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Ambient Data-Driven Participation Factors Related to Oscillation Modes Based on Subspace Dynamic Mode Decomposition

Guowei Cai,Shuyu Zhou, Cheng Liu, Chao Jiang,Zhichong Cao

Electric power systems research(2024)

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摘要
Analyzing the connection between the variables participating in the oscillation and modes in electromechanical oscillation is particularly important for maintaining system stability. This paper proposes an ambient data-driven method based on Subspace Dynamic Mode Decomposition (Sub-DMD) to extract the Participation Factors (PFs) related to system state and algebraic variables in electromechanical oscillation modes. This method uses ambient data to calculate the low-dimensional approximate matrix of the system, and the PFs is extracted by using eigen-decomposition and mode energy. Compare the extracted PFs with the results of power generation dispatch. The effectiveness of the proposed method is demonstrated by using simulation data from IEEE 4-generator 2-area test system and IEEE 16-generator 68-bus test system.
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关键词
Ambient data,Electromechanical oscillation mode,Subspace dynamic mode decomposition (sub-dmd),Participation factors (pfs),power generation dispatch
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