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Voltage Stability for Power Systems deploying Physics-Grounded ML: Fast Risk Mapping with MATPOWER for Sustainable Future in Smart Grids

Wattegama Rajitha et al · EDP Sciences · 2026

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Voltage stability in modern smart grids faces increasing challenges due to the widespread use of renewable energy and diminished reactive-power margins. While power flow analysis remains the most precise method, it is often too slow and resource-intensive for exploring extensive operating spaces. This paper introduces a physics-based machine learning approach that combines MATPOWER simulations with an ensemble classifier to efficiently generate clear and interpretable instability risk maps for the IEEE-14 system. By varying load levels, renewable penetration (represented as negative PQ-bus injections), and specific network stress factors, operating scenarios are created; a scenario is deemed unstable if power flow fails to converge or if the lowest bus voltage falls below 0.94 p.u. Trained on a balanced dataset with approximately 40% unstable cases, the model achieved ROC-AUC = 0.973 and PR-AUC = 0.715 through five-fold cross-validation, with well- calibrated probabilities. Feature analysis identified load level and renewable penetration as primary causes of instability. The model delivers results thousands of times faster than traditional methods while maintaining high accuracy, enabling practical screening, enhanced risk understanding, and targeted use of CPF for final margin assessment.

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APA 7

al, W. R. E. (2026). Voltage Stability for Power Systems deploying Physics-Grounded ML: Fast Risk Mapping with MATPOWER for Sustainable Future in Smart Grids. https://doi.org/10.1051/epjconf/202636703012

MLA

al, Wattegama Rajitha et. "Voltage Stability for Power Systems deploying Physics-Grounded ML: Fast Risk Mapping with MATPOWER for Sustainable Future in Smart Grids." 2026. https://doi.org/10.1051/epjconf/202636703012.

Chicago

al, Wattegama Rajitha et. 2026. "Voltage Stability for Power Systems deploying Physics-Grounded ML: Fast Risk Mapping with MATPOWER for Sustainable Future in Smart Grids.". https://doi.org/10.1051/epjconf/202636703012.

Harvard

al, W. R. E. 2026, Voltage Stability for Power Systems deploying Physics-Grounded ML: Fast Risk Mapping with MATPOWER for Sustainable Future in Smart Grids, EDP Sciences, available at: https://doi.org/10.1051/epjconf/202636703012 [Accessed 29 Jun. 2026].

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Título
Voltage Stability for Power Systems deploying Physics-Grounded ML: Fast Risk Mapping with MATPOWER for Sustainable Future in Smart Grids
Autor / colaboradores
Wattegama Rajitha et al
Editorial
EDP Sciences
Año de publicación
2026
ISSN
2100-014X
ISSN
2100-014X
Idioma
eng
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