Higher-order motif-based time series classification for forced oscillation source location in power grids
Abstract
Time series motifs are used for discovering higher-order structures of time series data. Based on time series motifs, the motif embedding correlation field (MECF) is proposed to characterize higher-order temporal structures of dynamical system time series. A MECF-based unsupervised learning approach is applied in locating the source of the forced oscillation (FO), a periodic disturbance that detrimentally impacts power grids. Locating the FO source is imperative for system stability. Compared with the Fourier analysis, the MECF-based unsupervised learning is applicable under various FO situations, including the single FO, FO with resonance, and multiple concurrent FOs. The MECF-based unsupervised learning is a data-driven approach without any prior knowledge requirement of system models or typologies. Tests on the UK high-voltage transmission grid are conducted to validate the effectiveness of MECF-based unsupervised learning. In addition, the impacts of coupling strength and measurement noise on locating the FO source by the MECF-based unsupervised learning are investigated. Simulation results show that within typical ranges of coupling strength and measurement noise standard deviation of power systems, the MECF-based unsupervised learning is completely correct in locating the single FO, FO with resonance, and multiple concurrent FOs.
- Publication:
-
Nonlinear Dynamics
- Pub Date:
- November 2023
- DOI:
- arXiv:
- arXiv:2306.13397
- Bibcode:
- 2023NonDy.11120127H
- Keywords:
-
- Time series analysis;
- Higher-order motif;
- Forced oscillation;
- Power grids;
- Computer Science - Machine Learning;
- Statistics - Methodology