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Synchrophasor Data Compression Under Disturbance Conditions via Cross-Entropy-Based Singular Value Decomposition

Weikang Wang, Chang Chen, Wenxuan Yao, Kaiqi Sun, Wei Qiu, Yilu Liu

2020IEEE Transactions on Industrial Informatics33 citationsDOIOpen Access PDF

Abstract

The increasing deployment of phasor measurement units and the advances of their reporting rates are challenging the present data centers in terms of storing and analyzing large-volume data. Under power system disturbance conditions, it is difficult to retain critical information while compressing the synchrophasor data effectively. This article combines the cross entropy and the singular value decomposition, proposing a novel model to compress the synchrophasor data to an extremely small size yet keep superior accuracy. The proposed model is extensively tested and compared with the state-of-the-art algorithms using the simulated and the FNET/GridEye field-collected data. The result indicates that the proposed algorithm has superior performance in compressing the data while retaining critical information under disturbance conditions.

Topics & Concepts

Singular value decompositionPhasorComputer scienceEntropy (arrow of time)Electric power systemData miningData compressionDisturbance (geology)Software deploymentAlgorithmPower (physics)Quantum mechanicsOperating systemBiologyPhysicsPaleontologyPower System Optimization and StabilityComputational Physics and Python ApplicationsSmart Grid and Power Systems
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