Comparative review of reactive power estimation techniques for voltage restoration
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With the focus on the growing concern of voltage instability and its inherent risks connected
to blackouts, this study addresses the importance of Volt/VAR control (VVC) in maintaining
voltage stability, optimizing power factor, and reducing losses. As such, this scientific article
presents a review of the methodologies used to estimate the quantity of reactive power
required to restore voltage in power grids. Although reviews exist on classical methods,
optimization, and machine learning, a study unifying these approaches is lacking. This gap
hinders an integrated comparison of methodologies and constitutes the main motivation
for this study in 2025. This absence of a consolidated and up-to-date review limits both
academic progress and practical decision-making in modern power systems, especially
as DER penetration accelerates. This research was conducted using the Scopus database
through the selection of articles that address reactive power estimation methods. The
results indicate that traditional numerical and optimization methods, although accurate,
demonstrate high computational costs for real-time application. In contrast, techniques
such as Deep Reinforcement Learning (DRL) and hybrid models show greater potential
for dealing with uncertainties and dynamic topologies. The conclusion reached is that
the solution for reactive power management lies in hybrid approaches, which combine
machine learning with numerical methods, supported by an intelligent and robust data
infrastructure. The comparative analysis shows that numerical methods offer high precision
but are computationally expensive for real-time use; optimization techniques provide good
robustness but depend on detailed models that are sensitive to system conditions; and
machine learning-based approaches offer greater adaptability under uncertainty, although
they require large datasets and careful training. Given these complementary limitations,
hybrid approaches emerge as the most promising alternative, combining the reliability of
classical methods with the flexibility of intelligent models, especially in smart grids with
dynamic topologies and high penetration of Distributed Energy Resources (DERs).
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FALEIRO, Natanael et al. Comparative review of reactive power estimation techniques for voltage restoration. Energies, Basel, v. 19, e826, 2026. DOI: 10.3390/en19030826. Disponível em: https://www.mdpi.com/1996-1073/19/3/826. Acesso em: 3 jun. 2026.