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Power-grid stability predictions using transferable machine learning

Title
Power-grid stability predictions using transferable machine learning
Author
손승우
Keywords
classification
Issue Date
2021-12
Publisher
AMER INST PHYSICS
Citation
CHAOS, v. 31, NO 12, Page. 123127-123127
Abstract
Complex network analyses have provided clues to improve power-grid stability with the help of numerical models. The high computational cost of numerical simulations, however, has inhibited the approach, especially when it deals with the dynamic properties of power grids such as frequency synchronization. In this study, we investigate machine learning techniques to estimate the stability of power-grid synchronization. We test three different machine learning algorithms-random forest, support vector machine, and artificial neural network-training them with two different types of synthetic power grids consisting of homogeneous and heterogeneous input-power distribution, respectively. We find that the three machine learning models better predict the synchronization stability of power-grid nodes when they are trained with the heterogeneous input-power distribution rather than the homogeneous one. With the real-world power grids of Great Britain, Spain, France, and Germany, we also demonstrate that the machine learning algorithms trained on synthetic power grids are transferable to the stability prediction of the real-world power grids, which implies the prospective applicability of machine learning techniques on power-grid studies.
URI
https://aip.scitation.org/doi/10.1063/5.0058001https://repository.hanyang.ac.kr/handle/20.500.11754/169551
ISSN
10541500; 10897682
DOI
10.1063/5.0058001
Appears in Collections:
COLLEGE OF SCIENCE AND CONVERGENCE TECHNOLOGY[E](과학기술융합대학) > APPLIED PHYSICS(응용물리학과) > Articles
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