DocumentCode
2197869
Title
A Low-Rank Matrix Approach for the Analysis of Large Amounts of Power System Synchrophasor Data
Author
Meng Wang ; Chow, Joe H. ; Pengzhi Gao ; Jiang, Xinyu Tony ; Yu Xia ; Ghiocel, Scott G. ; Fardanesh, Bruce ; Stefopolous, George ; Kokai, Yutaka ; Saito, Nao ; Razanousky, Micahel
fYear
2015
fDate
5-8 Jan. 2015
Firstpage
2637
Lastpage
2644
Abstract
With the installation of many new multi-channel phasor measurement units (PMUs), utilities and power grid operators are collecting an unprecedented amount of high-sampling rate bus frequency, bus voltage phasor, and line current phasor data with accurate time stamps. The data owners are interested in efficient algorithms to process and extract as much information as possible from such data for real-time and off-line analysis. Traditional data analysis typically analyze one channel of PMU data at a time, and then combine the results from the individual analysis to arrive at some conclusions. In this paper, a spatial-temporal framework for efficient processing of blocks of PMU data is proposed. A key property of these PMU data matrices is that they are low rank. Using this property, various data management issues such as data compression, missing data recovery, data substitution detection, and disturbance triggering and location can be processing using singular-value based algorithms and convex programming. These functions are illustrated using some historical data from the Central New York power system.
Keywords
convex programming; data handling; phasor measurement; power engineering computing; singular value decomposition; Central New York power system; PMU; PMU data matrix; bus voltage phasor; convex programming; data amount; data compression; data management; data substitution detection; disturbance location; disturbance triggering; high-sampling rate bus frequency; information extraction; information processing; line current phasor data; low-rank matrix approach; missing data recovery; multichannel phasor measurement unit; power system synchrophasor data; singular-value based algorithm; spatial-temporal framework; time stamp; Current measurement; Data compression; Phasor measurement units; Power system dynamics; Time-frequency analysis; Voltage measurement; Power system dynamics; data completion algorithms; low-rank matrix; phasor measurement unit; singular values; synchrophasor;
fLanguage
English
Publisher
ieee
Conference_Titel
System Sciences (HICSS), 2015 48th Hawaii International Conference on
Conference_Location
Kauai, HI
ISSN
1530-1605
Type
conf
DOI
10.1109/HICSS.2015.318
Filename
7070133
Link To Document