estimation Methods Based On Fpt Data Pre-processingmentioning
confidence: 99%
“…Assume that X � x i,j 􏽮 􏽯 is a p × n random matrix with non-Hermitian features, and it consists of independent random variables, where the mean E(x i,j ) � 0 and the variance δ 2 (x i,j ) � 1. e matrix Z � z i,j 􏽮 􏽯 is obtained by quadrature of L the random matrix X, the matrix Z is subjected to standardization processing to obtain a standard matrix Z � z i,j 􏽮 􏽯, and each element satisfies with the mean E(z i,j ) � 0 and the variance δ 2 (z i,j ) � 1/N. When p, n ⟶ ∞ and the ratio y � p/n ∈ (0, 1], the ESD function of matrix Z satisfies the single ring theorem, and its probability density function is be expressed as follows [16]:…”
Section: Random Matrix Theory and Big Data Processing Methodsmentioning
confidence: 99%
“…There are multiple approaches on the analysis of data coming from PMUs to detect anomalies in some of the measurements, for example: score-based detector arrays [43], hierarchical temporary memory (HTM) capable of unsupervised learning [54], application of big data tools (MapReduce) [45], random matrix theory, and new statistical models using massive data sets in the power grid [44]. In the case of HTM, a limitation is observed in not being able to classify anomalies based on the cause of the anomaly.…”
Section: Electrical Data Anomaliesmentioning
confidence: 99%