Distribution-Aware Graph Representation Learning for Transient Stability
Assessment of Power System
- URL: http://arxiv.org/abs/2205.06576v1
- Date: Thu, 12 May 2022 12:38:54 GMT
- Title: Distribution-Aware Graph Representation Learning for Transient Stability
Assessment of Power System
- Authors: Kaixuan Chen, Shunyu Liu, Na Yu, Rong Yan, Quan Zhang, Jie Song,
Zunlei Feng, Mingli Song
- Abstract summary: A real-time transient stability assessment plays a critical role in the secure operation of the power system.
A data-driven power system estimation method is proposed to quickly predict the stability of the power system.
- Score: 36.67852108729622
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The real-time transient stability assessment (TSA) plays a critical role in
the secure operation of the power system. Although the classic numerical
integration method, \textit{i.e.} time-domain simulation (TDS), has been widely
used in industry practice, it is inevitably trapped in a high computational
complexity due to the high latitude sophistication of the power system. In this
work, a data-driven power system estimation method is proposed to quickly
predict the stability of the power system before TDS reaches the end of
simulating time windows, which can reduce the average simulation time of
stability assessment without loss of accuracy. As the topology of the power
system is in the form of graph structure, graph neural network based
representation learning is naturally suitable for learning the status of the
power system. Motivated by observing the distribution information of crucial
active power and reactive power on the power system's bus nodes, we thus
propose a distribution-aware learning~(DAL) module to explore an informative
graph representation vector for describing the status of a power system. Then,
TSA is re-defined as a binary classification task, and the stability of the
system is determined directly from the resulting graph representation without
numerical integration. Finally, we apply our method to the online TSA task. The
case studies on the IEEE 39-bus system and Polish 2383-bus system demonstrate
the effectiveness of our proposed method.
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