LGSYAug 7, 2023

PMU measurements based short-term voltage stability assessment of power systems via deep transfer learning

arXiv:2308.03953v260 citationsh-index: 68
Originality Incremental advance
AI Analysis

This addresses voltage stability issues for power grid operators, offering an incremental improvement over existing deep learning approaches.

The paper tackled short-term voltage stability assessment in power systems by proposing a deep transfer learning method using PMU measurements, which improved model accuracy by about 20% and enhanced adaptability to topological changes.

Deep learning has emerged as an effective solution for addressing the challenges of short-term voltage stability assessment (STVSA) in power systems. However, existing deep learning-based STVSA approaches face limitations in adapting to topological changes, sample labeling, and handling small datasets. To overcome these challenges, this paper proposes a novel phasor measurement unit (PMU) measurements-based STVSA method by using deep transfer learning. The method leverages the real-time dynamic information captured by PMUs to create an initial dataset. It employs temporal ensembling for sample labeling and utilizes least squares generative adversarial networks (LSGAN) for data augmentation, enabling effective deep learning on small-scale datasets. Additionally, the method enhances adaptability to topological changes by exploring connections between different faults. Experimental results on the IEEE 39-bus test system demonstrate that the proposed method improves model evaluation accuracy by approximately 20% through transfer learning, exhibiting strong adaptability to topological changes. Leveraging the self-attention mechanism of the Transformer model, this approach offers significant advantages over shallow learning methods and other deep learning-based approaches.

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