Leveraging Multi-Task Learning for Multi-Label Power System Security Assessment

Abstract
This paper introduces a novel approach to the power system security assessment using Multi-Task Learning (MTL), and reformulating the problem as a multi-label classification task. The proposed MTL framework simultaneously assesses static, voltage, transient, and small-signal stability, improving both accuracy and interpretability with respect to the most state of the art machine learning methods. It consists of a shared encoder and multiple decoders, enabling knowledge transfer between stability tasks. Experiments on the IEEE 68-bus system demonstrate a measurable superior performance of the proposed method compared to the extant state-of-the-art approaches.
View on arXiv@article{za'ter2025_2505.06207, title={ Leveraging Multi-Task Learning for Multi-Label Power System Security Assessment }, author={ Muhy Eddin Za'ter and Amir Sajad and Bri-Mathias Hodge }, journal={arXiv preprint arXiv:2505.06207}, year={ 2025 } }
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