Energies (Jan 2023)

Data-Driven Dynamic Stability Assessment in Large-Scale Power Grid Based on Deep Transfer Learning

  • Weijia Wen,
  • Xiao Ling,
  • Jianxin Sui,
  • Junjie Lin

DOI
https://doi.org/10.3390/en16031142
Journal volume & issue
Vol. 16, no. 3
p. 1142

Abstract

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For data-driven dynamic stability assessment (DSA) in modern power grids, DSA models generally have to be learned from scratch when faced with new grids, resulting in high offline computational costs. To tackle this undesirable yet often overlooked problem, this work develops a light-weight framework for DSA-oriented stability knowledge transfer from off-the-shelf test systems to practical power grids. A scale-free system feature learner is proposed to characterize system-wide features of various systems in a unified manner. Given a real-world power grid for DSA, selective stability knowledge transfer is intelligently carried out by comparing system similarities between it and the available test systems. Afterward, DSA model fine-tuning is performed to make the transferred knowledge adapt well to practical DSA contexts. Numerical test results on a realistic system, i.e., the provincial GD Power Grid in China, verify the effectiveness of the proposed framework.

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